Broemeling & Associates Inc., 1023 Fox Ridge Road, Medical Lake, WA 99022, USA.
Diagnostics (Basel). 2011 Dec 15;1(1):53-76. doi: 10.3390/diagnostics1010053.
This presentation will emphasize the estimation of the combined accuracy of two or more tests when verification bias is present. Verification bias occurs when some of the subjects are not subject to the gold standard. The approach is Bayesian where the estimation of test accuracy is based on the posterior distribution of the relevant parameter. Accuracy of two combined binary tests is estimated employing either "believe the positive" or "believe the negative" rule, then the true and false positive fractions for each rule are computed for two tests. In order to perform the analysis, the missing at random assumption is imposed, and an interesting example is provided by estimating the combined accuracy of CT and MRI to diagnose lung cancer. The Bayesian approach is extended to two ordinal tests when verification bias is present, and the accuracy of the combined tests is based on the ROC area of the risk function. An example involving mammography with two readers with extreme verification bias illustrates the estimation of the combined test accuracy for ordinal tests.
本演讲将强调在存在验证偏倚时估计两个或多个测试的综合准确性。当部分受检者不受金标准检测时,就会出现验证偏倚。本方法采用贝叶斯方法,基于相关参数的后验分布来估计检测准确性。通过采用“相信阳性”或“相信阴性”规则来估计两个联合的二项式测试的准确性,然后为每个规则计算两个测试的真实阳性和假阳性分数。为了进行分析,施加了随机缺失的假设,并通过估计 CT 和 MRI 联合诊断肺癌的准确性提供了一个有趣的例子。当存在验证偏倚时,将贝叶斯方法扩展到两个有序测试,并且联合测试的准确性基于风险函数的 ROC 面积。涉及有两个极端验证偏倚的读者的乳房 X 线摄影的例子说明了对有序测试的联合测试准确性的估计。