posted on 2023-10-06, 14:12authored byUlas Bagci, Jayaram K. Udupa, Xinjian Chen, Drew Torigian, Alpay Medetalibeyoglu, Diwei ZhouDiwei Zhou, Li Bai
<p>In this paper, we proposed to use non-Euclidean statistical metrics to localize multiple 3D anatomical structures by estimating the object’s position, orientation, and size in medical images. Precise orientation estimation is extremely important especially for model-based image segmentation algorithms as even a very small change in shape model orientation can lead to inaccurate localization and segmentation. We statistically evaluated accuracy of orientation estimation using various metrics: Euclidean, Mean Hermitian, Log-Euclidean, Root-Euclidean, Cholesky decomposition, and Procrustes Size-and-Shape. Experimental results showed that non-Euclidean metrics, particularly Mean Hermitian and Cholesky decomposition, provided more accurate estimates than Euclidean metrics. We presented the effectiveness of the proposed method using abdominal and hand computed tomography (CT) images and magnetic resonance (MR) images of the foot.</p>
Funding
This study is supported by NIH R01-CA246704, R01-CA240639, R15- EB030356, R03-EB032943, and U01-DK127384-02S1.
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