Multi modality fusion transformer with spatio-temporal feature aggregation module for psychiatric disorder diagnosis

Guoxin Wang,Fengmei Fan, Sheng Shi,Shan An, Xuyang Cao, Wenshu Ge,Feng Yu,Qi Wang, Xiaole Han,Shuping Tan,Yunlong Tan,Zhiren Wang

Computerized Medical Imaging and Graphics(2024)

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摘要
Bipolar disorder (BD) is characterized by recurrent episodes of depression and mild mania. In this paper, to address the common issue of insufficient accuracy in existing methods and meet the requirements of clinical diagnosis, we propose a framework called Spatio-temporal Feature Fusion Transformer (STF2Former). It improves on our previous work - MFFormer by introducing a Spatio-temporal Feature Aggregation Module (STFAM) to learn the temporal and spatial features of rs-fMRI data. It promotes intra-modality attention and information fusion across different modalities. Specifically, this method decouples the temporal and spatial dimensions and designs two feature extraction modules for extracting temporal and spatial information separately. Extensive experiments demonstrate the effectiveness of our proposed STFAM in extracting features from rs-fMRI, and prove that our STF2Former can significantly outperform MFFormer and achieve much better results among other state-of-the-art methods.
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关键词
Bipolar disorder,Medical diagnosis,Magnetic resonance imaging,Multimodal deep learning,Spatio-temporal feature aggregation module
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