Original Article

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Journal of Minimally Invasive Surgery 2024; 27(3): 142-155

Published online September 15, 2024

https://doi.org/10.7602/jmis.2024.27.3.142

© The Korean Society of Endo-Laparoscopic & Robotic Surgery

Analyzing the emergence of surgical robotics in Africa: a scoping review of pioneering procedures, platforms utilized, and outcome meta-analysis

Adebayo Feranmi Falola1,2 , Oluwasina Samuel Dada1,3 , Ademola Adeyeye4,5,6 , Chioma Ogechukwu Ezebialu1,2 , Rhoda Tolulope Fadairo1,2 , Madeleine Oluomachi Okere1,7 , Abdourahmane Ndong1,8

1General Surgery Community, Surgery Interest Group of Africa, Lagos, Nigeria
2Department of Medicine and Surgery, College of Medicine, University of Ibadan, Ibadan, Nigeria
3Department of General Surgery, University Hospitals Birmingham NHS Foundation Trust, Birmingham, United Kingdom
4Significant Polyp and Early Colorectal Cancer (SPECC) Service, King’s College Hospital, London, United Kingdom
5Department of Surgery, Afe Babalola University, Ado-Ekiti, Nigeria
6Department of Surgery, University of Ilorin Teaching Hospital, Nigeria
7Department of Medicine and Surgery, College of Medicine, University of Port Harcourt, Choba, Nigeria
8Department of Surgery, Gaston Berger University, Saint-Louis, Senegal

Correspondence to : Adebayo Feranmi Falola
Department of Medicine and Surgery, College of Medicine, University of Ibadan, Ibadan 200212, Nigeria
E-mail: falolabayo@gmail.com
https://orcid.org/0000-0001-9509-4844

This paper was presented at the ASiT x RaDiST Robotics for Trainees Conference, Royal College of Surgeons, Edinburgh, May 23–24, 2024.

Received: April 29, 2024; Revised: June 27, 2024; Accepted: August 25, 2024

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

Purpose: Surgical practice globally has undergone significant advancements with the advent of robotic systems. In Africa, a similar trend is emerging with the introduction of robots into various surgical specialties in certain countries. The need to review the robotic procedures performed, platforms utilized, and analyze outcomes such as conversion, morbidity, and mortality associated with robotic surgery in Africa, necessitated this study. This is the first study examining the status and outcomes of robotic surgery in Africa.
Methods: A thorough scoping search was performed in PubMed, Google Scholar, Web of Science, and African Journals Online. Of the 1,266 studies identified, 16 studies across 3 countries met the inclusion criteria. A meta-analysis conducted using R statistical software estimated the pooled prevalences with the 95% confidence interval (CI) of conversion, morbidity, and mortality.
Results: Surgical robots are reportedly in use in South Africa, Egypt, and Tunisia. Across four specialties, 1,328 procedures were performed using da Vinci (Intuitive Surgical), Versius (CMR Surgical), and Senhance (Asensus Surgical) surgical robotic platforms. Urological procedures (90.1%) were the major procedures performed, with robotic prostatectomy (49.3%) being the most common procedure. The pooled rate of conversion and prevalence of morbidity from the meta-analysis was 0.21% (95% CI, 0%–0.54%) and 21.15% (95% CI, 7.45%–34.85%), respectively. There was no reported case of mortality.
Conclusion: The outcomes highlight successful implementation and the potential for wider adoption. Based on our findings, we advocate for multidisciplinary and multinational collaboration, investment in surgical training programs, and policy initiatives aimed at addressing barriers to the widespread adoption of robotic surgery in Africa.

Keywords Robotic surgical procedures, Minimally invasive surgical procedures, Africa

From conventional open surgery to the advent of cutting-edge robotic systems, the trajectory of surgical innovation is quite intriguing and complex [1]. In recent decades, minimal access surgical practice has undergone a transformative evolution, with technological advancements leading to the development and adoption of robotic systems [2]. Robotic surgery has emerged as a paradigm-shifting approach, offering surgeons enhanced precision, reduced fatigue, improved visualization, and improved patient care and outcomes [3,4].

The application of robots in surgery began in the late 1980s, with the use of the PUMA 560 (Unimation) for a neurological procedure [5]. Several surgical robots including da Vinci (Intuitive Surgical), Senhance (Asensus Surgical), and Versius (CMR Surgical) have since then gained wide application in various surgical specialties globally [6,7], especially in the United States where about 70% of all Intuitive Surgical robotic procedures are presently performed [8]. The same trend is emerging in Africa with certain countries reporting the adoption of these surgical robots for use in different surgical specialties [9,10].

The da Vinci system, developed in the United States in 1995 [11], is renowned for its precision in urological, gynecological, general surgical, and otolaryngological procedures [6,7,12], while the Senhance system, first used for a hysterectomy procedure in Rome [13], offers unique haptic feedback capabilities [6], and the Versius is a more recent ergonomic and collaborative platform indicated for use in adult general surgery, gynecology, urology, and cardiac surgery [6,7,12]. Other robotic systems, including Kangduo (Suzhou Kangduo Robot), Hinotori (Medicaroid), MicroHand (Tianjin University and WEGO), Revo-I (MeereCompany), Toumai (Shanghai MicroPort MedBot), MP1000 and SP1000 (Shenzhen Edge Medical Records), SSi Mantra (SS Innovations), Shurui (Shurui Robotics), and Carina (Ronovo Surgical), were developed and are in use in Asia [6,7,14]. Hugo (Medtronic), Avatera (AvateraMedical GmbH), and Dexter (Distalmotion) are other robotic systems in use in European and American settings [6,15]. Emerging surgical robots include Enos (Titan Medical), MIRA (Virtual Incision), MiroSurge (DLR), Vicarious (Vicarious Surgical), Bitrack (Rob Surgical), and Ottava (Medtronic) [6,7]. Micro-robots, single-port robotic surgery, and nanorobots are emerging frontiers in surgical robotics [3]. While the da Vinci platform by Intuitive Surgical has long been the dominant robotic system globally [11], new and cheaper platforms bring the potential of improved utilization in resource-constrained environments such as Africa [16].

Robotic surgery has no doubt proven to be a game-changer globally, promising benefits such as increased surgical precision, reduced invasiveness, and faster patient recovery [17,18]. However, in a World Health Organization report of 2023, approximately 60% of hospitals in Sub-Saharan Africa face regular power outages, while 15% of facilities lack any access to electricity, significantly impacting the feasibility of adopting advanced surgical technologies like robotic systems [19]. The adoption of robotic surgery in Africa thus presents a nuanced picture, one interwoven with the continent’s unique healthcare challenges and socioeconomic realities [1820].

This study was prompted by the necessity to evaluate the current status of robotic surgery in Africa, including outlining the robotic procedures performed across the continent and analyzing outcomes such as the conversion rate to open surgery, as well as the associated morbidity and mortality.

A single-blind scoping literature review was conducted in December 2023 in accordance with the Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews (PRISMA-ScR) [21]. This study was registered in the Open Science Framework registries (doi.org/10.17605/OSF.IO/UDYZW).

Search strategy

The literature search was performed in four databases. PubMed, Google Scholar, and Web of Science, due to their extensive coverage of biomedical literature. In addition, African Journals Online was searched because of its peculiar representation of African healthcare research. The search was conducted by three independent reviewers between December 6, 2023 and January 13, 2024 using these keywords in combination with Boolean operators: (‘Robotic’ OR ‘Robot-assisted’ OR ‘Robot’) AND (‘Surgery’ OR ‘Procedure’) AND (‘Africa’ OR ‘Country names’). Truncation and synonyms were employed to account for variations in terminology and ensure comprehensive coverage of relevant literature. The full strategy can be seen in Appendix.

