Investigating surgeon performance metrics as key predictors of robotic herniorrhaphy outcomes using iterative machine learning models: retrospective study.

IF 3.5 3区 医学 Q1 SURGERY
BJS Open Pub Date : 2024-12-30 DOI:10.1093/bjsopen/zrae160
Thomas H Shin, Abeselom Fanta, Mallory Shields, Georges Kaoukabani, Fahri Gokcal, Xi Liu, Ali Tavakkoli, O Yusef Kudsi
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引用次数: 0

Abstract

Background: Robotic data streams allow for capture of objective performance indicators, providing the ability to quantify and analyse operator technique and movement in optimizing postoperative outcomes. This study provided proof-of-concept demonstration of how intraoperative surgeon-factors could influence post-robotic herniorrhaphy complications via machine learning analyses of objective performance indicators.

Study design: Data on robotic-assisted ventral hernia repair were retrospectively reviewed between February 2013 and November 2022 at a single academic centre. Machine learning modelling on systematic chart review data correlated perioperative patient factors, intraoperative objective performance indicators, and postoperative outcomes. Complications were classified with the Clavien-Dindo scale. Endpoints of interest included postoperative complications at discharge, at postoperative day 30, and at the last follow-up. Machine learning models employed included linear, k-nearest neighbours, support vector, decision tree, random forest, adaptive boosting, and extreme gradient boosting regression algorithms.

Results: Some 520 patients undergoing robotic ventral hernia were included. Median age of patients was 56 years with 52.7% male and median body mass index 31.9 kg/m2. 92.7% of patients had at least one medical comorbidity peoperatively. Complications occurred in 33 (6.3%) patients at time of discharge. Machine learning models demonstrated an accuracy 0.95, a precision 0.92, a recall 0.95, and a F1 0.92 of objective performance indicator predicting complications and an accuracy 0.95, a precision 0.95, a recall 0.95, and a F1 0.94 by Clavien-Dindo grade at time of discharge. Thematic analyses of top ranked factors included operator-specific objective performance indicators alongside patient factors canonically associated with hernia complications.

Conclusions: This study showed the novel application of machine learning modelling to bridge objective performance indicators and clinical patient factors to postoperative clinical outcomes, demonstrating the relevance of dynamic intraoperative surgeon factors on clinical outcomes.

使用迭代机器学习模型调查外科医生表现指标作为机器人疝气修补结果的关键预测因素:回顾性研究。
背景:机器人数据流允许捕获客观性能指标,提供量化和分析操作员技术和运动的能力,以优化术后结果。该研究通过对客观性能指标的机器学习分析,提供了术中外科因素如何影响机器人术后疝修补并发症的概念验证。研究设计:回顾性回顾2013年2月至2022年11月在一个学术中心进行的机器人辅助腹疝修复的数据。基于系统图表回顾数据的机器学习建模与围手术期患者因素、术中客观表现指标和术后结果相关。并发症采用Clavien-Dindo量表进行分类。关注的终点包括出院时、术后第30天和最后一次随访时的术后并发症。采用的机器学习模型包括线性、k近邻、支持向量、决策树、随机森林、自适应增强和极端梯度增强回归算法。结果:共纳入520例机器人腹疝患者。患者中位年龄56岁,男性占52.7%,中位体重指数31.9 kg/m2。92.7%的患者至少有一种合并症。出院时出现并发症33例(6.3%)。机器学习模型在预测并发症的客观性能指标上的准确率为0.95,精度为0.92,召回率为0.95,F1为0.92,出院时Clavien-Dindo分级的准确率为0.95,精度为0.95,召回率为0.95,F1为0.94。对排名靠前的因素进行专题分析,包括操作者特定的客观表现指标以及通常与疝气并发症相关的患者因素。结论:本研究展示了机器学习建模的新应用,将客观性能指标和临床患者因素与术后临床结果联系起来,证明了动态术中外科医生因素与临床结果的相关性。
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来源期刊
BJS Open
BJS Open SURGERY-
CiteScore
6.00
自引率
3.20%
发文量
144
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