首页> 外文会议>CACS 2011;International congress on computer applications and computational science >Automatic Extraction and Categorization of Lung Abnormalities from HRCT Data in MDR/XDR TB Patients
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Automatic Extraction and Categorization of Lung Abnormalities from HRCT Data in MDR/XDR TB Patients

机译:从MDR / XDR TB患者的HRCT数据中自动提取和分类肺部异常

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An ancient disease, tuberculosis (TB) remains one of the major causes of disability and death worldwide. In 2006, 9.2 million new cases of TB emerged and killed 1.7 million people. We report on the development of tools to help in the detection of lesions and nodules from High Resolution Computed Tomography (HRCT) scans and changes in total lesion volumes across a study. These automated tools are designed to assist radiologists, clinicians and scientists assess patients' responses to therapies during clinical studies. The tools are centered upon a rule-based system that initially segments the lung from HRCT scans and then categorizes the different components of the lung as normal or abnormal. A layered segmentation process, utilizing a combination of adaptive thresholding, three-dimensional region growing and component labeling is used to successively peel off outside entities, isolating lung and trachea voxels. Locating the Carina allows logical labeling of the trachea and left/right lungs. Shape and texture analysis are used to validate and label normal vascular tree voxels. Remaining abnormal voxels are clustered on density, gradient and texture-based criteria. Several practical problems that arise due to large changes in lung morphology due to TB and patients' inability to hold their breath during scan operations need to be addressed to provide a viable computational solution. Comparisons of total common volumes of lesions by size for a given patient across multiple visits are in concordance with expert radiologist's manual measurements.
机译:结核病(TB)是一种古老的疾病,仍然是全世界致残和死亡的主要原因之一。 2006年,出现了920万例新的结核病病例,并杀死了170万人。我们报告了一项工具的开发,该工具可帮助通过高分辨率计算机断层扫描(HRCT)扫描和整个研究中的总病变量变化来检测病变和结节。这些自动化工具旨在帮助放射科医生,临床医生和科学家在临床研究期间评估患者对疗法的反应。这些工具以基于规则的系统为中心,该系统首先从HRCT扫描中分割出肺部,然后将肺部的不同组成部分归类为正常或异常。利用自适应阈值,三维区域生长和成分标记相结合的分层分割过程,可以连续剥离外部实体,从而分离出肺和气管体素。定位隆突可以对气管和左/右肺进行逻辑标记。形状和纹理分析用于验证和标记正常的血管树体素。剩余的异常体素基于密度,渐变和基于纹理的标准进行聚类。为了提供可行的计算解决方案,需要解决由于结核病引起的肺部形态的巨大变化以及患者在扫描操作过程中无法屏住呼吸而引起的一些实际问题。给定患者在多次就诊中按大小划分的总病变总体积的比较与放射线专家的手动测量结果一致。

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