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Identifying predictive biomarkers for repetitive transcranial magnetic stimulation response in depression patients with explainability.
Squires, Matthew; Tao, Xiaohui; Elangovan, Soman; Gururajan, Raj; Zhou, Xujuan; Li, Yuefeng; Acharya, U Rajendra.
Affiliation
  • Squires M; School of Mathematics, Physics and Computing, University of Southern Queensland, Toowoomba, Australia. Electronic address: matthew.squires@usq.edu.au.
  • Tao X; School of Mathematics, Physics and Computing, University of Southern Queensland, Toowoomba, Australia. Electronic address: xiaohui.tao@usq.edu.au.
  • Elangovan S; Belmont Private Hospital, Brisbane, Australia. Electronic address: soman.elangovan@healthecare.com.au.
  • Gururajan R; School of Business, University of Southern Queensland, Springfield, Australia. Electronic address: Raj.Gururajan@usq.edu.au.
  • Zhou X; School of Business, University of Southern Queensland, Springfield, Australia. Electronic address: xujuan.zhou@usq.edu.au.
  • Li Y; School of Computer Science, Queensland University of Technology, Brisbane, Australia. Electronic address: y2.li@qut.edu.au.
  • Acharya UR; School of Mathematics, Physics and Computing, University of Southern Queensland, Springfield, Australia. Electronic address: Rajendra.Acharya@usq.edu.au.
Comput Methods Programs Biomed ; 242: 107771, 2023 Dec.
Article in En | MEDLINE | ID: mdl-37717523
ABSTRACT
Repetitive Transcranial Magnetic Stimulation (rTMS) is an evidence-based treatment for depression. However, the patterns of response to this treatment modality are inconsistent. Whilst many people see a significant reduction in the severity of their depression following rTMS treatment, some patients do not. To support and improve patient outcomes, recent work is exploring the possibility of using Machine Learning to predict rTMS treatment outcomes. Our proposed model is the first to combine functional magnetic resonance imaging (fMRI) connectivity with deep learning techniques to predict treatment outcomes before treatment starts. Furthermore, with the use of Explainable AI (XAI) techniques, we identify potential biomarkers that may discriminate between rTMS responders and non-responders. Our experiments utilize 200 runs of repeated bootstrap sampling on two rTMS datasets. We compare performances between our proposed feedforward deep neural network against existing methods, and compare the average accuracy, balanced accuracy and F1-score on a held-out test set. The results of these experiments show that our model outperforms existing methods with an average accuracy of 0.9423, balanced accuracy of 0.9423, and F1-score of 0.9461 in a sample of 61 patients. We found that functional connectivity measures between the Subgenual Anterior Cingulate Cortex and Centeral Opercular Cortex are a key determinant of rTMS treatment response. This knowledge provides psychiatrists with further information to explore the potential mechanisms of responses to rTMS treatment. Our developed prototype is ready to be deployed across large datasets in multiple centres and different countries.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Depression / Transcranial Magnetic Stimulation Type of study: Prognostic_studies / Risk_factors_studies Limits: Humans Language: En Journal: Comput Methods Programs Biomed Journal subject: INFORMATICA MEDICA Year: 2023 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Depression / Transcranial Magnetic Stimulation Type of study: Prognostic_studies / Risk_factors_studies Limits: Humans Language: En Journal: Comput Methods Programs Biomed Journal subject: INFORMATICA MEDICA Year: 2023 Document type: Article