Recent advances in machine learning for precision diagnosis and treatment of esophageal disorders.

IF 5.4 3区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
Shao-Wen Liu, Peng Li, Xiao-Qing Li, Qi Wang, Jin-Yu Duan, Jin Chen, Ru-Hong Li, Yang-Fan Guo
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引用次数: 0

Abstract

The complex pathophysiology and diverse manifestations of esophageal disorders pose challenges in clinical practice, particularly in achieving accurate early diagnosis and risk stratification. While traditional approaches rely heavily on subjective interpretations and variable expertise, machine learning (ML) has emerged as a transformative tool in healthcare. We conducted a comprehensive review of published literature on ML applications in esophageal diseases, analyzing technical approaches, validation methods, and clinical outcomes. ML demonstrates superior performance: In gastroesophageal reflux disease, ML models achieve 80%-90% accuracy in potential of hydrogen-impedance analysis and endoscopic grading; for Barrett's esophagus, ML-based approaches show 88%-95% accuracy in invasive diagnostics and 77%-85% accuracy in non-invasive screening. In esophageal cancer, ML improves early detection and survival prediction by 6%-10% compared to traditional methods. Novel applications in achalasia and esophageal varices demonstrate promising results in automated diagnosis and risk stratification, with accuracy rates exceeding 85%. While challenges persist in data standardization, model interpretability, and clinical integration, emerging solutions in federated learning and explainable artificial intelligence offer promising pathways forward. The continued evolution of these technologies, coupled with rigorous validation and thoughtful implementation, may fundamentally transform our approach to esophageal disease management in the era of precision medicine.

机器学习在食道疾病精准诊断和治疗中的最新进展。
食管疾病复杂的病理生理和多样的表现给临床实践带来了挑战,特别是在实现准确的早期诊断和风险分层方面。虽然传统方法严重依赖于主观解释和可变专业知识,但机器学习(ML)已成为医疗保健领域的变革性工具。我们对ML在食道疾病中的应用发表的文献进行了全面的回顾,分析了技术途径、验证方法和临床结果。ML表现出优越的性能:在胃食管反流疾病中,ML模型在氢阻抗电位分析和内镜分级方面的准确率达到80%-90%;对于Barrett食管,基于ml的方法在侵入性诊断中准确率为88%-95%,在非侵入性筛查中准确率为77%-85%。在食管癌中,与传统方法相比,ML可使早期发现和生存预测提高6%-10%。在贲门失弛缓症和食管静脉曲张的自动诊断和风险分层方面的新应用显示出有希望的结果,准确率超过85%。虽然在数据标准化、模型可解释性和临床集成方面存在挑战,但联邦学习和可解释人工智能方面的新兴解决方案为未来提供了有希望的途径。这些技术的不断发展,加上严格的验证和周到的实施,可能会从根本上改变我们在精准医学时代的食道疾病管理方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
World Journal of Gastroenterology
World Journal of Gastroenterology 医学-胃肠肝病学
CiteScore
7.80
自引率
4.70%
发文量
464
审稿时长
2.4 months
期刊介绍: The primary aims of the WJG are to improve diagnostic, therapeutic and preventive modalities and the skills of clinicians and to guide clinical practice in gastroenterology and hepatology.
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