Search results were uploaded to Rayyan [22] for deduplication and screening, using the set-out inclusion and exclusion criteria. Discrepancies or disagreements among reviewers during the screening and data extraction phases were resolved through consensus meetings. In cases where consensus could not be reached, a third reviewer was consulted to arbitrate and make the final decision regarding study inclusion.

We recognize the potential for language bias in our review. To mitigate language bias, we attempted to identify relevant non-English articles through translation of the search keywords to French, Arabic, and Portuguese, the three major non-English official languages in Africa. Non-English articles were translated to English using Google Translate, for screening and data extraction.

Eligibility for inclusion

Studies deemed eligible for inclusion had to meet the following PICOS criteria [23].

• P (Population): Patients who had robotic procedures in Africa

• I (Intervention): Robotic procedures

• C (Comparators): Different robotic procedures performed, countries where they were performed, and robotic systems used

• O (Outcomes): Full recovery, morbidity or mortality

• S (Study design): Editorial, case report, prospective, retrospective, and cross-sectional studies

Inclusion criteria

Studies that report the use of robotic systems for surgical procedures performed in Africa.

Exclusion criteria

Studies not carried out in Africa and those that do not include procedures done and the outcomes. Editorials, case reports. Studies with less than 10 participants (n ≤ 10) were excluded from the meta-analysis.

Data extraction

Data extracted from selected studies include the title of the paper, lead author, author’s affiliation, year of publication, period of study, study design, country of study, total sample size, age range, mean age, presenting symptoms, robotic procedures performed, robotic surgery system used, surgical techniques, operative data, mean robotic time, mean total operative time, estimated blood loss, mean hospital stay, technical difficulties, conversion to open surgery, morbidity, and mortality.

Meta-analysis

A meta-analysis was carried out in R statistical software version 4.4.1 (R Foundation for Statistical Computing) and R Studio version 2024.04.2+764, using “meta” and “metafor” packages. The pooled prevalences with the 95% confidence interval (CI) of conversion of robotic procedures to open surgery, morbidity, and mortality were obtained. Only cohort reports with a sample size (n ≥ 10) were included in the meta-analysis. Heterogeneity between studies was tested by the I2 test. A random-effects model was used when I2 > 50% (high risk of heterogeneity) and a fixed-effects model was used when I2 ≤ 50% (low risk of heterogeneity).

Assessment of methodologic quality and risk of bias

Risk of bias was assessed using The Cochrane tool, Risk of Bias in Non-randomized Studies of Interventions (ROBINS-I) [24,25]. Risk-of-bias plots were then visually generated using the ROBVIS (Risk-of-Bias Visualization) tool [26]. Each included publication was assigned a risk-of-bias category as follows: low risk, which is similar to a well-executed randomized controlled trial in terms of this specific bias domain; moderate risk, which represents a well-conducted nonrandomized study within this domain but does not fully meet the standards of a high-quality randomized trial; serious risk, indicating important limitations within this domain; critical risk, highlighting severe issues that render the study unable to provide reliable evidence on the intervention’s effects; and no information, indicating insufficient information to make a judgment about the risk of bias within this domain [25]. Three included studies which were not studies of interventions (editorial and cross-sectional studies) were not assessed.

Flow of studies

The scoping search performed across four databases returned 1,266 articles, 402 of which were excluded as duplicates. One report was identified from the official website of the Middle East and Mediterranean Association of Gynaecologic Oncologists. Of the remaining 864 studies, we excluded 588 at the title and abstract screening level because they did not meet the inclusion criteria, and subjected the remaining 276 articles to full text screening. In total, 16 studies were ultimately included in this study, after exclusion of 260 articles due to various reasons as shown in the PRISMA flow diagram (Fig. 1).

Fig. 1. PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) 2020 flow diagram for new systematic reviews which included searches of databases and registers only.

Study characteristics

The included studies were published between 2003 and 2023. The majority were published between 2020 and 2024 (Fig. 2). Out of these studies, two (12.5%) were editorials, three (18.8%) were case reports, one (6.3%) was a cross-sectional study, 5 (31.25) were retrospective cohorts, four (25.0%) were prospective cohorts, and one (6.3%) was a prospective randomized controlled trial. The included studies were published across three African countries: Egypt, South Africa, and Tunisia while 51 African countries (94.4%) have not reported the use of surgical robots.

Fig. 2. Number of studies per year of publication.

Most of the studies, specifically 12 (75%), were published in Egypt. South Africa contributed three studies (18.8%), while one (6.3%) was from Tunisia. The majority of procedures, 1,101 (82.9%) were performed in South Africa, followed by 216 (16.3%) performed in Egypt, and 11 (0.8%) in Tunisia. Fig. 3 illustrates the distribution of procedures and reports across different countries.

Fig. 3. Distribution of robotic procedures and number of reports per country.

A total of three robotic platforms were used across the 16 studies. The robotic platforms used were reported in 13 studies. Among these, the da Vinci surgical system was utilized in the majority, comprising 11 studies (68.8%), while the Versius and Senhance surgical robotic systems were each used in one study (6.3%). The robotic platforms used in three studies (18.8%) were not reported. The total sample size across the 16 studies is 1,328. The study characteristics are presented in Table 1 [9,10,2740].

Table 1 . Study characteristics

StudyCountryStudy designPublication yearSample sizeRobotic surgery system usedProcedure(s) performed
De Jager et al. [9]South AfricaRetrospective cohort2021600Not reportedRobot-assisted laparoscopic radical prostatectomy
Zaghloul et al. [10]EgyptRetrospective cohort202155da VinciRobotic radical prostatectomy
Debakey et al. [27]EgyptProspective randomized control trial201821da VinciRobot-assisted rectal surgery
Abbas et al. [28]EgyptRetrospective cohort201225da VinciRobot-assisted cystoprostatectomy with urinary diversion
Abd-erRazik et al. [29]EgyptCase study20222Not reportedRobotic-assisted transgastric cystogastrostomy and pancreatic debridement
Forgan and Lazarus [30]South AfricaEditorial2023500da VinciRobot-assisted laparoscopic partial nephrectomy and pyeloplasty
Shokralla and Fathalla [31]EgyptProspective cohort20212Not reportedRobotic hysterectomy
Zaghloul et al. [32]EgyptProspective cohort201820da VinciRobotic radical hysterectomy
Van der Merwe et al. [33]South AfricaEditorial20221da VinciRobotic-assisted Mc Keown esophagectomy and thoracic outlet decompression surgery
Zaghloul and Mahmoud [34]EgyptProspective cohort201610da VinciRobotic colorectal surgery
El-Tabey and Shoma [35]EgyptCase study20051da VinciRobot-assisted laparoscopic radical cystectomy
Menon et al. [36]EgyptRetrospective cohort200315da VinciRobot-assisted radical cystoprostatectomy
Korany et al. [37]EgyptCross-sectional202324da VinciRobotic bariatric sleeve surgery
Farag et al. [38]EgyptProspective cohort202340da VinciRobot-assisted laparoscopic resection of mid- and low-rectal carcinoma
Maurice et al. [39]EgyptCase study20231VersiusRobotic-assisted Mc Keown esophagectomy
Hassouna et al. [40]TunisiaRetrospective cohort201911SenhanceRobotic oophorectomy, adnexectomy and hysterectomy

da Vinci, Intuitive Surgical; Versius, CMR Surgical; Senhance, Asensus Surgical.



