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Latent trajectory modelling of multivariate binary data

机译:多元二进制数据的潜在轨迹建模

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摘要

Latent trajectory analysis is a form of latent class analysis, where the manifest variables are longitudinal measurements of a single outcome. The latent classes may correspond to either constant increasing or decreasing levels of the outcome over time and describe different severity or course of a disease. Extension to multiple outcomes at each time point allows more accurate determination of classes, with classes based on combination of the outcomes, however requiring models which account for both correlation between outcomes and periods. Three models are described for multiple binary outcomes, observed at each time point: a latent class model where all outcomes are considered independent at all time points, a model incorporating random effects for subject only and one incorporating random effects for subject and period. The methods are applied to data on asthma and allergy symptoms in infants, with symptoms recorded at four time points, and it is shown that the incorporation of subject and period heterogeneity results in lower estimates of the number of latent classes.
机译:潜在轨迹分析是潜在类别分析的一种形式,其中清单变量是单个结果的纵向度量。潜在类别可能对应于结果随时间的不断增加或减少,并描述了疾病的不同严重程度或病程。在每个时间点扩展到多个结果,可以更准确地确定类别,并且基于结果的组合来确定类别,但是需要模型来说明结果和期间之间的相关性。描述了在每个时间点观察到的多个二进制结果的三个模型:一个潜伏类模型,其中所有结果在所有时间点都被认为是独立的;一个仅包含受治疗者随机效应的模型,一个包含受治疗者和时期随机效应的模型。该方法应用于婴儿哮喘和过敏症状的数据,并在四个时间点记录了症状,结果表明,纳入受试者和时期异质性会导致潜在类别数量的估计值降低。

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