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Graph-Based Small Bowel Path Tracking with Cylindrical Constraints

2022-07-29 02:17:56
Seung Yeon Shin, Sungwon Lee, Ronald M. Summers

Abstract

We present a new graph-based method for small bowel path tracking based on cylindrical constraints. A distinctive characteristic of the small bowel compared to other organs is the contact between parts of itself along its course, which makes the path tracking difficult together with the indistinct appearance of the wall. It causes the tracked path to easily cross over the walls when relying on low-level features like the wall detection. To circumvent this, a series of cylinders that are fitted along the course of the small bowel are used to guide the tracking to more reliable directions. It is implemented as soft constraints using a new cost function. The proposed method is evaluated against ground-truth paths that are all connected from start to end of the small bowel for 10 abdominal CT scans. The proposed method showed clear improvements compared to the baseline method in tracking the path without making an error. Improvements of 6.6% and 17.0%, in terms of the tracked length, were observed for two different settings related to the small bowel segmentation.

Abstract (translated)

URL

https://arxiv.org/abs/2207.14436

PDF

https://arxiv.org/pdf/2207.14436.pdf


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