Weakly Supervised Bayesian Shape Modeling from Unsegmented Medical Images
Jadie Adams, Krithika Iyer, Shireen Elhabian

TL;DR
This paper presents a weakly supervised deep learning method for Bayesian shape modeling from unsegmented medical images, reducing supervision requirements while maintaining accuracy and uncertainty quantification.
Contribution
It introduces a weakly supervised approach to Bayesian shape modeling that eliminates the need for strong supervision and prior assumptions, improving feasibility.
Findings
Achieves similar accuracy to fully supervised models.
Provides reliable uncertainty estimation.
Enhances training feasibility for shape models.
Abstract
Anatomical shape analysis plays a pivotal role in clinical research and hypothesis testing, where the relationship between form and function is paramount. Correspondence-based statistical shape modeling (SSM) facilitates population-level morphometrics but requires a cumbersome, potentially bias-inducing construction pipeline. Recent advancements in deep learning have streamlined this process in inference by providing SSM prediction directly from unsegmented medical images. However, the proposed approaches are fully supervised and require utilizing a traditional SSM construction pipeline to create training data, thus inheriting the associated burdens and limitations. To address these challenges, we introduce a weakly supervised deep learning approach to predict SSM from images using point cloud supervision. Specifically, we propose reducing the supervision associated with the…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Image Retrieval and Classification Techniques · Medical Imaging and Analysis
