Segmentation-based Method combined with Dynamic Programming for Brain
Midline Delineation
- URL: http://arxiv.org/abs/2002.11918v1
- Date: Thu, 27 Feb 2020 05:12:18 GMT
- Title: Segmentation-based Method combined with Dynamic Programming for Brain
Midline Delineation
- Authors: Shen Wang, Kongming Liang, Chengwei Pan, Chuyang Ye, Xiuli Li, Feng
Liu, Yizhou Yu, Yizhou Wang
- Abstract summary: The midline related pathological image features are crucial for evaluating the severity of brain compression caused by stroke or TBI.
Most of the previous methods model the midline by localizing the anatomical points, which are hard to detect or even missing in severe cases.
In this paper, we formulate the brain midline delineation as a segmentation task and propose a three-stage framework.
- Score: 42.91127174025364
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The midline related pathological image features are crucial for evaluating
the severity of brain compression caused by stroke or traumatic brain injury
(TBI). The automated midline delineation not only improves the assessment and
clinical decision making for patients with stroke symptoms or head trauma but
also reduces the time of diagnosis. Nevertheless, most of the previous methods
model the midline by localizing the anatomical points, which are hard to detect
or even missing in severe cases. In this paper, we formulate the brain midline
delineation as a segmentation task and propose a three-stage framework. The
proposed framework firstly aligns an input CT image into the standard space.
Then, the aligned image is processed by a midline detection network (MD-Net)
integrated with the CoordConv Layer and Cascade AtrousCconv Module to obtain
the probability map. Finally, we formulate the optimal midline selection as a
pathfinding problem to solve the problem of the discontinuity of midline
delineation. Experimental results show that our proposed framework can achieve
superior performance on one in-house dataset and one public dataset.
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