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Joint Lung CT Image Segmentation: A Hierarchical Bayesian Approach

机译:联合肺部CT图像分割:多层贝叶斯方法

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摘要

Accurate lung CT image segmentation is of great clinical value, especially when it comes to delineate pathological regions including lung tumor. In this paper, we present a novel framework that jointly segments multiple lung computed tomography (CT) images via hierarchical Dirichlet process (HDP). In specifics, based on the assumption that lung CT images from different patients share similar image structure (organ sets and relative positioning), we derive a mathematical model to segment them simultaneously so that shared information across patients could be utilized to regularize each individual segmentation. Moreover, compared to many conventional models, the algorithm requires little manual involvement due to the nonparametric nature of Dirichlet process (DP). We validated proposed model upon clinical data consisting of healthy and abnormal (lung cancer) patients. We demonstrate that, because of the joint segmentation fashion, more accurate and consistent segmentations could be obtained.
机译:准确的肺部CT图像分割具有重要的临床价值,尤其是在描绘包括肺部肿瘤在内的病理区域时。在本文中,我们提出了一个新颖的框架,该框架通过分层Dirichlet过程(HDP)共同分割了多个肺部CT图像。具体而言,基于来自不同患者的肺部CT图像共享相似的图像结构(器官集和相对位置)的假设,我们导出了一个数学模型以同时对其进行分割,从而可以利用患者之间共享的信息来规范化每个个体分割。此外,与许多传统模型相比,由于Dirichlet过程(DP)的非参数性质,该算法几乎不需要人工干预。我们根据由健康和异常(肺癌)患者组成的临床数据验证了提出的模型。我们证明,由于联合分割的方式,可以获得更准确和一致的分割。

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