Early identification of Parkinson's disease with anxiety based on combined clinical and MRI features

To identify cortical and subcortical volume, thickness and cortical area features and the networks they constituted related to anxiety in Parkinson's disease (PD) using structural magnetic resonance imaging (sMRI), and to integrate multimodal features based on machine learning to identify PD-re...

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Published in:Frontiers in aging neuroscience Vol. 16; p. 1414855
Main Authors: Jia, Min, Yang, Shijun, Li, Shanshan, Chen, Siying, Wu, Lishuang, Li, Jinlan, Wang, Hanlin, Wang, Congping, Liu, Qunhui, Wu, Kemei
Format: Journal Article
Language:English
Published: Switzerland Frontiers Media S.A 05-06-2024
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Summary:To identify cortical and subcortical volume, thickness and cortical area features and the networks they constituted related to anxiety in Parkinson's disease (PD) using structural magnetic resonance imaging (sMRI), and to integrate multimodal features based on machine learning to identify PD-related anxiety. A total of 219 patients with PD were retrospectively enrolled in the study. 291 sMRI features including cortical volume, subcortical volume, cortical thickness, and cortical area, as well as 17 clinical features, were extracted. Graph theory analysis was used to explore structural networks. A support vector machine (SVM) combination model, which used both sMRI and clinical features to identify participants with PD-related anxiety, was developed and evaluated. The performance of SVM models were evaluated. The mean impact value (MIV) of the feature importance evaluation algorithm was used to rank the relative importance of sMRI features and clinical features within the model. 17 significant sMRI variables associated with PD-related anxiety was used to build a brain structural network. And seven sMRI and 5 clinical features with statistically significant differences were incorporated into the SVM model. The comprehensive model achieved higher performance than clinical features or sMRI features did alone, with an accuracy of 0.88, a precision of 0.86, a sensitivity of 0.81, an F1-Score of 0.83, a macro-average of 0.85, a weighted-average of 0.92, an AUC of 0.88, and a result of 10-fold cross-validation of 0.91 in test set. The sMRI feature right medialorbitofrontal thickness had the highest impact on the prediction model. We identified the brain structural features and networks related to anxiety in PD, and developed and internally validated a comprehensive model with multimodal features in identifying.
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Edited by: Oscar Arias-Carrión, Hospital General Dr. Manuel Gea Gonzalez, Mexico
Reviewed by: Benito de Celis Alonso, Meritorious Autonomous University of Puebla, Mexico
These authors have contributed equally to this work
Guillaume Carey, INSERM UMR1172 Lille Neurosciences et Cognition, France
ISSN:1663-4365
1663-4365
DOI:10.3389/fnagi.2024.1414855