Robotic procedures performed

Our study shows that robotic surgery has been adopted across four surgical specialties in Africa: cardiothoracic, general, gynecological, and urological surgery. A total of 1,328 procedures were performed. Urological procedures performed in 1,196 cases (90.1%) across six studies were the predominant robotic procedures performed in Africa. This is followed by general surgical procedures, performed in 98 patients (7.4%). Prostatectomy, performed in 655 patients (49.3%) is the most common procedure performed. Table 2 displays the number of reports, percentage of reports, sample sizes, percentage of sample sizes, and procedures performed in each specialty. The percentage of reports per specialty is depicted in Fig. 4.

Fig. 4. Percentage report and sample size per specialty.

Table 2 . Robotic procedures performed per specialty

SpecialtyNo. of reportsProportion of reports per specialty (%)Sample sizeProportion of sample size per specialty (%)Robotic procedure(s)
Urological surgery637.51,19690.1Prostatectomy, cystoprostatectomy, nephrectomy, and pyeloplasty
General surgery637.5987.4Colorectal surgery, cystogastrostomy, pancreatic debridement, and bariatric sleeve surgery
Gynecological surgery318.8332.5Hysterectomy, oophorectomy and adnexectomy
Cardiothoracic surgery16.310.1McKeown esophagectomy and thoracic outlet decompression surgery
Total161001,328100


Conversion to open surgery

Six cases of conversion of robotic to open surgery were identified. There were no procedures converted to laparoscopy. The first was a case of robot-assisted rectal surgery converted to open surgery as a result of a bulky mid-rectal tumor in a very narrow male pelvis. Another was a case of robotic radical prostatectomy which was converted due to difficulty with the urethrovesical anastomosis. Also, a case of robotic colorectal surgery was converted due to a locally advanced tumor. Reasons for conversion in three cases were not reported.

Meta-analysis

Eight cohort studies with sample size (n ≥ 10) which reported the rate of conversion among their study population were included in the meta-analysis of conversion of robotic to open surgery. Zero events were observed in three studies [9,32,36]. To improve feasibility and validity of the analysis [41], continuity correction of one was added to zero events. Common effects model was used since I2 was less than 50% (low risk of heterogeneity). The meta-analysis revealed a pooled conversion rate of 0.2% (95% CI, 0%–0.5%; eight studies and 775 participants) (Fig. 5).

Fig. 5. Forest plot for conversion. The midpoint of each line illustrates the prevalence; the horizontal line indicates the confidence interval; and the diamond shows the pooled prevalence. CI, confidence interval.

Morbidity and mortality

A total of 56 complications were recorded in 49 patients following various robotic procedures (Table 3). Prolonged postoperative ileus which occurred following robotic resection of rectal carcinoma, urine leak, and Intraoperative hemorrhage requiring blood transfusion were the major complications. Urine leakage occurred in eight cases of radical prostatectomy and was managed with exploration and percutaneous nephrostomy in two cases. There was no recorded case of mortality.

Table 3 . Complications of robotic surgery

MorbidityNo. of reportsRobotic procedure(s)
Ileus8Colorectal surgery
Urine leak8Radical prostatectomy
Intraoperative hemorrhage requiring blood transfusion8Radical prostatectomy (3) and radical hysterectomy (5)
Anastomotic leakage3Colorectal surgery
Wound infection3Colorectal surgery (2) and radical prostatectomy (1)
Bladder injuries3Radical hysterectomy
Bladder neck stenosis3Radical prostatectomy
Lymphocele3Radical prostatectomy
Chest infection3Radical hysterectomy
Ureteric injury2Radical prostatectomy
Port site hernia2Radical prostatectomy
Deep vein thrombosis1Colorectal surgery
Epigastric pain1Transgastric cystogastrostomy and pancreatic debridement
Vomiting1Transgastric cystogastrostomy and pancreatic debridement
Local recurrence of cervical cancer1Radical hysterectomy
Trocar site infection1Radical hysterectomy
Reoperation1Colorectal surgery
Port site metastasis1Radical cystectomy
Urinary tract infection1Radical prostatectomy
Venous thromboembolism1Radical prostatectomy
Small bowel obstruction1Radical prostatectomy


Meta-analysis

Eight cohort studies with sample size (n ≥ 10) reported the complications among their study population and were included in the meta-analysis of prevalence of morbidity. The meta-analysis revealed a 21.2% pooled prevalence of morbidity (95% CI, 7.0%–35.0%; eight studies and 772 participants) (Fig. 6).

Fig. 6. Forest plot for morbidity. The midpoint of each line illustrates the prevalence; the horizontal line indicates the confidence interval; and the diamond shows the pooled prevalence. CI, confidence interval.

Methodologic quality and risk of bias

The ROBINS-I [24,25] was used to evaluate seven bias domains within each included study (Fig. 7, 8).

Fig. 7. Traffic light plot of risk of bias according to ROBINS-I (Risk of Bias in Non-randomized Studies of Interventions).

Fig. 8. Summary light plot according to ROBINS-I (Risk of Bias in Non-randomized Studies of Interventions).

• Bias due to confounding (D1): low risk (four studies), moderate risk (four studies), serious risk (four studies), and no information (one study)

• Bias due to selection of participants (D2): low risk (eight studies), moderate risk (one study), serious risk (four studies)

• Bias in classification of interventions (D3): low risk (11 studies), moderate risk (two studies)

• Bias due to deviations from intended intervention (D4): low risk (six studies), moderate risk (four studies), no information (two studies)

• Bias due to missing data (D5): low risk (10 studies), moderate risk (one study), no information (two studies)

• Bias in measurement of outcomes (D6): low risk (nine studies), moderate risk (three studies), no information (one study)

• Bias in selection of reported results (D7): low risk (11 studies), moderate risk (two studies)

• Overall risk: low (three studies), moderate (four studies), and serious (six studies)

Our study has provided an important overview of the early phase of robotic surgical practice in Africa, highlighting three countries that have reported its use: Egypt, South Africa, and Tunisia. Further investigation is needed to understand the specific factors facilitating the adoption of surgical robots in these countries, particularly in Egypt and South Africa, unlike in other countries where robotic surgery is yet to be reportedly available. Possible factors may include early investment in robotic surgery training programs, favorable regulatory environments, and partnerships with industry stakeholders. In other countries, however, its adoption remains an uncertain possibility as a result of inadequate healthcare budget allocation, unreliable power supply, and most importantly, ineffective leadership [16,20].

The da Vinci, Senhance, and Versius are the three surgical robotic systems currently in use in Africa. Understandably, da Vinci, used in 11 of the included studies (68.8%), is the most used platform. It is a master-slave laparoscopic robotic platform with wide application in several surgical specialties that have been in use globally since 1998 [4]. The Senhance and Versius, however, are newer master-slave robotic platforms that only came into light in 2017 and 2020, respectively [4,7,42]. The case report from Egypt, by Maurice et al. [39], is the first report on the use of the ergonomic Versius platform in Africa. The majority of surgical robots cost over one million US dollars [6]. The arrival of newer and cheaper robotic platforms may thus be necessary for more widespread adoption of robotic surgery in low- and middle-income settings like Africa [16].

