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Segmentation-Based Method Combined with Dynamic Programming for Brain Midline Delineation

机译:基于分段的方法与动态规划相结合的脑中线描绘

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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.
机译:中线相关的病理图像特征对于评估由中风或外伤性脑损伤(TBI)引起的脑压严重程度至关重要。自动中线描画不仅可以改善中风症状或头部外伤患者的评估和临床决策,还可以缩短诊断时间。尽管如此,大多数以前的方法都是通过对解剖点进行定位来对中线进行建模,在严重的情况下很难发现甚至丢失。在本文中,我们将脑中线轮廓描述为一个分割任务,并提出了一个三阶段框架。所提出的框架首先将输入的CT图像对准标准空间。然后,通过与CoordConv层和Cascade AtrousCconv模块集成的中线检测网络(MD-Net)处理对齐的图像,以获得概率图。最后,我们将最佳中线选择公式化为寻路问题,以解决中线轮廓不连续的问题。实验结果表明,我们提出的框架可以在一个内部数据集和一个公共数据集上实现优异的性能。

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