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Accuracy Improvement of Lung Cancer Detection Based on Spatial Statistical Analysis of Thoracic CT Scans

机译:基于胸部CT扫描空间统计分析的肺癌检测准确性提高

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This paper describes a novel discrimination method of lung cancers based on statistical analysis of thoracic computed tomography (CT) scans. Our previous Computer-Aided Diagnosis (CAD) system can detect lung cancers from CT scans, but, at the same time, yields many false positives. In order to reduce the false positives, the method proposed in the present paper uses a relationship between lung cancers, false positives and image information on CT scans. The trend of variation of the relationships is acquired through statistical analysis of a set of CT scans prepared for training. In testing, by use of the trend, the method predicts the appearance of lung cancers and false positives in a CT scan, and improves the accuracy of the previous CAD system by modifying the system's output based on the prediction. The method is applied to 218 actual thoracic CT scans with 386 actual lung cancers. Receiver operating characteristic (ROC) analysis is used to evaluate the results. The area under the ROC curve (Az) is statistically significantly improved from 0.918 to 0.931.
机译:本文基于对胸部计算机断层扫描(CT)扫描的统计分析,描述了一种新型的肺癌鉴别方法。我们以前的计算机辅助诊断(CAD)系统可以通过CT扫描检测出肺癌,但是同时会产生许多假阳性。为了减少假阳性,本文提出的方法利用了肺癌,假阳性和CT扫描图像信息之间的关系。通过对准备进行训练的一组CT扫描进行统计分析,可以获得关系的变化趋势。在测试中,通过使用趋势,该方法可以预测CT扫描中肺癌和假阳性的出现,并通过基于该预测修改系统的输出来提高以前的CAD系统的准确性。该方法适用于386例实际肺癌的218例实际胸部CT扫描。接收器工作特性(ROC)分析用于评估结果。 ROC曲线下的面积(Az)从0.918显着提高到0.931。

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