MHATC: Autism Spectrum Disorder identification utilizing multi-head attention encoder along with temporal consolidation modules
MHATC: Autism Spectrum Disorder identification utilizing multi-head attention encoder along with temporal consolidation modules
Resting-state fMRI is commonly used for diagnosing Autism Spectrum Disorder (ASD) by using network-based functional connectivity. It has been shown that ASD is associated with brain regions and their inter-connections. However, discriminating based on connectivity patterns among imaging data of the control population and that of ASD patients' brains is a non-trivial task. In order to tackle said classification task, we propose a novel deep learning architecture (MHATC) consisting of multi-head attention and temporal consolidation modules for classifying an individual as a patient of ASD. The devised architecture results from an in-depth analysis of the limitations of current deep neural network solutions for similar applications. Our approach is not only robust but computationally efficient, which can allow its adoption in a variety of other research and clinical settings.
Abhishek Bhardwaj、Ranjeet Ranjan Jha、Devin Garg、Aditya Nigam、Arnav Bhavsar
神经病学、精神病学生物科学研究方法、生物科学研究技术计算技术、计算机技术
Abhishek Bhardwaj,Ranjeet Ranjan Jha,Devin Garg,Aditya Nigam,Arnav Bhavsar.MHATC: Autism Spectrum Disorder identification utilizing multi-head attention encoder along with temporal consolidation modules[EB/OL].(2021-12-27)[2025-08-02].https://arxiv.org/abs/2201.00404.点此复制
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