CVLGMay 15, 2024

Point2SSM++: Self-Supervised Learning of Anatomical Shape Models from Point Clouds

arXiv:2405.09707v13 citationsh-index: 13
Originality Incremental advance
AI Analysis

This work addresses the under-utilization of SSMs in medical research by making generation more feasible and broadening clinical applications, though it appears incremental as an extension of prior methods.

The paper tackled the problem of constructing statistical shape models (SSMs) from anatomical shapes, which is hindered by the need for aligned surfaces and slow optimization, by introducing Point2SSM++, a self-supervised deep learning method that learns correspondences from point clouds; it demonstrated superiority over existing methods in validation across diverse anatomies and tasks.

Correspondence-based statistical shape modeling (SSM) stands as a powerful technology for morphometric analysis in clinical research. SSM facilitates population-level characterization and quantification of anatomical shapes such as bones and organs, aiding in pathology and disease diagnostics and treatment planning. Despite its potential, SSM remains under-utilized in medical research due to the significant overhead associated with automatic construction methods, which demand complete, aligned shape surface representations. Additionally, optimization-based techniques rely on bias-inducing assumptions or templates and have prolonged inference times as the entire cohort is simultaneously optimized. To overcome these challenges, we introduce Point2SSM++, a principled, self-supervised deep learning approach that directly learns correspondence points from point cloud representations of anatomical shapes. Point2SSM++ is robust to misaligned and inconsistent input, providing SSM that accurately samples individual shape surfaces while effectively capturing population-level statistics. Additionally, we present principled extensions of Point2SSM++ to adapt it for dynamic spatiotemporal and multi-anatomy use cases, demonstrating the broad versatility of the Point2SSM++ framework. Furthermore, we present extensions of Point2SSM++ tailored for dynamic spatiotemporal and multi-anatomy scenarios, showcasing the broad versatility of the framework. Through extensive validation across diverse anatomies, evaluation metrics, and clinically relevant downstream tasks, we demonstrate Point2SSM++'s superiority over existing state-of-the-art deep learning models and traditional approaches. Point2SSM++ substantially enhances the feasibility of SSM generation and significantly broadens its array of potential clinical applications.

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