Espeland M A, Handelman S L
Center for Prevention Research and Biometry, Bowman Gray School of Medicine, Winston-Salem, North Carolina 27103.
Biometrics. 1989 Jun;45(2):587-99.
Whenever a definitive standard is not available to mark accuracy in a classification process, discrete measurement error can be discussed only in relative terms. If strong assumptions concerning the underlying discrete processes can be made, latent class models allow one to characterize patterns of agreement/disagreement among raters while simultaneously producing "consensus" estimates of prevalence. A hypothetical definitive standard serves as the latent factor. The discrete data are treated as incomplete and log-linear models can be used to parameterize latent class models and extensions of latent class models. Data from the radiographic diagnosis of dental caries by five dentists were explored to estimate prevalence, assess relative error, and examine the validity of several traditional assumptions concerning diagnostic reliability. Latent class analysis allowed a more detailed description of diagnostic error than provided by commonly used summary statistics.
在分类过程中,若没有确定的标准来衡量准确性,离散测量误差只能从相对角度进行讨论。如果能够对潜在的离散过程做出强有力的假设,潜在类别模型可以让人们描述评估者之间的一致/不一致模式,同时得出患病率的“共识”估计值。一个假设的确定标准作为潜在因素。离散数据被视为不完整数据,对数线性模型可用于对潜在类别模型及其扩展进行参数化。研究了五位牙医对龋齿进行放射诊断的数据,以估计患病率、评估相对误差,并检验有关诊断可靠性的几个传统假设的有效性。与常用的汇总统计数据相比,潜在类别分析能够更详细地描述诊断误差。