Machine learning for refining interpretation of magnetic resonance imaging scans in the management of multiple sclerosis: a narrative review.

IF 2.9 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Royal Society Open Science Pub Date : 2025-01-22 eCollection Date: 2025-01-01 DOI:10.1098/rsos.241052
Adam C Szekely-Kohn, Marco Castellani, Daniel M Espino, Luca Baronti, Zubair Ahmed, William G K Manifold, Michael Douglas
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Abstract

Multiple sclerosis (MS) is an autoimmune disease of the brain and spinal cord with both inflammatory and neurodegenerative features. Although advances in imaging techniques, particularly magnetic resonance imaging (MRI), have improved the process of diagnosis, its cause is unknown, a cure remains elusive and the evidence base to guide treatment is lacking. Computational techniques like machine learning (ML) have started to be used to understand MS. Published MS MRI-based computational studies can be divided into five categories: automated diagnosis; differentiation between lesion types and/or MS stages; differential diagnosis; monitoring and predicting disease progression; and synthetic MRI dataset generation. Collectively, these approaches show promise in assisting with MS diagnosis, monitoring of disease activity and prediction of future progression, all potentially contributing to disease management. Analysis quality using ML is highly dependent on the dataset size and variability used for training. Wider public access would mean larger datasets for experimentation, resulting in higher-quality analysis, permitting for more conclusive research. This narrative review provides an outline of the fundamentals of MS pathology and pathogenesis, diagnostic techniques and data types in computational analysis, as well as collating literature pertaining to the application of computational techniques to MRI towards developing a better understanding of MS.

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在多发性硬化症的治疗中,用于改进磁共振成像扫描解释的机器学习:叙述性回顾。
多发性硬化症(MS)是一种大脑和脊髓的自身免疫性疾病,具有炎症和神经退行性特征。尽管成像技术的进步,特别是磁共振成像(MRI)改善了诊断过程,但其原因尚不清楚,治愈方法仍然难以捉摸,缺乏指导治疗的证据基础。像机器学习(ML)这样的计算技术已经开始被用来理解MS。已发表的基于MS mri的计算研究可以分为五类:自动诊断;病变类型和/或MS分期的区分;鉴别诊断;监测和预测疾病进展;合成MRI数据集生成。总的来说,这些方法在协助MS诊断,监测疾病活动和预测未来进展方面显示出希望,所有这些都可能有助于疾病管理。使用ML的分析质量高度依赖于用于训练的数据集大小和可变性。更广泛的公众访问将意味着更大的实验数据集,从而产生更高质量的分析,从而允许更结论性的研究。本文概述了多发性硬化症的基本病理和发病机制、诊断技术和计算分析中的数据类型,并整理了有关计算技术在MRI中的应用的文献,以更好地理解多发性硬化症。
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
Royal Society Open Science
Royal Society Open Science Multidisciplinary-Multidisciplinary
CiteScore
6.00
自引率
0.00%
发文量
508
审稿时长
14 weeks
期刊介绍: Royal Society Open Science is a new open journal publishing high-quality original research across the entire range of science on the basis of objective peer-review. The journal covers the entire range of science and mathematics and will allow the Society to publish all the high-quality work it receives without the usual restrictions on scope, length or impact.
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