FDR-HS: An Empirical Bayesian Identification of Heterogenous Features in Neuroimage Analysis
Xinwei Sun, Lingjing Hu, Fandong Zhang, Yuan Yao, Yizhou Wang

TL;DR
This paper introduces FDR-HS, a novel empirical Bayesian method for neuroimage analysis that effectively differentiates procedural bias from lesion features, improving interpretability and prediction accuracy by exploiting their heterogeneity.
Contribution
FDR-HS is the first method to address heterogeneity and multicollinearity in neuroimage feature selection using an EM algorithm-based convex optimization approach.
Findings
Improved interpretability of neuroimage features.
Enhanced prediction power on ADNI dataset.
Effective differentiation of procedural bias and lesion features.
Abstract
Recent studies found that in voxel-based neuroimage analysis, detecting and differentiating "procedural bias" that are introduced during the preprocessing steps from lesion features, not only can help boost accuracy but also can improve interpretability. To the best of our knowledge, GSplit LBI is the first model proposed in the literature to simultaneously capture both procedural bias and lesion features. Despite the fact that it can improve prediction power by leveraging the procedural bias, it may select spurious features due to the multicollinearity in high dimensional space. Moreover, it does not take into account the heterogeneity of these two types of features. In fact, the procedural bias and lesion features differ in terms of volumetric change and spatial correlation pattern. To address these issues, we propose a "two-groups" Empirical-Bayes method called "FDR-HS"…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Cell Image Analysis Techniques · Functional Brain Connectivity Studies
