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Maximum Likelihood Estimation of Titer via a Power Family of Four-Parameter Logistic Model

机译:通过四参数对数模型的幂级数估计滴度的最大似然

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摘要

For many laboratory assays, the readouts are presence or absence of a particular function, and the binary outcomes are correlated. The research interest is often focused on the estimation of titers, at which 50% positivity occurs. The classical approach by Reed and Muench (RM) assumes of a linear dose-response relationship around the potential titer, and uses only information from two points around the potential titer, which is inefficient in both precision and accuracy. While the model-based methods such as four-parameter logistic regression (4PL) use all the data, they do not consider the correlation among binary outcomes from same identities, which may lead to estimates with overstated precision. We propose estimating titers from two different anchors: independent responses from same identities or exchangeable responses from same identities. Marginal distributions of responses are linked to covariates of dilution factors by the 4PL model for independent responses and by a power family of the 4PL models for exchangeable responses. The maximum likelihood procedure is used to get estimates of parameters and titers. The superiority of proposed methods over the classical approach is demonstrated both in simulation studies and in analysis of real data from hemagglutination assays.
机译:对于许多实验室测定,读数是特定功能的存在或不存在,并且二进制结果是相关的。研究兴趣通常集中在滴定度的估计上,在滴定度发生50%阳性时。 Reed和Muench(RM)的经典方法假设电位滴定度周围呈线性剂量-反应关系,并且仅使用电位滴定度周围两点的信息,因此准确性和准确性均低下。尽管基于模型的方法(例如四参数逻辑回归(4PL))使用了所有数据,但他们没有考虑相同身份的二进制结果之间的相关性,这可能导致估计精度过高。我们建议估计来自两个不同锚点的效价:来自相同身份的独立反应或来自相同身份的可交换反应。响应的边际分布通过4PL模型(用于独立响应)和4PL模型的幂族(用于可交换响应)与稀释因子的协变量关联。最大似然法用于获得参数和效价的估计。在模拟研究和血凝测定的真实数据分析中都证明了所提出的方法优于经典方法。

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