The number of robot-assisted surgeries reported increased over the years, between 2003 and 2023. In Africa, robotic surgery is presently in use across four surgical specialties: urological, general, gynecological, and cardiothoracic surgery. In other settings, however, surgical robots have been applied in other specialties, including otolaryngology, orthopedic surgery, and neurosurgery [3,43,44]. Our study shows that prostatectomy is the most commonly performed robotic procedure in Africa. This is consistent with global reports that urology has been at the forefront of adoption of the robotic approach, and that robotic prostatectomy is the most commonly performed procedure [4446]. The differential uptake of robotic surgery across surgical specialties however underscores the need for tailored approaches to surgical training, infrastructure development, and patient access initiatives. Future research should explore how healthcare policies and resource allocation strategies can optimize the integration of robotic surgery across diverse surgical specialties.

A pooled conversion rate of 0.2% was obtained. Conversion of robotic procedures to open surgery is known to be associated with adverse outcomes and thus should be anticipated and planned for [47]. The conversion rate is however similarly low, compared to reports from other settings [4850].

The pooled prevalence of morbidity is high compared to the 6% to 15% reported in studies done in Europe and the United States [48,49,51]. The morbidity rates observed vary significantly across reports. The retrospective study of 600 patients who had robotic prostatectomy in South Africa recorded only two cases of morbidity [9], while studies from other countries like Egypt recorded a significantly higher number of cases of complications [10,34]. Extensive perioperative evaluation, investigations, and an experienced robotic team are vital for reduction, early identification, and proper management of complications from robotic surgery [52].

The 0% prevalence of mortality obtained in our study is similar to the low prevalence (0%–0.4%) observed in other settings [48,51,53]. Africa has similarly recorded a low mortality rate with laparoscopy, another minimally invasive approach [54]. This suggests an even level of expert know-how with minimally invasive surgeries in Africa and other parts of the world, and the potential for wider use [54,55]. The low mortality rate associated with minimal access surgery is one of its major advantages over conventional open surgery [56]. Although our findings suggest similarities in robotic surgery outcomes between Africa and other regions, such as low mortality rates [48,51,53], it is important to recognize the unique challenges and opportunities facing African healthcare systems. Future research should explore how cultural attitudes toward technology, economic disparities, and healthcare policy frameworks influence the adoption and utilization of robotic surgery in Africa.

While our study reports no mortality associated with robotic surgery in Africa, it’s important to acknowledge the variability in reported morbidity rates across studies. Factors such as differences in perioperative care protocols, surgeon experience, and patient comorbidities may contribute to variations in outcomes. Future research should focus on standardizing outcome measures and implementing quality improvement initiatives to optimize patient safety and surgical outcomes in robotic surgical practice in Africa.

Considering the fact that the gold standard of care, unlike in developed settings, is providing the best possible care within the constraints of available resources, rather than pursuing cutting-edge treatment [57], several African settings may need to solve impeding issues such as low health care system budgets, lack of a suitable training environment, inadequate power supplies, inadequate management, amongst others, before robotics can fully replace the conventional open or laparoscopic approach as gold standard [16,19]. In Africa, there is still much needed to be done before robot-assisted surgery can be adopted fully into our health system [16,58].

Based on our findings, we advocate for multidisciplinary collaboration, investment in surgical training programs, and policy initiatives aimed at addressing barriers to robotic surgery adoption in Africa. There is also a need for multicenter and national databases to keep records of the robotic surgical procedures performed in Africa. Future research should prioritize longitudinal studies to assess the long-term outcomes of robotic surgery, explore patient-centered outcomes, and evaluate the cost-effectiveness of robot-assisted procedures in diverse healthcare settings.

This study has provided the first and an important analysis of the robotic procedures performed, the robotic platforms utilized, and the outcomes of the first set of surgical patients managed with the robotic approach in Africa. The study has also provided recommendations for wider use and a foundation for future research on robotic surgery in Africa. However, the limitations include a language barrier, which might have limited the discoverability of non-English publications in the databases searched. Additionally, some data, such as cost, estimated blood loss, and operation time, were not available or inconsistently reported in the reviewed publications, thus limiting the possibility of analysis and inclusion in this study. We recommend that future research should focus on this data to provide stronger evidence on the topic.

In conclusion, our study not only sheds light on the present state of robotic surgery in Africa but also provides a roadmap for future research, policy development, and strategic planning. By addressing the outlined challenges and implementing the suggested recommendations, Africa has the potential to bridge the gap and become an integral participant in the global landscape of robot-assisted surgery, thereby advancing surgical healthcare outcomes across the continent. Also, with the arrival of newer and cheaper robotic platforms, the promising outcomes so far signal a high likelihood of robot-assisted surgery being widely used in African healthcare management in the future.

Authors’ contributions

Conceptualization, Formal analysis: AFF

Data curation: AFF, OSD, RTF, COE, MOO

Methodology: OSD, AFF, AA

Supervision, Validation: AA, AN, ODD, OSD

Writing–original draft: AFF, AA, RTF, COE, OSD

Writing–review & editing: OSD, AA, AFF, AN

All authors read and approved the final manuscript.

Conflict of interest

All authors have no conflicts of interest to declare.

Funding/support

None.

Data availability

The data presented in this study are available upon reasonable request to the corresponding author.

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Article

Original Article

Journal of Minimally Invasive Surgery 2024; 27(3): 142-155

Published online September 15, 2024 https://doi.org/10.7602/jmis.2024.27.3.142

Copyright © The Korean Society of Endo-Laparoscopic & Robotic Surgery.

Analyzing the emergence of surgical robotics in Africa: a scoping review of pioneering procedures, platforms utilized, and outcome meta-analysis

Adebayo Feranmi Falola1,2 , Oluwasina Samuel Dada1,3 , Ademola Adeyeye4,5,6 , Chioma Ogechukwu Ezebialu1,2 , Rhoda Tolulope Fadairo1,2 , Madeleine Oluomachi Okere1,7 , Abdourahmane Ndong1,8

1General Surgery Community, Surgery Interest Group of Africa, Lagos, Nigeria
2Department of Medicine and Surgery, College of Medicine, University of Ibadan, Ibadan, Nigeria
3Department of General Surgery, University Hospitals Birmingham NHS Foundation Trust, Birmingham, United Kingdom
4Significant Polyp and Early Colorectal Cancer (SPECC) Service, King’s College Hospital, London, United Kingdom
5Department of Surgery, Afe Babalola University, Ado-Ekiti, Nigeria
6Department of Surgery, University of Ilorin Teaching Hospital, Nigeria
7Department of Medicine and Surgery, College of Medicine, University of Port Harcourt, Choba, Nigeria
8Department of Surgery, Gaston Berger University, Saint-Louis, Senegal

Correspondence to:Adebayo Feranmi Falola
Department of Medicine and Surgery, College of Medicine, University of Ibadan, Ibadan 200212, Nigeria
E-mail: falolabayo@gmail.com
https://orcid.org/0000-0001-9509-4844

This paper was presented at the ASiT x RaDiST Robotics for Trainees Conference, Royal College of Surgeons, Edinburgh, May 23–24, 2024.

