首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Latent class modeling approaches for assessing diagnostic error without a gold standard: With applications to p53 immunohistochemical assays in bladder tumors
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Latent class modeling approaches for assessing diagnostic error without a gold standard: With applications to p53 immunohistochemical assays in bladder tumors

机译:无需金标准即可评估诊断错误的潜在类别建模方法:应用于p53免疫组化检测膀胱肿瘤

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Improved characterization of tumors for purposes of guiding treatment decisions for cancer patients will require that accurate and reproducible assays be developed for a variety of tumor markers. No gold standards exist for most tumor marker assays. Therefore, estimates of assay sensitivity and specificity cannot he obtained unless a latent class model-based approach is used. Our goal in this article is to estimate sensitivity and specificity for p53 immunohistochemical assays of bladder tumors using data front a reproducibility study conducted by the National Cancer Institute Bladder Tumor Marker Network. We review latent class modeling approaches proposed by previous authors, and we find that many of these approaches impose assumptions about specimen heterogeneity that are not consistent with the biology of bladder tumors. We present flexible mixture model alternatives that are biologically plausible for our example, and we use them to estimate sensitivity and specificity for our p53 assay example. These mixture models are shown to offer an improvement over other methods in a variety of settings. but we caution that, in general, care must be taken in applying latent class models. [References: 20]
机译:为了指导癌症患者的治疗决策,改善肿瘤的表征将需要针对各种肿瘤标记物开发准确且可重复的测定法。大多数肿瘤标志物测定均不存在金标准。因此,除非使用基于潜在分类模型的方法,否则无法获得测定灵敏度和特异性的估计值。我们在本文中的目标是,使用美国国家癌症研究所膀胱肿瘤标记物网络进行的可重复性研究数据,评估膀胱肿瘤p53免疫组化测定的敏感性和特异性。我们回顾了以前的作者提出的潜在类建模方法,并且我们发现这些方法中的许多都对样本异质性提出了假设,这些假设与膀胱肿瘤的生物学特性不一致。我们提供了灵活的混合物模型替代方案,这些示例方案在生物学上对于我们的示例来说是合理的,并且我们使用它们来估算我们的p53分析示例的敏感性和特异性。这些混合模型显示出在各种设置下比其他方法有改进。但我们告诫,通常,在应用潜在类模型时必须谨慎。 [参考:20]

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