Predicting multiple sclerosis disease progression and outcomes with machine learning and MRI-based biomarkers: a review

IF 4.8 2区 医学 Q1 CLINICAL NEUROLOGY
Hibba Yousef, Brigitta Malagurski Tortei, Filippo Castiglione
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引用次数: 0

Abstract

Multiple sclerosis (MS) is a demyelinating neurological disorder with a highly heterogeneous clinical presentation and course of progression. Disease-modifying therapies are the only available treatment, as there is no known cure for the disease. Careful selection of suitable therapies is necessary, as they can be accompanied by serious risks and adverse effects such as infection. Magnetic resonance imaging (MRI) plays a central role in the diagnosis and management of MS, though MRI lesions have displayed only moderate associations with MS clinical outcomes, known as the clinico-radiological paradox. With the advent of machine learning (ML) in healthcare, the predictive power of MRI can be improved by leveraging both traditional and advanced ML algorithms capable of analyzing increasingly complex patterns within neuroimaging data. The purpose of this review was to examine the application of MRI-based ML for prediction of MS disease progression. Studies were divided into five main categories: predicting the conversion of clinically isolated syndrome to MS, cognitive outcome, EDSS-related disability, motor disability and disease activity. The performance of ML models is discussed along with highlighting the influential MRI-derived biomarkers. Overall, MRI-based ML presents a promising avenue for MS prognosis. However, integration of imaging biomarkers with other multimodal patient data shows great potential for advancing personalized healthcare approaches in MS.

Abstract Image

利用机器学习和基于磁共振成像的生物标记预测多发性硬化症的病情发展和预后:综述
多发性硬化症(MS)是一种脱髓鞘神经系统疾病,其临床表现和进展过程具有高度异质性。由于目前尚无根治该病的方法,因此改变病情疗法是唯一可用的治疗方法。有必要谨慎选择合适的疗法,因为这些疗法可能伴随着严重的风险和不良反应,如感染。磁共振成像(MRI)在多发性硬化症的诊断和管理中发挥着核心作用,但磁共振成像病变与多发性硬化症临床结果的关联度不高,这就是所谓的临床放射学悖论。随着机器学习(ML)在医疗保健领域的应用,通过利用传统和先进的 ML 算法(能够分析神经影像数据中日益复杂的模式),MRI 的预测能力可以得到提高。本综述旨在研究基于 MRI 的 ML 在预测多发性硬化症疾病进展方面的应用。研究分为五大类:预测临床孤立综合征向多发性硬化症的转化、认知结果、EDSS 相关残疾、运动残疾和疾病活动。在讨论 ML 模型性能的同时,还强调了有影响力的 MRI 衍生生物标记物。总之,基于 MRI 的 ML 为多发性硬化症的预后诊断提供了一条很有前景的途径。然而,成像生物标志物与其他多模态患者数据的整合显示了推进多发性硬化症个性化医疗方法的巨大潜力。
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来源期刊
Journal of Neurology
Journal of Neurology 医学-临床神经学
CiteScore
10.00
自引率
5.00%
发文量
558
审稿时长
1 months
期刊介绍: The Journal of Neurology is an international peer-reviewed journal which provides a source for publishing original communications and reviews on clinical neurology covering the whole field. In addition, Letters to the Editors serve as a forum for clinical cases and the exchange of ideas which highlight important new findings. A section on Neurological progress serves to summarise the major findings in certain fields of neurology. Commentaries on new developments in clinical neuroscience, which may be commissioned or submitted, are published as editorials. Every neurologist interested in the current diagnosis and treatment of neurological disorders needs access to the information contained in this valuable journal.
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