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Short-term Reproducibility of Pulmonary Nodule and Mass Detection in Chest Radiographs: Comparison among Radiologists and Four Different Computer-Aided Detections with Convolutional Neural Net

机译:胸部射线照相肺结核和肿块检测的短期再现性:放射科学家的比较和卷积神经网的四种不同的计算机辅助检测

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To investigate the reproducibility of computer-aided detection (CAD) for detection of pulmonary nodules and masses for consecutive chest radiographies (CXRs) of the same patient within a short-term period. A total of 944 CXRs (Chest PA) with nodules and masses, recorded between January 2010 and November 2016 at the Asan Medical Center, were obtained. In all, 1092 regions of interest for the nodules and mass were delineated using an in-house software. All CXRs were randomly split into 6:2:2 sets for training, development, and validation. Furthermore, paired follow-up CXRs (n?=?121) acquired within one week in the validation set, in which expert thoracic radiologists confirmed no changes, were used to evaluate the reproducibility of CAD by two radiologists (R1 and R2). The reproducibility comparison of four different convolutional neural net algorithms and two chest radiologists (with 13- and 14-years' experience) was conducted. Model performances were evaluated by figure-of-merit (FOM) analysis of the jackknife free-response receiver operating curve and reproducibility rates were evaluated in terms of percent positive agreement (PPA) and Chamberlain's percent positive agreement (CPPA). Reproducibility analysis of the four CADs and R1 and R2 showed variations in the PPA and CPPA. Model performance of YOLO (You Only Look Once) v2 based eDenseYOLO showed a higher FOM (0.89; 0.85-0.93) than RetinaNet (0.89; 0.85-0.93) and atrous spatial pyramid pooling U-Net (0.85; 0.80-0.89). eDenseYOLO showed higher PPAs (97.87%) and CPPAs (95.80%) than Mask R-CNN, RetinaNet, ASSP U-Net, R1, and R2 (PPA: 96.52%, 94.23%, 95.04%, 96.55%, and 94.98%; CPPA: 93.18%, 89.09%, 90.57%, 93.33%, and 90.43%). There were moderate variations in the reproducibility of CAD with different algorithms, which likely indicates that measurement of reproducibility is necessary for evaluating CAD performance in actual clinical environments.
机译:研究计算机辅助检测(CAD)的再现性,用于在短期期内检测同一患者的连续胸部射线摄影(CXRS)的肺结节和质量。获得了在2010年1月至2016年11月在Asan Medical Center之间进行了944名CXRS(Chest PA),记录在2010年1月至2016年11月。总之,使用内部软件将1092个对结节和质量的感兴趣区域划定。所有CXRS都被随机分为6:2:2,用于培训,开发和验证。此外,在验证组中一周内获得的成对后续CXR(n?= 121),其中专家胸部放射科医师没有进行任何变化,用于评估CAD的两个放射科医生(R1和R2)的再现性。进行了四种不同卷积神经网络算法和两个胸部放射科学家的再现性比较(具有13年和14年的经验)。通过展示展示自由响应接收器的优点(FOM)分析评估模型性能,操作曲线和再现性率在肯定协议(PPA)百分比(PPA)和Chamberlain的肯定协议(CPPA)方面进行了评估。四个CAD和R1和R2的再现性分析显示了PPA和CPPA的变化。 YOLO的模型性能(您只有一次)V2的eDENCEYOLO显示出比视网膜更高的FOM(0.89; 0.85-0.93)(0.89; 0.85-0.93)和不足的空间金字塔汇集U-NET(0.85; 0.80-0.89)。 Edencyyolo表现出高于PPAS(97.87%)和CPPA(95.80%)而不是面膜R-CNN,视网膜,ASSP U-Net,R1和R2(PPA:96.52%,94.23%,95.04%,96.55%和94.98%; CPPA:93.18%,89.09%,90.57%,93.33%和90.43%)。具有不同算法的CAD的再现性存在适中的变化,这可能表明在实际临床环境中评估CAD性能是必需的再现性的测量。

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