Learning 3D Medical Image Models From Brain Functional Connectivity Network Supervision For Mental Disorder Diagnosis
Journal:
arXiv
Published Date:
Mar 6, 2025
Abstract
In MRI-based mental disorder diagnosis, most previous studies focus on
functional connectivity network (FCN) derived from functional MRI (fMRI).
However, the small size of annotated fMRI datasets restricts its wide
application. Meanwhile, structural MRIs (sMRIs), such as 3D T1-weighted (T1w)
MRI, which are commonly used and readily accessible in clinical settings, are
often overlooked. To integrate the complementary information from both function
and structure for improved diagnostic accuracy, we propose CINP (Contrastive
Image-Network Pre-training), a framework that employs contrastive learning
between sMRI and FCN. During pre-training, we incorporate masked image modeling
and network-image matching to enhance visual representation learning and
modality alignment. Since the CINP facilitates knowledge transfer from FCN to
sMRI, we introduce network prompting. It utilizes only sMRI from suspected
patients and a small amount of FCNs from different patient classes for
diagnosing mental disorders, which is practical in real-world clinical
scenario. The competitive performance on three mental disorder diagnosis tasks
demonstrate the effectiveness of the CINP in integrating multimodal MRI
information, as well as the potential of incorporating sMRI into clinical
diagnosis using network prompting.