Hsieh C C
Department of Epidemiology, Harvard School of Public Health, Boston, MA 02115.
Stat Med. 1991 Mar;10(3):361-73. doi: 10.1002/sim.4780100308.
This paper considers the effect of non-differential outcome misclassification on the population attributable fraction and the population prevented fraction. I examine the bias in the attributable and the prevented fraction derived from a risk ratio estimate as a function of the sensitivity and specificity of the outcome classification, the true risk ratio, the prevalence of the exposure, and the baseline disease frequency. With outcome misclassified, disease frequency is an important determinant of the magnitude of the bias; the rarer the disease, the more severe is the bias. For both the attributable and the prevented fraction, the specificity of the outcome classification has a greater influence on the magnitude of the bias than the sensitivity; this is in contrast to the dominant effect of sensitivity in situations of exposure misclassification. Also, unlike the findings in the exposure misclassification, the bias due to outcome misclassification does not increase monotonically with increased prevalence of exposure. For the attributable and prevented fraction derived from an odds ratio estimate, the specificity of the outcome classification does not have a greater influence on bias than the sensitivity, and a perfect specificity alone does not lead to unbiased effect estimates if the sensitivity of the outcome classification is imperfect.
本文探讨了非差异性结局误分类对人群归因分数和人群预防分数的影响。我研究了从风险比估计得出的归因分数和预防分数中的偏差,该偏差是结局分类的敏感度和特异度、真实风险比、暴露患病率以及基线疾病频率的函数。当结局被误分类时,疾病频率是偏差大小的一个重要决定因素;疾病越罕见,偏差越严重。对于归因分数和预防分数而言,结局分类的特异度对偏差大小的影响比敏感度更大;这与暴露误分类情况下敏感度的主导作用形成对比。此外,与暴露误分类的结果不同,结局误分类导致的偏差不会随着暴露患病率的增加而单调增加。对于从比值比估计得出的归因分数和预防分数,结局分类的特异度对偏差的影响并不比敏感度更大,并且如果结局分类的敏感度不完善,仅完美的特异度并不能导致无偏的效应估计。