Received: April 29, 2024; Revised: June 27, 2024; Accepted: August 25, 2024

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

Abstract

Purpose: Surgical practice globally has undergone significant advancements with the advent of robotic systems. In Africa, a similar trend is emerging with the introduction of robots into various surgical specialties in certain countries. The need to review the robotic procedures performed, platforms utilized, and analyze outcomes such as conversion, morbidity, and mortality associated with robotic surgery in Africa, necessitated this study. This is the first study examining the status and outcomes of robotic surgery in Africa.
Methods: A thorough scoping search was performed in PubMed, Google Scholar, Web of Science, and African Journals Online. Of the 1,266 studies identified, 16 studies across 3 countries met the inclusion criteria. A meta-analysis conducted using R statistical software estimated the pooled prevalences with the 95% confidence interval (CI) of conversion, morbidity, and mortality.
Results: Surgical robots are reportedly in use in South Africa, Egypt, and Tunisia. Across four specialties, 1,328 procedures were performed using da Vinci (Intuitive Surgical), Versius (CMR Surgical), and Senhance (Asensus Surgical) surgical robotic platforms. Urological procedures (90.1%) were the major procedures performed, with robotic prostatectomy (49.3%) being the most common procedure. The pooled rate of conversion and prevalence of morbidity from the meta-analysis was 0.21% (95% CI, 0%–0.54%) and 21.15% (95% CI, 7.45%–34.85%), respectively. There was no reported case of mortality.
Conclusion: The outcomes highlight successful implementation and the potential for wider adoption. Based on our findings, we advocate for multidisciplinary and multinational collaboration, investment in surgical training programs, and policy initiatives aimed at addressing barriers to the widespread adoption of robotic surgery in Africa.

Keywords: Robotic surgical procedures, Minimally invasive surgical procedures, Africa

INTRODUCTION

From conventional open surgery to the advent of cutting-edge robotic systems, the trajectory of surgical innovation is quite intriguing and complex [1]. In recent decades, minimal access surgical practice has undergone a transformative evolution, with technological advancements leading to the development and adoption of robotic systems [2]. Robotic surgery has emerged as a paradigm-shifting approach, offering surgeons enhanced precision, reduced fatigue, improved visualization, and improved patient care and outcomes [3,4].

The application of robots in surgery began in the late 1980s, with the use of the PUMA 560 (Unimation) for a neurological procedure [5]. Several surgical robots including da Vinci (Intuitive Surgical), Senhance (Asensus Surgical), and Versius (CMR Surgical) have since then gained wide application in various surgical specialties globally [6,7], especially in the United States where about 70% of all Intuitive Surgical robotic procedures are presently performed [8]. The same trend is emerging in Africa with certain countries reporting the adoption of these surgical robots for use in different surgical specialties [9,10].

The da Vinci system, developed in the United States in 1995 [11], is renowned for its precision in urological, gynecological, general surgical, and otolaryngological procedures [6,7,12], while the Senhance system, first used for a hysterectomy procedure in Rome [13], offers unique haptic feedback capabilities [6], and the Versius is a more recent ergonomic and collaborative platform indicated for use in adult general surgery, gynecology, urology, and cardiac surgery [6,7,12]. Other robotic systems, including Kangduo (Suzhou Kangduo Robot), Hinotori (Medicaroid), MicroHand (Tianjin University and WEGO), Revo-I (MeereCompany), Toumai (Shanghai MicroPort MedBot), MP1000 and SP1000 (Shenzhen Edge Medical Records), SSi Mantra (SS Innovations), Shurui (Shurui Robotics), and Carina (Ronovo Surgical), were developed and are in use in Asia [6,7,14]. Hugo (Medtronic), Avatera (AvateraMedical GmbH), and Dexter (Distalmotion) are other robotic systems in use in European and American settings [6,15]. Emerging surgical robots include Enos (Titan Medical), MIRA (Virtual Incision), MiroSurge (DLR), Vicarious (Vicarious Surgical), Bitrack (Rob Surgical), and Ottava (Medtronic) [6,7]. Micro-robots, single-port robotic surgery, and nanorobots are emerging frontiers in surgical robotics [3]. While the da Vinci platform by Intuitive Surgical has long been the dominant robotic system globally [11], new and cheaper platforms bring the potential of improved utilization in resource-constrained environments such as Africa [16].

Robotic surgery has no doubt proven to be a game-changer globally, promising benefits such as increased surgical precision, reduced invasiveness, and faster patient recovery [17,18]. However, in a World Health Organization report of 2023, approximately 60% of hospitals in Sub-Saharan Africa face regular power outages, while 15% of facilities lack any access to electricity, significantly impacting the feasibility of adopting advanced surgical technologies like robotic systems [19]. The adoption of robotic surgery in Africa thus presents a nuanced picture, one interwoven with the continent’s unique healthcare challenges and socioeconomic realities [1820].

This study was prompted by the necessity to evaluate the current status of robotic surgery in Africa, including outlining the robotic procedures performed across the continent and analyzing outcomes such as the conversion rate to open surgery, as well as the associated morbidity and mortality.

METHODS

A single-blind scoping literature review was conducted in December 2023 in accordance with the Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews (PRISMA-ScR) [21]. This study was registered in the Open Science Framework registries (doi.org/10.17605/OSF.IO/UDYZW).

Search strategy

The literature search was performed in four databases. PubMed, Google Scholar, and Web of Science, due to their extensive coverage of biomedical literature. In addition, African Journals Online was searched because of its peculiar representation of African healthcare research. The search was conducted by three independent reviewers between December 6, 2023 and January 13, 2024 using these keywords in combination with Boolean operators: (‘Robotic’ OR ‘Robot-assisted’ OR ‘Robot’) AND (‘Surgery’ OR ‘Procedure’) AND (‘Africa’ OR ‘Country names’). Truncation and synonyms were employed to account for variations in terminology and ensure comprehensive coverage of relevant literature. The full strategy can be seen in Appendix.

Search results were uploaded to Rayyan [22] for deduplication and screening, using the set-out inclusion and exclusion criteria. Discrepancies or disagreements among reviewers during the screening and data extraction phases were resolved through consensus meetings. In cases where consensus could not be reached, a third reviewer was consulted to arbitrate and make the final decision regarding study inclusion.

We recognize the potential for language bias in our review. To mitigate language bias, we attempted to identify relevant non-English articles through translation of the search keywords to French, Arabic, and Portuguese, the three major non-English official languages in Africa. Non-English articles were translated to English using Google Translate, for screening and data extraction.

Eligibility for inclusion

Studies deemed eligible for inclusion had to meet the following PICOS criteria [23].

• P (Population): Patients who had robotic procedures in Africa

• I (Intervention): Robotic procedures

• C (Comparators): Different robotic procedures performed, countries where they were performed, and robotic systems used

• O (Outcomes): Full recovery, morbidity or mortality

• S (Study design): Editorial, case report, prospective, retrospective, and cross-sectional studies

Inclusion criteria

Studies that report the use of robotic systems for surgical procedures performed in Africa.

Exclusion criteria

Studies not carried out in Africa and those that do not include procedures done and the outcomes. Editorials, case reports. Studies with less than 10 participants (n ≤ 10) were excluded from the meta-analysis.

Data extraction

Data extracted from selected studies include the title of the paper, lead author, author’s affiliation, year of publication, period of study, study design, country of study, total sample size, age range, mean age, presenting symptoms, robotic procedures performed, robotic surgery system used, surgical techniques, operative data, mean robotic time, mean total operative time, estimated blood loss, mean hospital stay, technical difficulties, conversion to open surgery, morbidity, and mortality.

Meta-analysis

A meta-analysis was carried out in R statistical software version 4.4.1 (R Foundation for Statistical Computing) and R Studio version 2024.04.2+764, using “meta” and “metafor” packages. The pooled prevalences with the 95% confidence interval (CI) of conversion of robotic procedures to open surgery, morbidity, and mortality were obtained. Only cohort reports with a sample size (n ≥ 10) were included in the meta-analysis. Heterogeneity between studies was tested by the I2 test. A random-effects model was used when I2 > 50% (high risk of heterogeneity) and a fixed-effects model was used when I2 ≤ 50% (low risk of heterogeneity).

