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Computer-aided diagnosis for the detection and classification of lung cancers on chest radiographs ROC analysis of radiologists' performance.

机译:胸部X光片ROC分析放射线医师表现的计算机辅助诊断,用于肺癌的检测和分类。

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RATIONALE AND OBJECTIVES: The aim of the study is to investigate the effect of a computer-aided diagnostic (CAD) scheme on radiologist performance in the detection of lung cancers on chest radiographs. MATERIALS AND METHODS: We combined two independent CAD schemes for the detection and classification of lung nodules into one new CAD scheme by use of a database of 150 chest images, including 108 cases with solitary pulmonary nodules and 42 cases without nodules. For the observer study, we selected 48 chest images, including 24 lung cancers, 12 benign nodules, and 12 cases without nodules, from the database to investigate radiologist performance in the detection of lung cancers. Nine radiologists participated in a receiver operating characteristic (ROC) study in which cases were interpreted first without and then with computer output, which indicated locations of possible lung nodules, together with a five-color scale illustrating the computer-estimated likelihood of malignancy of the detected nodules. RESULTS: Performance of the CAD scheme indicated that sensitivity in detecting lung nodules was 80.6%, with 1.2 false-positive results per image, and sensitivity and specificity for classification of nodules by use of the same database for training and testing the CAD scheme were 87.7% and 66.7%, respectively. Average area under the ROC curve value for detection of lung cancers improved significantly (P = .008) from without (0.724) to with CAD (0.778). CONCLUSION: This type of CAD scheme, which includes two functions, namely detection and classification, can improve radiologist accuracy in the diagnosis of lung cancer.
机译:理由和目的:这项研究的目的是研究计算机辅助诊断(CAD)方案对放射线检查员在胸部X光片上检测肺癌的性能的影响。材料与方法:我们利用150个胸部图像的数据库将两个用于检测和分类肺结节的独立CAD方案合并为一个新的CAD方案,其中包括108例孤立肺结节和42例不结节。对于观察者研究,我们从数据库中选择了48个胸部图像,包括24个肺癌,12个良性结节和12个无结节的病例,以研究放射科医生在检测肺癌中的表现。九名放射科医生参加了接收器工作特征(ROC)研究,在该病例中,首先在没有计算机输出的情况下解释病例,然后通过计算机输出解释病例可能的肺结节的位置,并用五色标度说明计算机估计的恶性肿瘤可能性。检测到的结节。结果:CAD方案的性能表明,检测肺结节的敏感性为80.6%,每幅图像的假阳性结果为1.2,使用同一数据库训练和测试CAD方案对结节分类的敏感性和特异性为87.7。 %和66.7%。从未检测到肺癌(0.724)到使用CAD(0.778),ROC曲线值下的平均面积可显着提高(P = .008)。结论:这种CAD方案包括检测和分类两个功能,可以提高放射科医生在肺癌诊断中的准确性。

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