An update on the role of magnetic resonance imaging in predicting and monitoring multiple sclerosis progression.

IF 3.4 2区 医学 Q2 CLINICAL NEUROLOGY
Expert Review of Neurotherapeutics Pub Date : 2024-02-01 Epub Date: 2024-02-06 DOI:10.1080/14737175.2024.2304116
Piriyankan Ananthavarathan, Nitin Sahi, Declan T Chard
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引用次数: 0

Abstract

Introduction: While magnetic resonance imaging (MRI) is established in diagnosing and monitoring disease activity in multiple sclerosis (MS), its utility in predicting and monitoring disease progression is less clear.

Areas covered: The authors consider changing concepts in the phenotypic classification of MS, including progression independent of relapses; pathological processes underpinning progression; advances in MRI measures to assess them; how well MRI features explain and predict clinical outcomes, including models that assess disease effects on neural networks, and the potential role for machine learning.

Expert opinion: Relapsing-remitting and progressive MS have evolved from being viewed as mutually exclusive to having considerable overlap. Progression is likely the consequence of several pathological elements, each important in building more holistic prognostic models beyond conventional phenotypes. MRI is well placed to assess pathogenic processes underpinning progression, but we need to bridge the gap between MRI measures and clinical outcomes. Mapping pathological effects on specific neural networks may help and machine learning methods may be able to optimize predictive markers while identifying new, or previously overlooked, clinically relevant features. The ever-increasing ability to measure features on MRI raises the dilemma of what to measure and when, and the challenge of translating research methods into clinically useable tools.

磁共振成像在预测和监测多发性硬化症进展方面的最新作用。
导言:虽然磁共振成像(MRI)在诊断和监测多发性硬化症(MS)的疾病活动方面已得到证实,但其在预测和监测疾病进展方面的作用却不太明确:作者考虑了多发性硬化症表型分类中不断变化的概念,包括独立于复发的疾病进展;支撑疾病进展的病理过程;评估这些过程的 MRI 测量方法的进展;MRI 特征对临床结果的解释和预测能力,包括评估疾病对神经网络影响的模型,以及机器学习的潜在作用:专家观点:复发性多发性硬化症和进展性多发性硬化症已从相互排斥发展到相当程度的重叠。病情进展可能是多种病理因素共同作用的结果,每种因素对于建立超越传统表型的更全面的预后模型都非常重要。磁共振成像非常适合评估导致病情进展的病理过程,但我们需要弥合磁共振成像测量与临床结果之间的差距。将病理效应映射到特定的神经网络可能会有所帮助,机器学习方法可能能够优化预测标记,同时识别新的或以前被忽视的临床相关特征。测量磁共振成像特征的能力不断提高,这就提出了一个难题:测量什么、何时测量,以及将研究方法转化为临床可用工具的挑战。
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
Expert Review of Neurotherapeutics
Expert Review of Neurotherapeutics Medicine-Neurology (clinical)
CiteScore
7.00
自引率
2.30%
发文量
61
审稿时长
4-8 weeks
期刊介绍: Expert Review of Neurotherapeutics (ISSN 1473-7175) provides expert reviews on the use of drugs and medicines in clinical neurology and neuropsychiatry. Coverage includes disease management, new medicines and drugs in neurology, therapeutic indications, diagnostics, medical treatment guidelines and neurological diseases such as stroke, epilepsy, Alzheimer''s and Parkinson''s. Comprehensive coverage in each review is complemented by the unique Expert Review format and includes the following sections: Expert Opinion - a personal view of the data presented in the article, a discussion on the developments that are likely to be important in the future, and the avenues of research likely to become exciting as further studies yield more detailed results Article Highlights – an executive summary of the author’s most critical points
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