4.7 Article

A Causality-Driven Graph Convolutional Network for Postural Abnormality Diagnosis in Parkinsonians

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 42, Issue 12, Pages 3752-3763

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2023.3305378

Keywords

Parkinson's disease; postural abnormality; graph convolutional network; causal inference; causal intervention

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This study proposes a causality-driven graph-convolutional-network framework based on quantitative susceptibility mapping (QSM) for the automated classification of postural abnormalities in Parkinson's disease (PD) patients. The method achieves promising performance in the diagnosis of PD posture abnormalities through stability constraints and intra-class homogeneity constraints.
Abnormal posture is a common movement disorder in the progress of Parkinson's disease (PD), and this abnormality can increase the risk of falls or even disabilities. The conventional assessment approach depends on the judgment of well-trained experts via canonical scales. However, this approach requires extensive clinical expertise and is highly subjective. Considering the potential of quantitative susceptibility mapping (QSM) in PD diagnosis, this study explored the QSM-based method for the automated classification between PD patients with and without postural abnormalities. Nevertheless, a major challenge is that unstable non-causal features typically lead to less reliable performance. Therefore, we propose a causality-driven graph-convolutional-network framework based on multi-instance learning, where performance stability is enhanced through the invariant prediction principle and causal interventions. Specifically, we adopt an intervention strategy that combines a non-causal intervenor with causal prediction. A stability constraint is proposed to ensure robust integrated prediction under different interventions. Moreover, an intra-class homogeneity constraint is enforced for each individually-learned causality scoring module to promote the extraction of group-level general features, and hence achieve a balance between subject-specific and group-level features. The proposed method demonstrated promising performance through extensive experiments on a real clinical dataset. Also, the features extracted by our method coincide with those reported in previous medical studies on PD posture abnormalities. In general, our work provides a clinically-valuable approach for automated, objective, and reliable diagnosis of postural abnormalities in Parkinsonians. Our source code is publicly available at https://github.com/SJTUBME-QianLab/CausalGCN-PDPA.

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