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

Janmesh Ukey, Tushar Kataria, Shireen Y Elhabian
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Abstract

Statistical Shape Modeling (SSM) effectively analyzes anatomical variations within populations but is limited by the need for manual localization and segmentation, which relies on scarce medical expertise. Recent advances in deep learning have provided a promising approach that automatically generates statistical representations (as point distribution models or PDMs) from unsegmented images. Once trained, these deep learning-based models eliminate the need for manual segmentation for new subjects. Most deep learning methods still require manual prealignment of image volumes and bounding box specification around the target anatomy, leading to a partially manual inference process. Recent approaches facilitate anatomy localization but only estimate population-level statistical representations and cannot directly delineate anatomy in images. Additionally, they are limited to modeling a single anatomy. We introduce MASSM, a novel end-to-end deep learning framework that simultaneously localizes multiple anatomies, estimates population-level statistical representations, and delineates shape representations directly in image space. Our results show that MASSM, which delineates anatomy in image space and handles multiple anatomies through a multitask network, provides superior shape information compared to segmentation networks for medical imaging tasks. Estimating Statistical Shape Models (SSM) is a stronger task than segmentation, as it encodes a more robust statistical prior for the objects to be detected and delineated. MASSM allows for more accurate and comprehensive shape representations, surpassing the capabilities of traditional pixel-wise segmentation.

MASSM:直接从图像进行多解剖统计形状建模的端到端深度学习框架。
统计形状建模(SSM)有效地分析了群体内的解剖变化,但受到人工定位和分割的限制,这依赖于稀缺的医学专业知识。深度学习的最新进展提供了一种很有前途的方法,可以从未分割的图像中自动生成统计表示(如点分布模型或pdm)。经过训练后,这些基于深度学习的模型消除了对新主题进行人工分割的需要。大多数深度学习方法仍然需要人工对目标解剖结构周围的图像体积和边界框规范进行预对齐,导致部分人工推理过程。最近的方法有助于解剖定位,但只能估计种群水平的统计表示,不能直接描绘图像中的解剖。此外,它们仅限于对单个解剖结构进行建模。我们介绍了一种新的端到端深度学习框架MASSM,它可以同时定位多个解剖结构,估计人口水平的统计表示,并直接在图像空间中描绘形状表示。我们的研究结果表明,与医学成像任务的分割网络相比,MASSM在图像空间中描绘解剖结构并通过多任务网络处理多个解剖结构,提供了更好的形状信息。估计统计形状模型(SSM)是一项比分割更强大的任务,因为它为要检测和描绘的对象编码了更健壮的统计先验。MASSM允许更准确和全面的形状表示,超越了传统的逐像素分割的能力。
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