ISLA, Computer Science Faculty, A Coruna University, A Coruña.
Department of Neurology, University Hospital '12 de Octubre', Madrid.
Eur J Neurol. 2019 Jul;26(7):1000-1005. doi: 10.1111/ene.13923. Epub 2019 Mar 1.
The unanticipated detection by magnetic resonance imaging (MRI) in the brain of asymptomatic subjects of white matter lesions suggestive of multiple sclerosis (MS) has been named radiologically isolated syndrome (RIS). As the difference between early MS [i.e. clinically isolated syndrome (CIS)] and RIS is the occurrence of a clinical event, it is logical to improve detection of the subclinical form without interfering with MRI as there are radiological diagnostic criteria for that. Our objective was to use machine-learning classification methods to identify morphometric measures that help to discriminate patients with RIS from those with CIS.
We used a multimodal 3-T MRI approach by combining MRI biomarkers (cortical thickness, cortical and subcortical grey matter volume, and white matter integrity) of a cohort of 17 patients with RIS and 17 patients with CIS for single-subject level classification.
The best proposed models to predict the diagnosis of CIS and RIS were based on the Naive Bayes, Bagging and Multilayer Perceptron classifiers using only three features: the left rostral middle frontal gyrus volume and the fractional anisotropy values in the right amygdala and right lingual gyrus. The Naive Bayes obtained the highest accuracy [overall classification, 0.765; area under the receiver operating characteristic (AUROC), 0.782].
A machine-learning approach applied to multimodal MRI data may differentiate between the earliest clinical expressions of MS (CIS and RIS) with an accuracy of 78%.
磁共振成像(MRI)在无症状受试者大脑中意外检测到多发性硬化症(MS)的白质病变提示称为影像学孤立综合征(RIS)。由于早期 MS [即临床孤立综合征(CIS)]与 RIS 的区别在于临床事件的发生,因此在不干扰 MRI 的情况下提高亚临床形式的检测是合理的,因为有放射学诊断标准。我们的目的是使用机器学习分类方法来识别形态计量学指标,以帮助区分 RIS 患者和 CIS 患者。
我们使用多模态 3T MRI 方法,通过将 17 例 RIS 患者和 17 例 CIS 患者的 MRI 生物标志物(皮质厚度、皮质和皮质下灰质体积以及白质完整性)相结合,进行单个体水平分类。
预测 CIS 和 RIS 诊断的最佳提出模型基于朴素贝叶斯、袋装和多层感知机分类器,仅使用三个特征:左侧额中回的体积和右侧杏仁核和右侧舌回的各向异性分数值。朴素贝叶斯获得了最高的准确性[总体分类,0.765;接收器工作特征(AUROC)曲线下面积,0.782]。
应用于多模态 MRI 数据的机器学习方法可以以 78%的准确率区分 MS 的最早临床表达(CIS 和 RIS)。