Assessment of methodologic quality and risk of bias

Risk of bias was assessed using The Cochrane tool, Risk of Bias in Non-randomized Studies of Interventions (ROBINS-I) [24,25]. Risk-of-bias plots were then visually generated using the ROBVIS (Risk-of-Bias Visualization) tool [26]. Each included publication was assigned a risk-of-bias category as follows: low risk, which is similar to a well-executed randomized controlled trial in terms of this specific bias domain; moderate risk, which represents a well-conducted nonrandomized study within this domain but does not fully meet the standards of a high-quality randomized trial; serious risk, indicating important limitations within this domain; critical risk, highlighting severe issues that render the study unable to provide reliable evidence on the intervention’s effects; and no information, indicating insufficient information to make a judgment about the risk of bias within this domain [25]. Three included studies which were not studies of interventions (editorial and cross-sectional studies) were not assessed.

RESULTS

Flow of studies

The scoping search performed across four databases returned 1,266 articles, 402 of which were excluded as duplicates. One report was identified from the official website of the Middle East and Mediterranean Association of Gynaecologic Oncologists. Of the remaining 864 studies, we excluded 588 at the title and abstract screening level because they did not meet the inclusion criteria, and subjected the remaining 276 articles to full text screening. In total, 16 studies were ultimately included in this study, after exclusion of 260 articles due to various reasons as shown in the PRISMA flow diagram (Fig. 1).

Figure 1. PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) 2020 flow diagram for new systematic reviews which included searches of databases and registers only.

Study characteristics

The included studies were published between 2003 and 2023. The majority were published between 2020 and 2024 (Fig. 2). Out of these studies, two (12.5%) were editorials, three (18.8%) were case reports, one (6.3%) was a cross-sectional study, 5 (31.25) were retrospective cohorts, four (25.0%) were prospective cohorts, and one (6.3%) was a prospective randomized controlled trial. The included studies were published across three African countries: Egypt, South Africa, and Tunisia while 51 African countries (94.4%) have not reported the use of surgical robots.

Figure 2. Number of studies per year of publication.

Most of the studies, specifically 12 (75%), were published in Egypt. South Africa contributed three studies (18.8%), while one (6.3%) was from Tunisia. The majority of procedures, 1,101 (82.9%) were performed in South Africa, followed by 216 (16.3%) performed in Egypt, and 11 (0.8%) in Tunisia. Fig. 3 illustrates the distribution of procedures and reports across different countries.

Figure 3. Distribution of robotic procedures and number of reports per country.

A total of three robotic platforms were used across the 16 studies. The robotic platforms used were reported in 13 studies. Among these, the da Vinci surgical system was utilized in the majority, comprising 11 studies (68.8%), while the Versius and Senhance surgical robotic systems were each used in one study (6.3%). The robotic platforms used in three studies (18.8%) were not reported. The total sample size across the 16 studies is 1,328. The study characteristics are presented in Table 1 [9,10,2740].

Table 1 . Study characteristics.

StudyCountryStudy designPublication yearSample sizeRobotic surgery system usedProcedure(s) performed
De Jager et al. [9]South AfricaRetrospective cohort2021600Not reportedRobot-assisted laparoscopic radical prostatectomy
Zaghloul et al. [10]EgyptRetrospective cohort202155da VinciRobotic radical prostatectomy
Debakey et al. [27]EgyptProspective randomized control trial201821da VinciRobot-assisted rectal surgery
Abbas et al. [28]EgyptRetrospective cohort201225da VinciRobot-assisted cystoprostatectomy with urinary diversion
Abd-erRazik et al. [29]EgyptCase study20222Not reportedRobotic-assisted transgastric cystogastrostomy and pancreatic debridement
Forgan and Lazarus [30]South AfricaEditorial2023500da VinciRobot-assisted laparoscopic partial nephrectomy and pyeloplasty
Shokralla and Fathalla [31]EgyptProspective cohort20212Not reportedRobotic hysterectomy
Zaghloul et al. [32]EgyptProspective cohort201820da VinciRobotic radical hysterectomy
Van der Merwe et al. [33]South AfricaEditorial20221da VinciRobotic-assisted Mc Keown esophagectomy and thoracic outlet decompression surgery
Zaghloul and Mahmoud [34]EgyptProspective cohort201610da VinciRobotic colorectal surgery
El-Tabey and Shoma [35]EgyptCase study20051da VinciRobot-assisted laparoscopic radical cystectomy
Menon et al. [36]EgyptRetrospective cohort200315da VinciRobot-assisted radical cystoprostatectomy
Korany et al. [37]EgyptCross-sectional202324da VinciRobotic bariatric sleeve surgery
Farag et al. [38]EgyptProspective cohort202340da VinciRobot-assisted laparoscopic resection of mid- and low-rectal carcinoma
Maurice et al. [39]EgyptCase study20231VersiusRobotic-assisted Mc Keown esophagectomy
Hassouna et al. [40]TunisiaRetrospective cohort201911SenhanceRobotic oophorectomy, adnexectomy and hysterectomy

da Vinci, Intuitive Surgical; Versius, CMR Surgical; Senhance, Asensus Surgical..



Robotic procedures performed

Our study shows that robotic surgery has been adopted across four surgical specialties in Africa: cardiothoracic, general, gynecological, and urological surgery. A total of 1,328 procedures were performed. Urological procedures performed in 1,196 cases (90.1%) across six studies were the predominant robotic procedures performed in Africa. This is followed by general surgical procedures, performed in 98 patients (7.4%). Prostatectomy, performed in 655 patients (49.3%) is the most common procedure performed. Table 2 displays the number of reports, percentage of reports, sample sizes, percentage of sample sizes, and procedures performed in each specialty. The percentage of reports per specialty is depicted in Fig. 4.

Figure 4. Percentage report and sample size per specialty.

Table 2 . Robotic procedures performed per specialty.

SpecialtyNo. of reportsProportion of reports per specialty (%)Sample sizeProportion of sample size per specialty (%)Robotic procedure(s)
Urological surgery637.51,19690.1Prostatectomy, cystoprostatectomy, nephrectomy, and pyeloplasty
General surgery637.5987.4Colorectal surgery, cystogastrostomy, pancreatic debridement, and bariatric sleeve surgery
Gynecological surgery318.8332.5Hysterectomy, oophorectomy and adnexectomy
Cardiothoracic surgery16.310.1McKeown esophagectomy and thoracic outlet decompression surgery
Total161001,328100


Conversion to open surgery

Six cases of conversion of robotic to open surgery were identified. There were no procedures converted to laparoscopy. The first was a case of robot-assisted rectal surgery converted to open surgery as a result of a bulky mid-rectal tumor in a very narrow male pelvis. Another was a case of robotic radical prostatectomy which was converted due to difficulty with the urethrovesical anastomosis. Also, a case of robotic colorectal surgery was converted due to a locally advanced tumor. Reasons for conversion in three cases were not reported.

Meta-analysis

Eight cohort studies with sample size (n ≥ 10) which reported the rate of conversion among their study population were included in the meta-analysis of conversion of robotic to open surgery. Zero events were observed in three studies [9,32,36]. To improve feasibility and validity of the analysis [41], continuity correction of one was added to zero events. Common effects model was used since I2 was less than 50% (low risk of heterogeneity). The meta-analysis revealed a pooled conversion rate of 0.2% (95% CI, 0%–0.5%; eight studies and 775 participants) (Fig. 5).

Figure 5. Forest plot for conversion. The midpoint of each line illustrates the prevalence; the horizontal line indicates the confidence interval; and the diamond shows the pooled prevalence. CI, confidence interval.

