Department of Informatics Engineering, Centre for Informatics and Systems of the University of Coimbra, University of Coimbra, Coimbra, Portugal.
Neurology Department of Centro Hospitalar e Universitário de Coimbra, Coimbra, Portugal.
Sci Rep. 2020 Dec 3;10(1):21038. doi: 10.1038/s41598-020-78212-6.
Multiple Sclerosis is a chronic inflammatory disease, affecting the Central Nervous System and leading to irreversible neurological damage, such as long term functional impairment and disability. It has no cure and the symptoms vary widely, depending on the affected regions, amount of damage, and the ability to activate compensatory mechanisms, which constitutes a challenge to evaluate and predict its course. Additionally, relapsing-remitting patients can evolve its course into a secondary progressive, characterized by a slow progression of disability independent of relapses. With clinical information from Multiple Sclerosis patients, we developed a machine learning exploration framework concerning this disease evolution, more specifically to obtain three predictions: one on conversion to secondary progressive course and two on disease severity with rapid accumulation of disability, concerning the 6th and 10th years of progression. For the first case, the best results were obtained within two years: AUC=[Formula: see text], sensitivity=[Formula: see text] and specificity=[Formula: see text]; and for the second, the best results were obtained for the 6th year of progression, also within two years: AUC=[Formula: see text], sensitivity=[Formula: see text], and specificity=[Formula: see text]. The Expanded Disability Status Scale value, the majority of functional systems, affected functions during relapses, and age at onset were described as the most predictive features. These results demonstrate the possibility of predicting Multiple Sclerosis progression by using machine learning, which may help to understand this disease's dynamics and thus, advise physicians on medication intake.
多发性硬化症是一种慢性炎症性疾病,影响中枢神经系统,导致不可逆转的神经损伤,如长期功能障碍和残疾。它没有治愈方法,症状差异很大,取决于受影响的区域、损伤程度和激活代偿机制的能力,这对评估和预测其病程构成了挑战。此外,复发缓解型患者的病程可能会发展为继发性进展型,其特点是残疾的缓慢进展与复发无关。我们从多发性硬化症患者的临床信息中开发了一个关于这种疾病演变的机器学习探索框架,更具体地说,是为了获得三个预测:一个是向继发性进展过程的转化,另两个是关于残疾快速积累的疾病严重程度,分别涉及进展的第 6 年和第 10 年。对于第一种情况,在两年内获得了最佳结果:AUC=[公式:见正文],敏感性=[公式:见正文],特异性=[公式:见正文];对于第二种情况,在进展的第 6 年内获得了最佳结果,也是在两年内:AUC=[公式:见正文],敏感性=[公式:见正文],特异性=[公式:见正文]。扩展残疾状况量表值、大多数功能系统、复发期间受影响的功能以及发病年龄被描述为最具预测性的特征。这些结果表明,通过使用机器学习预测多发性硬化症的进展是可能的,这可能有助于了解这种疾病的动态,从而为医生提供药物摄入建议。