Spatiotemporal Cardiac Statistical Shape Modeling: A Data-Driven Approach
Jadie Adams, Nawazish Khan, Alan Morris, Shireen Elhabian

TL;DR
This paper introduces a novel data-driven spatiotemporal shape modeling method for cardiac data that captures dynamic anatomical changes over time more effectively than existing approaches, aiding in disease progression analysis.
Contribution
It proposes a new optimization scheme for shape modeling that learns landmarks consistent across subjects and time, improving over traditional cross-sectional methods.
Findings
Outperforms image-based approaches in representing cardiac shape dynamics.
Provides better generalization and specificity in time-series modeling.
Successfully applied to atrial-fibrillation patient data.
Abstract
Clinical investigations of anatomy's structural changes over time could greatly benefit from population-level quantification of shape, or spatiotemporal statistic shape modeling (SSM). Such a tool enables characterizing patient organ cycles or disease progression in relation to a cohort of interest. Constructing shape models requires establishing a quantitative shape representation (e.g., corresponding landmarks). Particle-based shape modeling (PSM) is a data-driven SSM approach that captures population-level shape variations by optimizing landmark placement. However, it assumes cross-sectional study designs and hence has limited statistical power in representing shape changes over time. Existing methods for modeling spatiotemporal or longitudinal shape changes require predefined shape atlases and pre-built shape models that are typically constructed cross-sectionally. This paper…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Machine Learning in Healthcare · Medical Image Segmentation Techniques
