TL;DR
This paper introduces an adaptive dictionary learning method for harmonizing diffusion MRI datasets, effectively reducing scanner-related variability while maintaining biological differences, thereby enhancing multicenter study reliability.
Contribution
The proposed algorithm automatically learns overcomplete dictionaries from data to harmonize diffusion MRI datasets across different scanners without needing paired samples.
Findings
Preserves effect size of diffusion metrics after harmonization.
Removes scanner-specific variability effectively.
Maintains biological variability despite harmonization.
Abstract
Diffusion magnetic resonance imaging is a noninvasive imaging technique that can indirectly infer the microstructure of tissues and provide metrics which are subject to normal variability across subjects. Potentially abnormal values or features may yield essential information to support analysis of controls and patients cohorts, but subtle confounds affecting diffusion MRI, such as those due to difference in scanning protocols or hardware, can lead to systematic errors which could be mistaken for purely biologically driven variations amongst subjects. In this work, we propose a new harmonization algorithm based on adaptive dictionary learning to mitigate the unwanted variability caused by different scanner hardware while preserving the natural biological variability present in the data. Overcomplete dictionaries, which are learned automatically from the data and do not require paired…
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