Corresponding Supine and Prone Colon Visualization Using Eigenfunction Analysis and Fold Modeling
Saad Nadeem, Joseph Marino, Xianfeng Gu, Arie Kaufman

TL;DR
This paper introduces a novel method for registering and visualizing supine and prone virtual colonoscopy scans using eigenfunction analysis and fold modeling, improving accuracy and visualization quality.
Contribution
The method employs Fiedler vector analysis for global registration and fold segmentation, enabling precise visualization and automatic cut placement for 2D flattening.
Findings
Achieves superior registration accuracy compared to previous methods.
Provides robust fold segmentation validated against manually labeled datasets.
Demonstrates efficient and effective visualization in both 2D and 3D views.
Abstract
We present a method for registration and visualization of corresponding supine and prone virtual colonoscopy scans based on eigenfunction analysis and fold modeling. In virtual colonoscopy, CT scans are acquired with the patient in two positions, and their registration is desirable so that physicians can corroborate findings between scans. Our algorithm performs this registration efficiently through the use of Fiedler vector representation (the second eigenfunction of the Laplace-Beltrami operator). This representation is employed to first perform global registration of the two colon positions. The registration is then locally refined using the haustral folds, which are automatically segmented using the 3D level sets of the Fiedler vector. The use of Fiedler vectors and the segmented folds presents a precise way of visualizing corresponding regions across datasets and visual modalities.…
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