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机器学习分类器,用于识别多发性硬化症中与残疾进展相关的临床和影像学特征。

Machine learning classifier to identify clinical and radiological features relevant to disability progression in multiple sclerosis.

机构信息

Department of Human Neurosciences, Sapienza University of Rome, Viale dell'Università, 30, 00185, Rome, Italy.

Dipartimento di Scienze Biomediche Avanzate, Università degli Studi di Napoli Federico II, Naples, Italy.

出版信息

J Neurol. 2021 Dec;268(12):4834-4845. doi: 10.1007/s00415-021-10605-7. Epub 2021 May 10.

Abstract

OBJECTIVES

To evaluate the accuracy of a data-driven approach, such as machine learning classification, in predicting disability progression in MS.

METHODS

We analyzed structural brain images of 163 subjects diagnosed with MS acquired at two different sites. Participants were followed up for 2-6 years, with disability progression defined according to the expanded disability status scale (EDSS) increment at follow-up. T2-weighted lesion load (T2LL), thalamic and cerebellar gray matter (GM) volumes, fractional anisotropy of the normal appearing white matter were calculated at baseline and included in supervised machine learning classifiers. Age, sex, phenotype, EDSS at baseline, therapy and time to follow-up period were also included. Classes were labeled as stable or progressed disability. Participants were randomly chosen from both sites to build a sample including 50% patients showing disability progression and 50% patients being stable. One-thousand machine learning classifiers were applied to the resulting sample, and after testing for overfitting, classifier confusion matrix, relative metrics and feature importance were evaluated.

RESULTS

At follow-up, 36% of participants showed disability progression. The classifier with the highest resulting metrics had accuracy of 0.79, area under the true positive versus false positive rates curve of 0.81, sensitivity of 0.90 and specificity of 0.71. T2LL, thalamic volume, disability at baseline and administered therapy were identified as important features in predicting disability progression. Classifiers built on radiological features had higher accuracy than those built on clinical features.

CONCLUSIONS

Disability progression in MS may be predicted via machine learning classifiers, mostly evaluating neuroradiological features.

摘要

目的

评估数据驱动方法(如机器学习分类)预测 MS 残疾进展的准确性。

方法

我们分析了在两个不同地点诊断为 MS 的 163 名受试者的结构脑图像。参与者随访 2-6 年,根据随访时扩展残疾状况量表(EDSS)的增加来定义残疾进展。在基线时计算 T2 加权病变负荷(T2LL)、丘脑和小脑灰质(GM)体积、正常表现白质的各向异性分数,并包含在监督机器学习分类器中。还包括年龄、性别、表型、基线时的 EDSS、治疗和随访时间。将类别标记为稳定或进展性残疾。从两个地点随机选择参与者,构建一个包含 50%残疾进展患者和 50%稳定患者的样本。将 1000 个机器学习分类器应用于得到的样本,在测试过度拟合后,评估分类器混淆矩阵、相对指标和特征重要性。

结果

随访时,36%的参与者出现残疾进展。具有最高结果指标的分类器的准确性为 0.79,真阳性与假阳性率曲线下面积为 0.81,敏感性为 0.90,特异性为 0.71。T2LL、丘脑体积、基线时的残疾和给予的治疗被确定为预测残疾进展的重要特征。基于放射学特征构建的分类器比基于临床特征构建的分类器具有更高的准确性。

结论

通过机器学习分类器可以预测 MS 的残疾进展,主要评估神经影像学特征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b625/8563671/2ae8cb628969/415_2021_10605_Fig1_HTML.jpg

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