relation: https://khub.utp.edu.my/scholars/16398/ title: Principal Subspace of Dynamic Functional Connectivity for Diagnosis of Autism Spectrum Disorder creator: Al-Hiyali, M.I. creator: Yahya, N. creator: Faye, I. creator: Al-Quraishi, M.S. creator: Al-Ezzi, A. description: The study of functional connectivity (FC) of the brain using resting-state functional magnetic resonance imaging (rs-fMRI) has gained traction for uncovering FC patterns related to autism spectrum disorder (ASD). It is believed that the neurodynamic components of neuroimaging data enhance the measurement of the FC of brain nodes. Hence, methods based on linear correlations of rs-fMRI may not accurately represent the FC patterns of brain nodes in ASD patients. In this study, we proposed a new biomarker for ASD detection based on wavelet coherence and singular value decomposition. In essence, the proposed method provides a novel feature-vector based on extraction of the principal component of the neuronal dynamic FC patterns of rs-fMRI BOLD signals. The method, known as principal wavelet coherence (PWC), is implemented by applying singular value decomposition (SVD) on wavelet coherence (WC) and extracting the first principal component. ASD biomarkers are selected by analyzing the relationship between ASD severity scores and the amplitude of wavelet coherence fluctuation (WCF). The experimental rs-fMRI dataset is obtained from the publicly available Autism Brain Image Data Exchange (ABIDE), and includes 505 ASD patients and 530 normal control subjects. The data are randomly divided into 90 for training and cross-validation and the remaining 10 unseen data used for testing the performance of the trained network. With 95.2 accuracy on the ABIDE database, our ASD classification technique has better performance than previous methods. The results of this study illustrate the potential of PWC in representing FC dynamics between brain nodes and opens up possibilities for its clinical application in diagnosis of other neuropsychiatric disorders. © 2022 by the authors. publisher: MDPI date: 2022 type: Article type: PeerReviewed identifier: Al-Hiyali, M.I. and Yahya, N. and Faye, I. and Al-Quraishi, M.S. and Al-Ezzi, A. (2022) Principal Subspace of Dynamic Functional Connectivity for Diagnosis of Autism Spectrum Disorder. Applied Sciences (Switzerland), 12 (18). ISSN 20763417 relation: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85138653155&doi=10.3390%2fapp12189339&partnerID=40&md5=1f854447ec98afb55c966c44c6c06a42 relation: 10.3390/app12189339 identifier: 10.3390/app12189339