ADASSM: Adversarial Data Augmentation in Statistical Shape Models From Images
Mokshagna Sai Teja Karanam, Tushar Kataria, Krithika Iyer, Shireen, Elhabian

TL;DR
This paper introduces an adversarial data augmentation method for Image-to-SSM networks that enhances shape representation accuracy by focusing on geometry over texture, addressing data scarcity in medical imaging.
Contribution
The novel on-the-fly adversarial augmentation strategy improves shape modeling by emphasizing geometric features, reducing texture bias in deep learning models for medical image analysis.
Findings
Enhanced shape accuracy in experiments
Reduced texture bias in models
Improved generalization with limited data
Abstract
Statistical shape models (SSM) have been well-established as an excellent tool for identifying variations in the morphology of anatomy across the underlying population. Shape models use consistent shape representation across all the samples in a given cohort, which helps to compare shapes and identify the variations that can detect pathologies and help in formulating treatment plans. In medical imaging, computing these shape representations from CT/MRI scans requires time-intensive preprocessing operations, including but not limited to anatomy segmentation annotations, registration, and texture denoising. Deep learning models have demonstrated exceptional capabilities in learning shape representations directly from volumetric images, giving rise to highly effective and efficient Image-to-SSM networks. Nevertheless, these models are data-hungry and due to the limited availability of…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Medical Imaging and Analysis
MethodsFocus
