DeepSSM: A Blueprint for Image-to-Shape Deep Learning Models
Riddhish Bhalodia, Shireen Elhabian, Jadie Adams, Wenzheng Tao,, Ladislav Kavan, Ross Whitaker

TL;DR
DeepSSM introduces a deep learning framework that directly maps 3D medical images to shape descriptors, streamlining statistical shape modeling by reducing manual pre-processing and enabling end-to-end analysis.
Contribution
This work presents the first deep learning-based method for direct image-to-shape mapping in statistical shape modeling, including novel data augmentation strategies and architectural variants.
Findings
DeepSSM achieves comparable or superior accuracy to traditional methods.
It significantly reduces computational time for shape inference.
The approach is validated across three medical datasets with successful clinical applications.
Abstract
Statistical shape modeling (SSM) characterizes anatomical variations in a population of shapes generated from medical images. SSM requires consistent shape representation across samples in shape cohort. Establishing this representation entails a processing pipeline that includes anatomy segmentation, re-sampling, registration, and non-linear optimization. These shape representations are then used to extract low-dimensional shape descriptors that facilitate subsequent analyses in different applications. However, the current process of obtaining these shape descriptors from imaging data relies on human and computational resources, requiring domain expertise for segmenting anatomies of interest. Moreover, this same taxing pipeline needs to be repeated to infer shape descriptors for new image data using a pre-trained/existing shape model. Here, we propose DeepSSM, a deep learning-based…
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Taxonomy
TopicsMedical Imaging and Analysis · Anatomy and Medical Technology · Medical Image Segmentation Techniques
