Data-driven Probabilistic Atlases Capture Whole-brain Individual Variation
Yuankai Huo, Katherine Swett, Susan M. Resnick, Laurie E. Cutting,, Bennett A. Landman

TL;DR
This paper introduces a data-driven method to create personalized whole-brain probabilistic atlases that adapt to individual differences using large-scale heterogeneous data, improving spatial specificity and computational efficiency.
Contribution
It presents a novel framework for generating personal-specific probabilistic brain atlases across multiple sites using large-scale data and minimal registration steps.
Findings
Higher Dice similarity with individual regions.
Better performance with larger training datasets.
Low computational cost for new subjects.
Abstract
Probabilistic atlases provide essential spatial contextual information for image interpretation, Bayesian modeling, and algorithmic processing. Such atlases are typically constructed by grouping subjects with similar demographic information. Importantly, use of the same scanner minimizes inter-group variability. However, generalizability and spatial specificity of such approaches is more limited than one might like. Inspired by Commowick "Frankenstein's creature paradigm" which builds a personal specific anatomical atlas, we propose a data-driven framework to build a personal specific probabilistic atlas under the large-scale data scheme. The data-driven framework clusters regions with similar features using a point distribution model to learn different anatomical phenotypes. Regional structural atlases and corresponding regional probabilistic atlases are used as indices and targets in…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Time Series Analysis and Forecasting · Medical Image Segmentation Techniques
