Cheng H, Macaluso M, Hardin J M
Department of Epidemiology and International Health, School of Public Health, University of Alabama at Birmingham, Birmingham, AL 35294-2010, USA.
Ann Epidemiol. 2000 May;10(4):251-60. doi: 10.1016/s1047-2797(00)00043-0.
Studies comparing test accuracy often restrict the confirmation procedure to subjects classified as positive by either test. Relative sensitivity (RSN) and relative false-positive rate (RFP) are two estimable comparative measures of accuracy. This article evaluates the influence of sample size, disease prevalence, and test accuracy on the validity of point estimates of RSN and RFP, and on the coverage of their confidence intervals (CI).
For each combination of sample size, disease prevalence, test accuracy, and interdependence between tests 1,000 samples were generated using computer simulations. The percent bias in the RSN and RFP estimates was measured by comparing the means of the 1,000 values computed in each simulation (log-transformed) with their theoretical values. Coverage of the estimated CI was measured by computing the proportion that actually included the theoretical values. Application of these methods was illustrated with data from a study comparing mammography and physical examination in screening for breast cancer.
RSN estimates were valid if the true number of diseased cases exceeded 30, and RFP estimates were valid if the number of nondiseased subjects exceeded 200. When the numbers of diseased and nondiseased subjects exceeded 150 each, the 95% CI of RSN and RFP provided adequate coverage of the parameters (95 +/- 2%).
Sample size is the most important variable for the validity and coverage of RSN and RFP estimates. For small samples, validity and coverage of RSN and RFP also depend on the accuracy of each test and on the degree of interdependence between the tests.
比较检测准确性的研究通常将确诊程序限制在两种检测中被分类为阳性的受试者。相对灵敏度(RSN)和相对假阳性率(RFP)是两种可估计的准确性比较指标。本文评估了样本量、疾病患病率和检测准确性对RSN和RFP点估计有效性及其置信区间(CI)覆盖范围的影响。
对于样本量、疾病患病率、检测准确性以及检测1和检测2之间的相互依存关系的每种组合,使用计算机模拟生成1000个样本。通过将每次模拟中计算的1000个值(对数转换后)的均值与其理论值进行比较,测量RSN和RFP估计中的偏差百分比。通过计算实际包含理论值的比例来测量估计置信区间的覆盖范围。通过一项比较乳腺X线摄影和体格检查筛查乳腺癌的研究数据说明了这些方法的应用。
如果患病病例的真实数量超过30,则RSN估计有效;如果未患病受试者的数量超过200,则RFP估计有效。当患病和未患病受试者的数量均超过150时,RSN和RFP的95%置信区间提供了对参数的充分覆盖(95±2%)。
样本量是RSN和RFP估计有效性和覆盖范围的最重要变量。对于小样本,RSN和RFP的有效性和覆盖范围还取决于每种检测的准确性以及检测之间的相互依存程度。