ICHOR: A Robust Representation Learning Approach for ASL CBF Maps with Self-Supervised Masked Autoencoders
Xavier Beltran-Urbano, Yiran Li, Xinglin Zeng, Katie R. Jobson, Manuel Taso, Christopher A. Brown, David A. Wolk, Corey T. McMillan, Ilya M. Nashrallah, Paul A. Yushkevich, Ze Wang, John A. Detre, and Sudipto Dolui

TL;DR
This paper introduces ICHOR, a self-supervised learning method using masked autoencoders and Vision Transformers to improve the analysis of ASL CBF maps, addressing variability and limited labeled data.
Contribution
ICHOR is a novel self-supervised pre-training approach that learns transferable representations for ASL CBF maps using large-scale multi-site data and masked autoencoders.
Findings
Outperforms existing self-supervised methods on downstream tasks
Pre-trained ICHOR encoder improves diagnostic classification accuracy
Effective across diverse datasets and acquisition protocols
Abstract
Arterial spin labeling (ASL) perfusion MRI allows direct quantification of regional cerebral blood flow (CBF) without exogenous contrast, enabling noninvasive measurements that can be repeated without constraints imposed by contrast injection. ASL is increasingly acquired in research studies and clinical MRI protocols. Building on successes in structural imaging, recent efforts have implemented deep learning based methods to improve image quality, enable automated quality control, and derive robust quantitative and predictive biomarkers with ASL derived CBF. However, progress has been limited by variable image quality, substantial inter-site, vendor and protocol differences, and limited availability of labeled datasets needed to train models that generalize across cohorts. To address these challenges, we introduce ICHOR, a self supervised pre-training approach for ASL CBF maps that…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Functional Brain Connectivity Studies · Advanced Neuroimaging Techniques and Applications
