Application Of Graph Theory Features For The Objective Diagnosis Of Depressive Patients With Or Without Anxiety: An Rs-Fmri Study

PROCEEDINGS OF THE 2016 INTERNATIONAL CONFERENCE ON BIOLOGICAL SCIENCES AND TECHNOLOGY(2016)

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摘要
Purposes: To probe abnormality that may lead to anxiety in depressive patients. Procedures: This study investigated the graph theory features ahead of machine learning feature selection procedure. Classification methods were applied afterwards. Methods: Graph theory, statistical analysis and forward sequential feature selection were combined to find features. SVM classifier was also involved. Results: 1 global and 22 local features were found correlated with clinical anxiety factor. Conclusions: Anxiety is correlated with emotion and cognitive loop and other regions.
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关键词
Rs-fMRI, MDD, Anxiety, Graph theory, Machine learning
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