Srinivasan Preethi, Westover M Brandon, Bianchi Matt T
Bioinformatics Department, Northeastern University, Boston, Massachusetts, USA.
South Med J. 2012 Sep;105(9):452-9. doi: 10.1097/SMJ.0b013e3182621a2c.
Bayesian interpretation of diagnostic test results usually involves point estimates of the pretest probability and the likelihood ratio corresponding to the test result; however, it may be more appropriate in clinical situations to consider instead a range of possible values to express uncertainty in the estimates of these parameters. We thus sought to demonstrate how uncertainty in sensitivity, specificity, and disease pretest probability can be accommodated in Bayesian interpretation of diagnostic testing.
We investigated three questions: How does uncertainty in the likelihood ratio propagate to the posttest probability range, assuming a point estimate of pretest probability? How does uncertainty in the sensitivity and specificity of a test affect uncertainty in the likelihood ratio? How does uncertainty propagate when present in both the pretest probability and the likelihood ratio?
Propagation of likelihood ratio uncertainty depends on the pretest probability and is more prominent for unexpected test results. Uncertainty in sensitivity and specificity propagates into the calculation of likelihood ratio prominently as these parameters approach 100%; even modest errors of ± 10% caused dramatic propagation. Combining errors of ± 20% in the pretest probability and in the likelihood ratio exhibited modest propagation to posttest probability, suggesting a realistic target range for clinical estimations.
The results provide a framework for incorporating ranges of uncertainty into Bayesian reasoning. Although point estimates simplify the implementation of Bayesian reasoning, it is important to recognize the implications of error propagation when ranges are considered in this multistep process.
对诊断试验结果进行贝叶斯解释通常涉及对验前概率和与试验结果对应的似然比的点估计;然而,在临床情况下,考虑一系列可能值以表达这些参数估计中的不确定性可能更为合适。因此,我们试图证明在诊断试验的贝叶斯解释中如何考虑敏感性、特异性和疾病验前概率的不确定性。
我们研究了三个问题:假设验前概率为点估计,似然比的不确定性如何传播到验后概率范围?试验的敏感性和特异性的不确定性如何影响似然比的不确定性?当验前概率和似然比都存在不确定性时,不确定性如何传播?
似然比不确定性的传播取决于验前概率,对于意外的试验结果更为显著。当敏感性和特异性接近100%时,其不确定性在似然比的计算中显著传播;即使±10%的适度误差也会导致显著传播。在验前概率和似然比中结合±20%的误差对验后概率的传播较小,这为临床估计提供了一个现实的目标范围。
这些结果提供了一个将不确定性范围纳入贝叶斯推理的框架。尽管点估计简化了贝叶斯推理的实施,但在这个多步骤过程中考虑范围时,认识到误差传播的影响很重要。