Unsupervised learning of acquisition variability in structural connectomes via hybrid latent space modeling
Gaurav Rudravaram, Lianrui Zuo, Karthik Ramadass, Elyssa McMaster, Jongyeon Yoon, Aravind R. Krishnan, Adam M. Saunders, Chenyu Gao, Nancy R. Newlin, Praitayini Kanakaraj, Lori L. Beason Held, Murat Bilgel, Laura A. Barquero, Micah DArchangel, Tin Q. Nguyen, Laurie B. Cutting

TL;DR
This paper presents an unsupervised hybrid latent space model with architectural annealing to effectively separate acquisition variability from biological signals in structural connectomes derived from dMRI data.
Contribution
It introduces a novel architectural annealing approach that removes manual tuning in hybrid latent models, improving the capture of acquisition effects in connectome analysis.
Findings
The proposed model outperforms standard VAEs and PCA in capturing site variability.
Architectural annealing enhances the model's ability to recover scanner and protocol clusters.
The model effectively separates biological variation from acquisition-related effects.
Abstract
Acquisition differences across sites, scanners, and protocols in dMRI introduce variability that complicates structural connectome analysis. This motivates deep learning models that can represent high-dimensional connectomes in a low-dimensional space while explicitly separating acquisition-related effects from biological variation. Conventional dimensionality reduction methods model all variance as continuous, so acquisition effects often get absorbed into a continuous latent space. Recent hybrid latent-space models combine discrete and continuous components to address this, but typically require manual capacity tuning to ensure the discrete component captures the intended variability. We introduce an unsupervised framework that removes this manual tuning by architecturally annealing encoder outputs before decoding, allowing the model to adaptively balance discrete and continuous…
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