Modelling of repeated ordered measurements by isotonic sequential regression

G. Tutz
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引用次数: 35

Abstract

This article introduces a simple model for repeated observations of an ordered categorical response variable which is isotonic over time. It is assumed that the measurements represent an irreversible process such that the response at time t is never lower than the response observed at the previous time point t − 1. Observations of this type occur, for example, in treatment studies when improvement is measured on an ordinal scale. As the response at time t depends on the previous outcome, the number of ordered response categories depends on the previous outcome leading to severe problems when simple threshold models for ordered data are used. To avoid these problems, the isotonic sequential model is introduced. It accounts for the irreversible process by considering the binary transitions to higher scores and allows a parsimonious parameterization. It is shown how the model may easily be estimated using existing software. Moreover, the model is extended to a random effects version which explicitly takes heterogeneity of individuals and potential correlations into account.
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用等渗序贯回归法模拟重复有序测量
本文介绍了一个简单的模型,用于重复观察一个有序的分类响应变量,该变量随时间等渗。假设测量代表一个不可逆过程,使得时间t的响应永远不会低于在前一个时间点t - 1观察到的响应。这种类型的观察发生,例如,在治疗研究中,当改善是在有序尺度上测量时。由于时间t的响应取决于先前的结果,因此有序响应类别的数量取决于先前的结果,当使用有序数据的简单阈值模型时,会导致严重的问题。为了避免这些问题,引入了等渗序列模型。它通过考虑二进制转换到更高分数来解释不可逆过程,并允许简约的参数化。它显示了如何使用现有的软件容易地估计模型。此外,该模型被扩展到一个随机效应版本,明确地考虑了个体的异质性和潜在的相关性。
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