Surgery, Amsterdam UMC Location Vrije Universiteit Amsterdam, De Boelelaan 1117, Amsterdam, The Netherlands.
Medical Library, Amsterdam UMC Location Vrije Universiteit Amsterdam, De Boelelaan 1117, Amsterdam, The Netherlands.
Surg Endosc. 2023 Jan;37(1):75-89. doi: 10.1007/s00464-022-09516-z. Epub 2022 Aug 11.
Machine learning (ML) has seen an increase in application, and is an important element of a digital evolution. The role of ML within upper gastrointestinal surgery for malignancies has not been evaluated properly in the literature. Therefore, this systematic review aims to provide a comprehensive overview of ML applications within upper gastrointestinal surgery for malignancies.
A systematic search was performed in PubMed, EMBASE, Cochrane, and Web of Science. Studies were only included when they described machine learning in upper gastrointestinal surgery for malignancies. The Cochrane risk-of-bias tool was used to determine the methodological quality of studies. The accuracy and area under the curve were evaluated, representing the predictive performances of ML models.
From a total of 1821 articles, 27 studies met the inclusion criteria. Most studies received a moderate risk-of-bias score. The majority of these studies focused on neural networks (n = 9), multiple machine learning (n = 8), and random forests (n = 3). Remaining studies involved radiomics (n = 3), support vector machines (n = 3), and decision trees (n = 1). Purposes of ML included predominantly prediction of metastasis, detection of risk factors, prediction of survival, and prediction of postoperative complications. Other purposes were predictions of TNM staging, chemotherapy response, tumor resectability, and optimal therapy.
Machine Learning algorithms seem to contribute to the prediction of postoperative complications and the course of disease after upper gastrointestinal surgery for malignancies. However, due to the retrospective character of ML studies, these results require trials or prospective studies to validate this application of ML.
机器学习(ML)的应用日益增多,是数字化发展的重要组成部分。然而,ML 在恶性上消化道手术中的作用尚未在文献中得到适当评估。因此,本系统综述旨在全面概述 ML 在恶性上消化道手术中的应用。
在 PubMed、EMBASE、Cochrane 和 Web of Science 中进行了系统搜索。只有当研究描述了恶性上消化道手术中的机器学习时,才将其纳入。使用 Cochrane 偏倚风险工具来确定研究的方法学质量。评估了准确性和曲线下面积,代表了 ML 模型的预测性能。
从总共 1821 篇文章中,有 27 篇研究符合纳入标准。大多数研究的偏倚风险评分中等。这些研究主要集中在神经网络(n=9)、多机器学习(n=8)和随机森林(n=3)上。其余研究涉及放射组学(n=3)、支持向量机(n=3)和决策树(n=1)。ML 的目的主要包括预测转移、检测危险因素、预测生存和预测术后并发症。其他目的包括预测 TNM 分期、化疗反应、肿瘤可切除性和最佳治疗。
机器学习算法似乎有助于预测恶性上消化道手术后的并发症和疾病进程。然而,由于 ML 研究的回顾性特征,这些结果需要试验或前瞻性研究来验证 ML 的这种应用。