首页> 外文会议>Image Perception, Observer Performance, and Technology Assessment; Progress in Biomedical Optics and Imaging; vol.7 no.32 >Explanation of the Mechanism by which CAD Assistance Improves Diagnostic Performance when Reading CT Images
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Explanation of the Mechanism by which CAD Assistance Improves Diagnostic Performance when Reading CT Images

机译:解释读取CT图像时CAD辅助改善诊断性能的机制

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The purpose of our research is to make clear the mechanism that a reader (physician or radiological technologist) effectively identify abnormal findings in CT images of lung cancer screening by using with CAD system. A method guessing the 2X2 decision matrix between reader / CAD and reader / reader with CAD was investigated. We suppose the next scene to be it. At first, a reader judges whether abnormal findings per one patient per one CT image are present (1) or absent (0) without CAD results. The second, a reader judges whether abnormal findings are present (1) or absent (0) with CAD results. We expresses the correlation between diagnoses by a reader and CAD system for abnormal cases and for normal cases by following formula using phi correlation coefficient:φ=(cd-ab)/√(a+c)(b+d)(b+c)(a+d). a,b,c,d: 2X2 decision matrix parameters. If TPR1=(a+c), TPR2=(b+c) and TPR3=(a+b+c) for abnormal cases, TPR3=TPR1+TPR2 - TPR1 x TRR2 - φ√TPR1(1-TPR1)TPR2(1-TPR2). Therefore, a=n (TPR3 - TPR1), b=n (TPR3 -TPR2), c=n (TPR1 + TPR2 -TPR3), d=n (1.0 - TPR3). This theory was applied for the experimental data. The 41 students interpreted the same CT images [no training]. A second interpretation was performed after they had been instructed on how to interpret CT images [training], and third was assisted by a virtual CAD [training + CAD]. The mechanism that makes up for a good point of a reader and a CAD with CAD in interpreting CT images was theoretically and experimentally investigated. We concluded that a method guessing the decision matrix (2X2) between a reader and a CAD decided the" presence" or "absence" of abnormal findings explain the improvement mechanism of diagnostic performance with CAD system.
机译:我们研究的目的是弄清楚读者(医师或放射技师)使用CAD系统有效识别肺癌CT图像中异常发现的机制。研究了一种猜测阅读器/ CAD和阅读器/具有CAD的阅读器之间2X2决策矩阵的方法。我们假设是下一个场景。首先,阅读器判断是否存在(1)每位患者的异常发现(1)或没有(0)没有CAD结果。第二,读者判断CAD结果是否存在异常结果(1)或不存在(0)。我们使用phi相关系数通过以下公式来表示阅读器和CAD系统对异常情况和正常情况的诊断之间的相关性:φ=(cd-ab)/√(a + c)(b + d)(b + c )(a + d)。 a,b,c,d:2X2决策矩阵参数。如果对于异常情况,TPR1 =(a + c)/ n,TPR2 =(b + c)/ n,TPR3 =(a + b + c)/ n,则TPR3 = TPR1 + TPR2-TPR1 x TRR2-φ√TPR1( 1-TPR1)TPR2(1-TPR2)。因此,a = n(TPR3-TPR1),b = n(TPR3-TPR2),c = n(TPR1-TPR2-TPR3),d = n(1.0-TPR3)。该理论被用于实验数据。 41名学生解释了相同的CT图像[未经培训]。在指导他们如何解释CT图像后,进行了第二次解释[培训],第三次解释是由虚拟CAD辅助的[培训+ CAD]。从理论上和实验上研究了弥补读者和利用CAD进行CAD解释的机制。我们得出结论,猜测读者和CAD之间的决策矩阵(2X2)的方法决定了异常发现的“存在”或“不存在”解释了CAD系统诊断性能的改善机制。

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