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MASSM: An End-to-End Deep Learning Framework for Multi-Anatomy Statistical Shape Modeling Directly From Images.

Janmesh Ukey1,2, Tushar Kataria1,2, Shireen Y Elhabian1,2

  • 1Kahlert School of Computing, University of Utah.

Shape in Medical Imaging : International Workshop, Shapemi 2024, Held in Conjunction with MICCAI 2024, Marrakesh, Morocco, October 6, 2024, Proceedings. Shapemi (Workshop) (2024 : Marrakech, Morocco)
|December 9, 2024
PubMed
Summary
This summary is machine-generated.

This study introduces MASSM, a deep learning framework for automated Statistical Shape Modeling (SSM). MASSM simultaneously localizes and delineates multiple anatomies, overcoming limitations of manual segmentation and improving shape analysis in medical imaging.

Keywords:
Anatomy DetectionDeep LearningLocalizationMulti-Anatomy NetworkStatistical Shape Modeling

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Area of Science:

  • Medical Imaging
  • Computational Anatomy
  • Deep Learning

Background:

  • Statistical Shape Modeling (SSM) analyzes anatomical variations but requires manual segmentation, limiting its efficiency.
  • Current deep learning methods for SSM often need manual prealignment and bounding box specification.
  • Existing approaches struggle with multiple anatomies and direct delineation in image space.

Purpose of the Study:

  • To introduce MASSM, a novel end-to-end deep learning framework for automated SSM.
  • To enable simultaneous localization, statistical representation estimation, and delineation of multiple anatomies.
  • To overcome the limitations of manual segmentation and partially manual inference processes.

Main Methods:

  • Developed a multitask deep learning network (MASSM) for simultaneous anatomy localization and shape representation.
  • Trained the framework on unsegmented images to generate population-level statistical representations.
  • Enabled direct delineation of shape representations in image space for multiple anatomies.

Main Results:

  • MASSM successfully automates localization, statistical representation estimation, and delineation of multiple anatomies.
  • The framework provides superior shape information compared to traditional segmentation networks.
  • MASSM demonstrates more accurate and comprehensive shape representations than pixel-wise segmentation.

Conclusions:

  • MASSM offers a fully automated solution for Statistical Shape Modeling, eliminating the need for manual segmentation.
  • The multitask approach effectively handles multiple anatomies, enhancing shape analysis capabilities.
  • MASSM represents a significant advancement over traditional segmentation methods for medical imaging tasks.