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Automated detection and quantification of micronodules in thoracic CT scans to identify subjects at risk for silicosis

机译:胸部CT扫描中的微结节的自动检测和定量,以识别患矽肺病的受试者

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Silica dust-exposed individuals are at high risk of developing silicosis, a fatal and incurable lung disease. The presence of disseminated micronodules on thoracic CT is the radiological hallmark of silicosis but locating micronodules, to identify subjects at risk, is tedious for human observers. We present a computer-aided detection scheme to automatically find micronodules and quantify micronodule load. The system used lung segmentation, template matching, and a supervised classification scheme. The system achieved a promising sensitivity of 84% at an average of 8.4 false positive marks per scan. In an independent data set of 54 CT scans in which we defined four risk categories, the CAD system automatically classified 83% of subjects correctly, and obtained a weighted kappa of 0.76.
机译:接触二氧化硅粉尘的人极有可能患上矽肺病,这是一种致命且无法治愈的肺部疾病。胸部CT上存在弥散性细小结节是矽肺病的放射学标志,但是定位细小结节以识别有风险的受试者对人类观察者来说是繁琐的。我们提出了一种计算机辅助的检测方案,以自动找到微结节并量化微结节负荷。该系统使用了肺分割,模板匹配和监督分类方案。该系统在每次扫描平均8.4个假阳性标记上实现了84%的有希望的灵敏度。在我们定义了四个风险类别的54个CT扫描的独立数据集中,CAD系统自动正确地将83%的受试者分类,并获得0.76的加权卡伯值。

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