Automatic identification of Parkinsonism using clinical multi-contrast brain MRI: a large self-supervised vision foundation model strategy

ElsevierVolume 116, June 2025, 105773eBioMedicineAuthor links open overlay panel, , , , , , SummaryBackground

Valid non-invasive biomarkers for Parkinson’s disease (PD) and Parkinson-plus syndrome (PPS) are urgently needed. Based on our recent self-supervised vision foundation model the Shift Window UNET TRansformer (Swin UNETR), which uses clinical multi-contrast whole brain MRI, we aimed to develop an efficient and practical model (‘SwinClassifier’) for the discrimination of PD vs PPS using routine clinical MRI scans.

Methods

We used 75,861 clinical head MRI scans including T1-weighted, T2-weighted and fluid attenuated inversion recovery imaging as a pre-training dataset to develop a foundation model, using self-supervised learning with a cross-contrast context recovery task. Then clinical head MRI scans from n = 1992 participants with PD and n = 1989 participants with PPS were used as a downstream PD vs PPS classification dataset. We then assessed SwinClassifier’s performance in confusion matrices compared to a comparative self-supervised vanilla Vision Transformer (ViT) autoencoder (‘ViTClassifier’), and to two convolutional neural networks (DenseNet121 and ResNet50) trained from scratch.

Findings

SwinClassifier showed very good performance (F1 score 0.83, 95% confidence interval [CI] [0.79–0.87], AUC 0.89) in PD vs PPS discrimination in independent test datasets (n = 173 participants with PD and n = 165 participants with PPS). This self-supervised classifier with pretrained weights outperformed the ViTClassifier and convolutional classifiers trained from scratch (F1 score 0.77–0.82, AUC 0.83–0.85). Occlusion sensitivity mapping in the correctly-classified cases (n = 160 PD and n = 114 PPS) highlighted the brain regions guiding discrimination mainly in sensorimotor and midline structures including cerebellum, brain stem, ventricle and basal ganglia.

Interpretation

Our self-supervised digital model based on routine clinical head MRI discriminated PD vs PPS with good accuracy and sensitivity. With incremental improvements the approach may be diagnostically useful in early disease.

Funding

National Key Research and Development Program of China.

Keywords

Parkinson’s disease

Parkinson-plus syndrome

Self-supervised learning

Neuroimaging

MRI

Screening

© 2025 The Author(s). Published by Elsevier B.V.

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