Analysis of the learning curve for robotic hysterectomy for benign gynaecological disease

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Date

2014

Authors

Fatih Şendaǧ
Burak Zeybek
Ali Osman Akdemir
Banu Ozgurel
Kemal Öztekin

Journal Title

Journal ISSN

Volume Title

Publisher

John Wiley and Sons Ltd

Open Access Color

Green Open Access

Yes

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No
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Abstract

Background: The objective was to evaluate the learning curve for performing a robotic hysterectomy to treat benign gynaecological disease. Methods: Thirty-six patients underwent robotic hysterectomy for benign indications. A systematic chart review of consecutive cases was conducted. The collected data included age BMI operating time set-up time docking time uterine weight blood loss intraoperative complications postoperative complications conversions to laparotomy and length of hospital stay. Results: The mean operating set-up and docking times were 169±54.5 52.9±12.4 and 7.8±7.6min respectively. The learning curve analysis revealed a decrease in both docking and operating times with both curves plateauing after case 9. Conclusions: The learning curve analysis revealed a decrease in docking time and operating time after case 9 suggesting that there might be a fast learning curve for experienced laparoscopic surgeons to master robotic hysterectomy and that the docking process does not have a significant negative influence on the overall operating time. © 2022 Elsevier B.V. All rights reserved.

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Keywords

Hysterectomy, Learning Curve, Robot, Da Vinci, Blood Loss, Gynaecological Disease, Hysterectomy, Intra-operative, Learning Curve Analysis, Learning Curves, Length Of Hospital Stays, Operating Time, Postoperative Complications, Set-up Time, Robotics, Adnexa Disease, Adult, Age, Article, Body Mass, Clinical Article, Conversion To Open Surgery, Female, Gynecologic Disease, Human, Hysterectomy, Laparoscopic Surgical Instrument, Laparotomy, Learning Curve, Length Of Stay, Medical Record Review, Middle Aged, Operation Duration, Operative Blood Loss, Peroperative Complication, Postoperative Complication, Robot Assisted Surgery, Robotic Hysterectomy, Salpingooophorectomy, Surgeon, Uterus Myoma, Uterus Weight, Education, Genital Diseases Female, Gynecologic Surgery, Gynecology, Multivariate Analysis, Pathology, Procedures, Robotic Surgical Procedure, Time, Uterus, Adult, Body Mass Index, Female, Gynecologic Surgical Procedures, Gynecology, Humans, Intraoperative Complications, Learning Curve, Length Of Stay, Middle Aged, Multivariate Analysis, Operative Time, Postoperative Complications, Robotic Surgical Procedures, Time Factors, Uterus, Blood loss, Gynaecological disease, Hysterectomy, Intra-operative, Learning curve analysis, Learning curves, Length of hospital stays, Operating time, Postoperative complications, Set-up time, Robotics, adnexa disease, adult, age, Article, body mass, clinical article, conversion to open surgery, female, gynecologic disease, human, hysterectomy, laparoscopic surgical instrument, laparotomy, learning curve, length of stay, medical record review, middle aged, operation duration, operative blood loss, peroperative complication, postoperative complication, robot assisted surgery, robotic hysterectomy, salpingooophorectomy, surgeon, uterus myoma, uterus weight, education, Genital Diseases Female, gynecologic surgery, gynecology, multivariate analysis, pathology, procedures, robotic surgical procedure, time, uterus, Adult, Body Mass Index, Female, Gynecologic Surgical Procedures, Gynecology, Humans, Intraoperative Complications, Learning Curve, Length of Stay, Middle Aged, Multivariate Analysis, Operative Time, Postoperative Complications, Robotic Surgical Procedures, Time Factors, Uterus, Robot, Hysterectomy, Learning Curve, Adult, Time Factors, Operative Time, Uterus, robot, Length of Stay, Middle Aged, Hysterectomy, Body Mass Index, learning curve, Gynecologic Surgical Procedures, Postoperative Complications, Robotic Surgical Procedures, Gynecology, Multivariate Analysis, Humans, Female, hysterectomy, Intraoperative Complications, Genital Diseases, Female, Learning Curve

Fields of Science

03 medical and health sciences, 0302 clinical medicine

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OpenCitations Citation Count
18

Source

The International Journal of Medical Robotics and Computer Assisted Surgery

Volume

10

Issue

3

Start Page

275

End Page

279
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CrossRef : 7

Scopus : 14

PubMed : 2

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Mendeley Readers : 31

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14

checked on Apr 08, 2026

Web of Science™ Citations

15

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