Unsupervised machine learning highlights the challenges of subtyping disorders of gut-brain interaction.

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Jarrah M Dowrick, Nicole C Roy, Simone Bayer, Chris M A Frampton, Nicholas J Talley, Richard B Gearry, Timothy R Angeli-Gordon
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引用次数: 0

Abstract

Background: Unsupervised machine learning describes a collection of powerful techniques that seek to identify hidden patterns in unlabeled data. These techniques can be broadly categorized into dimension reduction, which transforms and combines the original set of measurements to simplify data, and cluster analysis, which seeks to group subjects based on some measure of similarity. Unsupervised machine learning can be used to explore alternative subtyping of disorders of gut-brain interaction (DGBI) compared to the existing gastrointestinal symptom-based definitions of Rome IV.

Purpose: This present review aims to familiarize the reader with fundamental concepts of unsupervised machine learning using accessible definitions and provide a critical summary of their application to the evaluation of DGBI subtyping. By considering the overlap between Rome IV clinical definitions and identified clusters, along with clinical and physiological insights, this paper speculates on the possible implications for DGBI. Also considered are algorithmic developments in the unsupervised machine learning community that may help leverage increasingly available omics data to explore biologically informed definitions. Unsupervised machine learning challenges the modern subtyping of DGBI and, with the necessary clinical validation, has the potential to enhance future iterations of the Rome criteria to identify more homogeneous, diagnosable, and treatable patient populations.

无监督机器学习凸显了对肠脑相互作用疾病进行亚型分类的挑战。
背景介绍无监督机器学习(Unsupervised Machine Learning)描述了一系列功能强大的技术,旨在识别无标记数据中隐藏的模式。这些技术大致可分为降维技术和聚类分析技术,前者对原始测量数据集进行转换和组合,以简化数据,后者则试图根据某种相似度量对受试者进行分组。与现有的基于胃肠道症状的罗马IV定义相比,无监督机器学习可用于探索肠脑交互障碍(DGBI)的其他亚型。目的:本综述旨在让读者熟悉无监督机器学习的基本概念,使用易于理解的定义,并对其在DGBI亚型评估中的应用进行批判性总结。通过考虑罗马IV临床定义与已识别群组之间的重叠以及临床和生理学见解,本文推测了对DGBI可能产生的影响。此外,本文还探讨了无监督机器学习领域的算法发展,这些算法可能有助于利用越来越多的omics数据来探索生物学定义。无监督机器学习对 DGBI 的现代亚型划分提出了挑战,在进行必要的临床验证后,有可能加强罗马标准的未来迭代,从而识别出更加同质、可诊断和可治疗的患者群体。
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
Neurogastroenterology and Motility
Neurogastroenterology and Motility 医学-临床神经学
CiteScore
7.80
自引率
8.60%
发文量
178
审稿时长
3-6 weeks
期刊介绍: Neurogastroenterology & Motility (NMO) is the official Journal of the European Society of Neurogastroenterology & Motility (ESNM) and the American Neurogastroenterology and Motility Society (ANMS). It is edited by James Galligan, Albert Bredenoord, and Stephen Vanner. The editorial and peer review process is independent of the societies affiliated to the journal and publisher: Neither the ANMS, the ESNM or the Publisher have editorial decision-making power. Whenever these are relevant to the content being considered or published, the editors, journal management committee and editorial board declare their interests and affiliations.
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