Morbidity and mortality

A total of 56 complications were recorded in 49 patients following various robotic procedures (Table 3). Prolonged postoperative ileus which occurred following robotic resection of rectal carcinoma, urine leak, and Intraoperative hemorrhage requiring blood transfusion were the major complications. Urine leakage occurred in eight cases of radical prostatectomy and was managed with exploration and percutaneous nephrostomy in two cases. There was no recorded case of mortality.

Table 3 . Complications of robotic surgery.

MorbidityNo. of reportsRobotic procedure(s)
Ileus8Colorectal surgery
Urine leak8Radical prostatectomy
Intraoperative hemorrhage requiring blood transfusion8Radical prostatectomy (3) and radical hysterectomy (5)
Anastomotic leakage3Colorectal surgery
Wound infection3Colorectal surgery (2) and radical prostatectomy (1)
Bladder injuries3Radical hysterectomy
Bladder neck stenosis3Radical prostatectomy
Lymphocele3Radical prostatectomy
Chest infection3Radical hysterectomy
Ureteric injury2Radical prostatectomy
Port site hernia2Radical prostatectomy
Deep vein thrombosis1Colorectal surgery
Epigastric pain1Transgastric cystogastrostomy and pancreatic debridement
Vomiting1Transgastric cystogastrostomy and pancreatic debridement
Local recurrence of cervical cancer1Radical hysterectomy
Trocar site infection1Radical hysterectomy
Reoperation1Colorectal surgery
Port site metastasis1Radical cystectomy
Urinary tract infection1Radical prostatectomy
Venous thromboembolism1Radical prostatectomy
Small bowel obstruction1Radical prostatectomy


Meta-analysis

Eight cohort studies with sample size (n ≥ 10) reported the complications among their study population and were included in the meta-analysis of prevalence of morbidity. The meta-analysis revealed a 21.2% pooled prevalence of morbidity (95% CI, 7.0%–35.0%; eight studies and 772 participants) (Fig. 6).

Figure 6. Forest plot for morbidity. The midpoint of each line illustrates the prevalence; the horizontal line indicates the confidence interval; and the diamond shows the pooled prevalence. CI, confidence interval.

Methodologic quality and risk of bias

The ROBINS-I [24,25] was used to evaluate seven bias domains within each included study (Fig. 7, 8).

Figure 7. Traffic light plot of risk of bias according to ROBINS-I (Risk of Bias in Non-randomized Studies of Interventions).

Figure 8. Summary light plot according to ROBINS-I (Risk of Bias in Non-randomized Studies of Interventions).

• Bias due to confounding (D1): low risk (four studies), moderate risk (four studies), serious risk (four studies), and no information (one study)

• Bias due to selection of participants (D2): low risk (eight studies), moderate risk (one study), serious risk (four studies)

• Bias in classification of interventions (D3): low risk (11 studies), moderate risk (two studies)

• Bias due to deviations from intended intervention (D4): low risk (six studies), moderate risk (four studies), no information (two studies)

• Bias due to missing data (D5): low risk (10 studies), moderate risk (one study), no information (two studies)

• Bias in measurement of outcomes (D6): low risk (nine studies), moderate risk (three studies), no information (one study)

• Bias in selection of reported results (D7): low risk (11 studies), moderate risk (two studies)

• Overall risk: low (three studies), moderate (four studies), and serious (six studies)

DISCUSSION

Our study has provided an important overview of the early phase of robotic surgical practice in Africa, highlighting three countries that have reported its use: Egypt, South Africa, and Tunisia. Further investigation is needed to understand the specific factors facilitating the adoption of surgical robots in these countries, particularly in Egypt and South Africa, unlike in other countries where robotic surgery is yet to be reportedly available. Possible factors may include early investment in robotic surgery training programs, favorable regulatory environments, and partnerships with industry stakeholders. In other countries, however, its adoption remains an uncertain possibility as a result of inadequate healthcare budget allocation, unreliable power supply, and most importantly, ineffective leadership [16,20].

The da Vinci, Senhance, and Versius are the three surgical robotic systems currently in use in Africa. Understandably, da Vinci, used in 11 of the included studies (68.8%), is the most used platform. It is a master-slave laparoscopic robotic platform with wide application in several surgical specialties that have been in use globally since 1998 [4]. The Senhance and Versius, however, are newer master-slave robotic platforms that only came into light in 2017 and 2020, respectively [4,7,42]. The case report from Egypt, by Maurice et al. [39], is the first report on the use of the ergonomic Versius platform in Africa. The majority of surgical robots cost over one million US dollars [6]. The arrival of newer and cheaper robotic platforms may thus be necessary for more widespread adoption of robotic surgery in low- and middle-income settings like Africa [16].

The number of robot-assisted surgeries reported increased over the years, between 2003 and 2023. In Africa, robotic surgery is presently in use across four surgical specialties: urological, general, gynecological, and cardiothoracic surgery. In other settings, however, surgical robots have been applied in other specialties, including otolaryngology, orthopedic surgery, and neurosurgery [3,43,44]. Our study shows that prostatectomy is the most commonly performed robotic procedure in Africa. This is consistent with global reports that urology has been at the forefront of adoption of the robotic approach, and that robotic prostatectomy is the most commonly performed procedure [4446]. The differential uptake of robotic surgery across surgical specialties however underscores the need for tailored approaches to surgical training, infrastructure development, and patient access initiatives. Future research should explore how healthcare policies and resource allocation strategies can optimize the integration of robotic surgery across diverse surgical specialties.

A pooled conversion rate of 0.2% was obtained. Conversion of robotic procedures to open surgery is known to be associated with adverse outcomes and thus should be anticipated and planned for [47]. The conversion rate is however similarly low, compared to reports from other settings [4850].

The pooled prevalence of morbidity is high compared to the 6% to 15% reported in studies done in Europe and the United States [48,49,51]. The morbidity rates observed vary significantly across reports. The retrospective study of 600 patients who had robotic prostatectomy in South Africa recorded only two cases of morbidity [9], while studies from other countries like Egypt recorded a significantly higher number of cases of complications [10,34]. Extensive perioperative evaluation, investigations, and an experienced robotic team are vital for reduction, early identification, and proper management of complications from robotic surgery [52].

The 0% prevalence of mortality obtained in our study is similar to the low prevalence (0%–0.4%) observed in other settings [48,51,53]. Africa has similarly recorded a low mortality rate with laparoscopy, another minimally invasive approach [54]. This suggests an even level of expert know-how with minimally invasive surgeries in Africa and other parts of the world, and the potential for wider use [54,55]. The low mortality rate associated with minimal access surgery is one of its major advantages over conventional open surgery [56]. Although our findings suggest similarities in robotic surgery outcomes between Africa and other regions, such as low mortality rates [48,51,53], it is important to recognize the unique challenges and opportunities facing African healthcare systems. Future research should explore how cultural attitudes toward technology, economic disparities, and healthcare policy frameworks influence the adoption and utilization of robotic surgery in Africa.

While our study reports no mortality associated with robotic surgery in Africa, it’s important to acknowledge the variability in reported morbidity rates across studies. Factors such as differences in perioperative care protocols, surgeon experience, and patient comorbidities may contribute to variations in outcomes. Future research should focus on standardizing outcome measures and implementing quality improvement initiatives to optimize patient safety and surgical outcomes in robotic surgical practice in Africa.

Considering the fact that the gold standard of care, unlike in developed settings, is providing the best possible care within the constraints of available resources, rather than pursuing cutting-edge treatment [57], several African settings may need to solve impeding issues such as low health care system budgets, lack of a suitable training environment, inadequate power supplies, inadequate management, amongst others, before robotics can fully replace the conventional open or laparoscopic approach as gold standard [16,19]. In Africa, there is still much needed to be done before robot-assisted surgery can be adopted fully into our health system [16,58].

