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A U-statistics-based approach for modeling Cronbach coefficient alpha within a longitudinal data setting.

机译:基于U统计量的方法,用于在纵向数据设置内对Cronbach系数α进行建模。

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摘要

Cronbach coefficient alpha (CCA) is a classic measure of item internal consistency of an instrument and is used in a wide range of behavioral, biomedical, psychosocial, and health-care-related research. Methods are available for making inference about one CCA or multiple CCAs from correlated outcomes. However, none of the existing approaches effectively address missing data. As longitudinal study designs become increasingly popular and complex in modern-day clinical studies, missing data have become a serious issue, and the lack of methods to systematically address this problem has hampered the progress of research in the aforementioned fields. In this paper, we develop a novel approach to tackle the complexities involved in addressing missing data (at the instrument level due to subject dropout) within a longitudinal data setting. The approach is illustrated with both clinical and simulated data.
机译:Cronbach系数α(CCA)是衡量仪器内部一致性的经典方法,广泛用于行为,生物医学,社会心理和医疗保健相关研究。有一些方法可以根据相关结果推断一个CCA或多个CCA。但是,现有方法均无法有效解决丢失的数据。随着纵向研究设计在现代临床研究中变得越来越流行和复杂,缺少数据已成为一个严重的问题,并且缺乏系统地解决此问题的方法已阻碍了上述领域的研究进展。在本文中,我们开发了一种新颖的方法来解决在纵向数据设置中处理缺失数据(在仪器级别由于主题丢失而导致的数据丢失)所涉及的复杂性。结合临床和模拟数据说明了该方法。

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