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

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 combinati...

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Veröffentlicht in:Frontiers in neuroscience 2016-10, Vol.10, p.478-478
Hauptverfasser: Kocevar, Gabriel, Stamile, Claudio, Hannoun, Salem, Cotton, François, Vukusic, Sandra, Durand-Dubief, Françoise, Sappey-Marinier, Dominique
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Sprache:eng
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Zusammenfassung: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. 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. 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 -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 -Measures (83.6, 88.9, and 70.7%) were achieved for modularity with previous binary classification tasks. 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.
ISSN:1662-4548
1662-453X
1662-453X
DOI:10.3389/fnins.2016.00478