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Automated Segmentation and Retrieval System for CT Head Images

机译:CT头部图像自动分割与检索系统

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摘要

In this paper, automatic segmentation and retrieval of medical images are presented. For the segmentation, different unsupervised clustering techniques are employed to partition the Computed Tomography (CT) brain images into three regions, which are the abnormalities, cerebrospinal fluids (CSF) and brain matters. The novel segmentation method proposed is a dual level segmentation approach. The first level segmentation, which purpose is to acquire abnormal regions, uses the combination of fuzzy c-means (FCM) and k-means clustering. The second level segmentation performs either the expectation-maximization (EM) technique or the modified FCM with population-diameter independent (PDI) to segment the remaining intracranial area into CSF and brain matters. The system automatically determines which algorithm to be utilized in order to produce optimum results. The retrieval of the medical images is based on keywords such as "no abnormal region", "abnormal region(s) adjacent to the skull" and "abnormal region(s) not adjacent to the skull". Medical data from collaborating hospital are experimented and promising results are observed.
机译:本文提出了医学图像的自动分割和检索方法。对于分割,采用不同的无监督聚类技术将计算机断层扫描(CT)脑图像划分为三个区域,即异常,脑脊液(CSF)和脑部物质。提出的新颖的分割方法是双层分割方法。第一级分割的目的是获取异常区域,它使用模糊c均值(FCM)和k均值聚类的组合。第二级分割执行期望最大化(EM)技术或具有人口直径无关(PDI)的改良FCM,将剩余的颅内区域分割为CSF和脑部物质。系统自动确定要使用哪种算法以产生最佳结果。医学图像的检索基于诸如“无异常区域”,“与头骨相邻的异常区域”和“与头骨不相邻的异常区域”之类的关键字。实验了合作医院的医疗数据,并观察到了有希望的结果。

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