Based on our findings, we advocate for multidisciplinary collaboration, investment in surgical training programs, and policy initiatives aimed at addressing barriers to robotic surgery adoption in Africa. There is also a need for multicenter and national databases to keep records of the robotic surgical procedures performed in Africa. Future research should prioritize longitudinal studies to assess the long-term outcomes of robotic surgery, explore patient-centered outcomes, and evaluate the cost-effectiveness of robot-assisted procedures in diverse healthcare settings.

This study has provided the first and an important analysis of the robotic procedures performed, the robotic platforms utilized, and the outcomes of the first set of surgical patients managed with the robotic approach in Africa. The study has also provided recommendations for wider use and a foundation for future research on robotic surgery in Africa. However, the limitations include a language barrier, which might have limited the discoverability of non-English publications in the databases searched. Additionally, some data, such as cost, estimated blood loss, and operation time, were not available or inconsistently reported in the reviewed publications, thus limiting the possibility of analysis and inclusion in this study. We recommend that future research should focus on this data to provide stronger evidence on the topic.

In conclusion, our study not only sheds light on the present state of robotic surgery in Africa but also provides a roadmap for future research, policy development, and strategic planning. By addressing the outlined challenges and implementing the suggested recommendations, Africa has the potential to bridge the gap and become an integral participant in the global landscape of robot-assisted surgery, thereby advancing surgical healthcare outcomes across the continent. Also, with the arrival of newer and cheaper robotic platforms, the promising outcomes so far signal a high likelihood of robot-assisted surgery being widely used in African healthcare management in the future.

Notes

Authors’ contributions

Conceptualization, Formal analysis: AFF

Data curation: AFF, OSD, RTF, COE, MOO

Methodology: OSD, AFF, AA

Supervision, Validation: AA, AN, ODD, OSD

Writing–original draft: AFF, AA, RTF, COE, OSD

Writing–review & editing: OSD, AA, AFF, AN

All authors read and approved the final manuscript.

Conflict of interest

All authors have no conflicts of interest to declare.

Funding/support

None.

Data availability

The data presented in this study are available upon reasonable request to the corresponding author.

Fig 1.

Figure 1.PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) 2020 flow diagram for new systematic reviews which included searches of databases and registers only.
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Fig 2.

Figure 2.Number of studies per year of publication.
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Fig 3.

Figure 3.Distribution of robotic procedures and number of reports per country.
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Fig 4.

Figure 4.Percentage report and sample size per specialty.
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Fig 5.

Figure 5.Forest plot for conversion. The midpoint of each line illustrates the prevalence; the horizontal line indicates the confidence interval; and the diamond shows the pooled prevalence. CI, confidence interval.
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Fig 6.

Figure 6.Forest plot for morbidity. The midpoint of each line illustrates the prevalence; the horizontal line indicates the confidence interval; and the diamond shows the pooled prevalence. CI, confidence interval.
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Fig 7.

Figure 7.Traffic light plot of risk of bias according to ROBINS-I (Risk of Bias in Non-randomized Studies of Interventions).
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Fig 8.

Figure 8.Summary light plot according to ROBINS-I (Risk of Bias in Non-randomized Studies of Interventions).
Journal of Minimally Invasive Surgery 2024; 27: 142-155https://doi.org/10.7602/jmis.2024.27.3.142

Table 1 . Study characteristics.

StudyCountryStudy designPublication yearSample sizeRobotic surgery system usedProcedure(s) performed
De Jager et al. [9]South AfricaRetrospective cohort2021600Not reportedRobot-assisted laparoscopic radical prostatectomy
Zaghloul et al. [10]EgyptRetrospective cohort202155da VinciRobotic radical prostatectomy
Debakey et al. [27]EgyptProspective randomized control trial201821da VinciRobot-assisted rectal surgery
Abbas et al. [28]EgyptRetrospective cohort201225da VinciRobot-assisted cystoprostatectomy with urinary diversion
Abd-erRazik et al. [29]EgyptCase study20222Not reportedRobotic-assisted transgastric cystogastrostomy and pancreatic debridement
Forgan and Lazarus [30]South AfricaEditorial2023500da VinciRobot-assisted laparoscopic partial nephrectomy and pyeloplasty
Shokralla and Fathalla [31]EgyptProspective cohort20212Not reportedRobotic hysterectomy
Zaghloul et al. [32]EgyptProspective cohort201820da VinciRobotic radical hysterectomy
Van der Merwe et al. [33]South AfricaEditorial20221da VinciRobotic-assisted Mc Keown esophagectomy and thoracic outlet decompression surgery
Zaghloul and Mahmoud [34]EgyptProspective cohort201610da VinciRobotic colorectal surgery
El-Tabey and Shoma [35]EgyptCase study20051da VinciRobot-assisted laparoscopic radical cystectomy
Menon et al. [36]EgyptRetrospective cohort200315da VinciRobot-assisted radical cystoprostatectomy
Korany et al. [37]EgyptCross-sectional202324da VinciRobotic bariatric sleeve surgery
Farag et al. [38]EgyptProspective cohort202340da VinciRobot-assisted laparoscopic resection of mid- and low-rectal carcinoma
Maurice et al. [39]EgyptCase study20231VersiusRobotic-assisted Mc Keown esophagectomy
Hassouna et al. [40]TunisiaRetrospective cohort201911SenhanceRobotic oophorectomy, adnexectomy and hysterectomy

da Vinci, Intuitive Surgical; Versius, CMR Surgical; Senhance, Asensus Surgical..


Table 2 . Robotic procedures performed per specialty.

SpecialtyNo. of reportsProportion of reports per specialty (%)Sample sizeProportion of sample size per specialty (%)Robotic procedure(s)
Urological surgery637.51,19690.1Prostatectomy, cystoprostatectomy, nephrectomy, and pyeloplasty
General surgery637.5987.4Colorectal surgery, cystogastrostomy, pancreatic debridement, and bariatric sleeve surgery
Gynecological surgery318.8332.5Hysterectomy, oophorectomy and adnexectomy
Cardiothoracic surgery16.310.1McKeown esophagectomy and thoracic outlet decompression surgery
Total161001,328100

Table 3 . Complications of robotic surgery.

MorbidityNo. of reportsRobotic procedure(s)
Ileus8Colorectal surgery
Urine leak8Radical prostatectomy
Intraoperative hemorrhage requiring blood transfusion8Radical prostatectomy (3) and radical hysterectomy (5)
Anastomotic leakage3Colorectal surgery
Wound infection3Colorectal surgery (2) and radical prostatectomy (1)
Bladder injuries3Radical hysterectomy
Bladder neck stenosis3Radical prostatectomy
Lymphocele3Radical prostatectomy
Chest infection3Radical hysterectomy
Ureteric injury2Radical prostatectomy
Port site hernia2Radical prostatectomy
Deep vein thrombosis1Colorectal surgery
Epigastric pain1Transgastric cystogastrostomy and pancreatic debridement
Vomiting1Transgastric cystogastrostomy and pancreatic debridement
Local recurrence of cervical cancer1Radical hysterectomy
Trocar site infection1Radical hysterectomy
Reoperation1Colorectal surgery
Port site metastasis1Radical cystectomy
Urinary tract infection1Radical prostatectomy
Venous thromboembolism1Radical prostatectomy
Small bowel obstruction1Radical prostatectomy

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