用于预测减肥手术 30 天并发症的先进非线性建模和可解释人工智能技术:单中心研究

IF 2.9 3区 医学 Q1 SURGERY
Nicolas Zucchini, Eugenia Capozzella, Mauro Giuffrè, Manuela Mastronardi, Biagio Casagranda, Saveria Lory Crocè, Nicolò de Manzini, Silvia Palmisano
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引用次数: 0

摘要

目的代谢减肥手术(MBS)已成为控制严重肥胖不可或缺的手段。了解与代谢减重手术相关的手术风险至关重要。不同的评分标准,如代谢与减肥手术认证和质量改进计划(MBSAQIP),有助于患者选择和结果预测。本研究旨在评估机器学习(ML)模型在预测术后 30 天并发症方面的性能,并将其与 MBSAQIP 风险评分进行比较。我们分析了包括逻辑回归、支持向量机、随机森林、k-近邻、多层感知器和极梯度提升等在内的多重L模型,并将其与MBSAQIP风险评分进行了比较。结果随机森林在训练集(AUROC = 0.94)和验证集(AUROC = 0.88)中显示出最高的 AUROC。在训练集和验证集中,ML 算法(尤其是随机森林算法)在预测 30 天负结果方面的表现优于 MBSAQIP(AUROC = 0.64,DeLong's Test p < 0.001)。与随机森林模型预测更相关的五个特征是血清碱性磷酸酶、血小板计数、甘油三酯、糖化血红蛋白和白蛋白。在这些模型中,随机森林是最有效的一种,其效果优于已经建立的 MBSAQIP 评分。该模型可在 MBS 前提高对高危患者的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advanced Non-linear Modeling and Explainable Artificial Intelligence Techniques for Predicting 30-Day Complications in Bariatric Surgery: A Single-Center Study

Advanced Non-linear Modeling and Explainable Artificial Intelligence Techniques for Predicting 30-Day Complications in Bariatric Surgery: A Single-Center Study

Purpose

Metabolic bariatric surgery (MBS) became integral to managing severe obesity. Understanding surgical risks associated with MBS is crucial. Different scores, such as the Metabolic and Bariatric Surgery Accreditation and Quality Improvement Program (MBSAQIP), aid in patient selection and outcome prediction. This study aims to evaluate machine learning (ML) models performance in predicting 30-day post-operative complications and compare them with the MBSAQIP risk score.

Materials and Methods

We retrospectively evaluated 424 consecutive patients (2006–2020) who underwent MBS, analyzing 30-day surgical complications according to Clavien-Dindo Classification. ML models, including logistic regression, support vector machine, random forest, k-nearest neighbors, multi-layer perceptron, and extreme gradient boosting, were analyzed and compared to MBSAQIP risk score. Performance was measured by area under receiver operating characteristic curve (AUROC) analysis.

Results

Random forest showed the highest AUROC in the training (AUROC = 0.94) and the validation set (AUROC = 0.88). ML algorithms, particularly random forest, outperformed MBSAQIP in predicting negative 30-day outcomes in both the training and validation sets (AUROC = 0.64, DeLong’s Test p < 0.001). The five features that were more relevant for the prediction of the random forest model were serum alkaline phosphatase, platelet count, triglycerides, glycated hemoglobin, and albumin.

Conclusion

We developed several ML model that identifies patients at risk for 30-day complications after MBS. Among these, random forest is the most performing one and outperforms the already established MBSAQIP score. This model could increase the identification of high-risk patients before MBS.

Graphical Abstract

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来源期刊
Obesity Surgery
Obesity Surgery 医学-外科
CiteScore
5.80
自引率
24.10%
发文量
567
审稿时长
3-6 weeks
期刊介绍: Obesity Surgery is the official journal of the International Federation for the Surgery of Obesity and metabolic disorders (IFSO). A journal for bariatric/metabolic surgeons, Obesity Surgery provides an international, interdisciplinary forum for communicating the latest research, surgical and laparoscopic techniques, for treatment of massive obesity and metabolic disorders. Topics covered include original research, clinical reports, current status, guidelines, historical notes, invited commentaries, letters to the editor, medicolegal issues, meeting abstracts, modern surgery/technical innovations, new concepts, reviews, scholarly presentations and opinions. Obesity Surgery benefits surgeons performing obesity/metabolic surgery, general surgeons and surgical residents, endoscopists, anesthetists, support staff, nurses, dietitians, psychiatrists, psychologists, plastic surgeons, internists including endocrinologists and diabetologists, nutritional scientists, and those dealing with eating disorders.
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