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Graph Theory-Based Brain Connectivity for Automatic Classification of Multiple Sclerosis Clinical Courses

机译:基于图论的大脑连接性用于多发性硬化症临床课程的自动分类

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摘要

>Purpose: In this work, we introduce a method to classify Multiple Sclerosis (MS) patients into four clinical profiles using structural connectivity information. For the first time, we try to solve this question in a fully automated way using a computer-based method. The main goal is to show how the combination of graph-derived metrics with machine learning techniques constitutes a powerful tool for a better characterization and classification of MS clinical profiles.>Materials and Methods: Sixty-four MS patients [12 Clinical Isolated Syndrome (CIS), 24 Relapsing Remitting (RR), 24 Secondary Progressive (SP), and 17 Primary Progressive (PP)] along with 26 healthy controls (HC) underwent MR examination. T1 and diffusion tensor imaging (DTI) were used to obtain structural connectivity matrices for each subject. Global graph metrics, such as density and modularity, were estimated and compared between subjects' groups. These metrics were further used to classify patients using tuned Support Vector Machine (SVM) combined with Radial Basic Function (RBF) kernel.>Results: When comparing MS patients to HC subjects, a greater assortativity, transitivity, and characteristic path length as well as a lower global efficiency were found. Using all graph metrics, the best F-Measures (91.8, 91.8, 75.6, and 70.6%) were obtained for binary (HC-CIS, CIS-RR, RR-PP) and multi-class (CIS-RR-SP) classification tasks, respectively. When using only one graph metric, the best F-Measures (83.6, 88.9, and 70.7%) were achieved for modularity with previous binary classification tasks.>Conclusion: Based on a simple DTI acquisition associated with structural brain connectivity analysis, this automatic method allowed an accurate classification of different MS patients' clinical profiles.
机译:>目的:在这项工作中,我们介绍了一种使用结构连通性信息将多发性硬化症(MS)患者分为四个临床特征的方法。我们首次尝试使用基于计算机的方法以全自动方式解决此问题。主要目标是展示将图派生指标与机器学习技术相结合如何构成用于更好地表征和分类MS临床资料的强大工具。>材料和方法: 64位MS患者[对12例临床孤立综合征(CIS),24例复发缓解(RR),24例继发进行性(SP)和17例进行性进展(PP)以及26位健康对照(HC)进行了MR检查。 T1和扩散张量成像(DTI)用于获得每个受试者的结构连接性矩阵。估计并比较了受试者组之间的全局图形度量,例如密度和模块化。这些指标还用于结合调整后的支持向量机(SVM)和径向基函数(RBF)核对患者进行分类。>结果:将MS患者与HC对象进行比较时,分类性,传递性和发现了特征路径长度以及较低的整体效率。使用所有图形指标,对于二进制(HC-CIS,CIS-RR,RR-PP)和多类(CIS-RR-SP)分类,获得了最佳F度量(91.8、91.8、75.6和70.6%)任务。当仅使用一个图形指标时,与以前的二进制分类任务相比,模块化程度达到了最佳F度量(83.6、88.9和70.7%)。>结论:基于与结构性大脑相关的简单DTI采集连接性分析,这种自动方法可以对不同MS患者的临床概况进行准确分类。

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