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BrainMass: Advancing Brain Network Analysis for Diagnosis with Large-scale Self-Supervised Learning

About

Foundation models pretrained on large-scale datasets via self-supervised learning demonstrate exceptional versatility across various tasks. Due to the heterogeneity and hard-to-collect medical data, this approach is especially beneficial for medical image analysis and neuroscience research, as it streamlines broad downstream tasks without the need for numerous costly annotations. However, there has been limited investigation into brain network foundation models, limiting their adaptability and generalizability for broad neuroscience studies. In this study, we aim to bridge this gap. In particular, (1) we curated a comprehensive dataset by collating images from 30 datasets, which comprises 70,781 samples of 46,686 participants. Moreover, we introduce pseudo-functional connectivity (pFC) to further generates millions of augmented brain networks by randomly dropping certain timepoints of the BOLD signal. (2) We propose the BrainMass framework for brain network self-supervised learning via mask modeling and feature alignment. BrainMass employs Mask-ROI Modeling (MRM) to bolster intra-network dependencies and regional specificity. Furthermore, Latent Representation Alignment (LRA) module is utilized to regularize augmented brain networks of the same participant with similar topological properties to yield similar latent representations by aligning their latent embeddings. Extensive experiments on eight internal tasks and seven external brain disorder diagnosis tasks show BrainMass's superior performance, highlighting its significant generalizability and adaptability. Nonetheless, BrainMass demonstrates powerful few/zero-shot learning abilities and exhibits meaningful interpretation to various diseases, showcasing its potential use for clinical applications.

Yanwu Yang, Chenfei Ye, Guinan Su, Ziyao Zhang, Zhikai Chang, Hairui Chen, Piu Chan, Yue Yu, Ting Ma• 2024

Related benchmarks

TaskDatasetResultRank
Brain Disorder ClassificationPPMI
Accuracy63.51
41
Sex ClassificationUKBioBank
Balanced Accuracy69.72
26
Sex ClassificationHBN Sex
Balanced Accuracy0.5697
22
MDD PredictionSRPBS-MDD
Balanced Accuracy59.82
14
Schizophrenia PredictionSRPBS-SZ
Balanced Accuracy70.22
11
Autism Spectrum Disorder ClassificationABIDE
Mean Balanced Acc60.89
11
WISC Score PredictionHBN-WISC
Balanced Accuracy38
11
Age PredictionHBN Age
Balanced Accuracy31.8
11
CELF Score PredictionHBN-CELF
Balanced Accuracy0.3693
11
Age PredictionABIDE (external)
Accuracy48.19
8
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