预测肝硬化患者食管静脉曲张出血风险/等级的机器学习模型系统综述:全面的方法学分析

IF 3.7 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Sheza Malik, Bettina Gabrielle Tenorio, Vishali Moond, Dushyant Singh Dahiya, Ravi Vora, Nader Dbouk
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引用次数: 0

摘要

肝硬化食管静脉曲张(EV)具有很高的致死风险。传统的内窥镜检查成本高昂且主观性强,这促使人们转向机器学习(ML)。本综述对 ML 在肝硬化患者出血风险预测和 EV 分级中的应用进行了严格评估。根据PRISMA(系统综述和荟萃分析首选报告项目)指南,我们对使用ML预测肝病患者静脉曲张出血风险和/或对EV进行分级的研究进行了系统综述。数据提取和偏倚评估分别遵循了CHARMS(预测模型研究系统性综述的关键评估和数据提取清单)清单和PROBAST(预测模型偏倚风险评估工具)工具。由于研究存在异质性,因此无法进行荟萃分析,只能通过描述性统计来总结研究结果。共纳入了 12 项研究,突出强调了各种 ML 模型的使用,如极端梯度提升、人工神经网络和卷积神经网络。这些研究显示了很高的预测准确性,一些模型的曲线下面积值超过了 99%。然而,在输入变量、方法和结果测量方面存在明显的异质性。此外,相当一部分研究显示出不明确或高风险的偏倚,主要原因是参与人数不足、对缺失数据的处理不明确以及缺乏对内窥镜手术的详细报告。ML 模型在预测肝硬化患者静脉曲张出血风险和对 EV 进行分级方面显示出巨大的潜力,有可能减少对侵入性手术的需求。尽管如此,目前的文献显示出相当大的异质性和方法学局限性,包括偏倚风险高或不明确。未来的研究应侧重于更大规模的前瞻性试验和 ML 评估标准的标准化,以确认这些模型在临床环境中的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Systematic review of machine learning models in predicting the risk of bleed/grade of esophageal varices in patients with liver cirrhosis: A comprehensive methodological analysis.

Esophageal varices (EV) in liver cirrhosis carry high mortality risks. Traditional endoscopy, which is costly and subjective, prompts a shift towards machine learning (ML). This review critically evaluates ML applications in predicting bleeding risks and grading EV in patients with liver cirrhosis. Following the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines, we conducted a systematic review of studies using ML to predict the risk of variceal bleeding and/or grade EV in liver disease patients. Data extraction and bias assessment followed the CHARMS (CHecklist for critical Appraisal and data extraction for systematic Reviews of prediction Modeling Studies) checklist and PROBAST (Prediction model Risk Of Bias Assessment Tool) tool, respectively. Due to the heterogeneity of the study, a meta-analysis was not feasible; instead, descriptive statistics summarized the findings. Twelve studies were included, highlighting the use of various ML models such as extreme gradient boosting, artificial neural networks, and convolutional neural networks. These studies demonstrated high predictive accuracy, with some models achieving area under the curve values above 99%. However, significant heterogeneity was noted in input variables, methodologies, and outcome measures. Moreover, a substantial portion of the studies exhibited unclear or high risk of bias, mainly due to insufficient participant numbers, unclear handling of missing data, and a lack of detailed reporting on endoscopic procedures. ML models show significant promise in predicting the risk of variceal bleeding and grading EV in patients with cirrhosis, potentially reducing the need for invasive procedures. Nonetheless, the current literature reveals considerable heterogeneity and methodological limitations, including high or unclear risks of bias. Future research should focus on larger, prospective trials and the standardization of ML assessment criteria to confirm these models' practical utility in clinical settings.

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来源期刊
CiteScore
7.90
自引率
2.40%
发文量
326
审稿时长
2.3 months
期刊介绍: Journal of Gastroenterology and Hepatology is produced 12 times per year and publishes peer-reviewed original papers, reviews and editorials concerned with clinical practice and research in the fields of hepatology, gastroenterology and endoscopy. Papers cover the medical, radiological, pathological, biochemical, physiological and historical aspects of the subject areas. All submitted papers are reviewed by at least two referees expert in the field of the submitted paper.
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