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一种用于分析具有大量零值的纵向结果的方法。

A method for analyzing longitudinal outcomes with many zeros.

作者信息

Xie Haiyi, McHugo Gregory, Sengupta Anjana, Clark Robin, Drake Robert

机构信息

Dartmouth Medical School, Lebanon, New Hampshire, USA.

出版信息

Ment Health Serv Res. 2004 Dec;6(4):239-46. doi: 10.1023/b:mhsr.0000044749.39484.1b.

Abstract

Health care utilization and cost data have challenged analysts because they are often correlated over time, highly skewed, and clumped at 0. Traditional approaches do not address all these problems, and evaluators of mental health and substance abuse interventions often grapple with the problem of how to analyze these data in a way that accurately represents program impact. Recently, the traditional 2-part model has been extended to mixed-effects mixed-distribution model with correlated random effects to deal simultaneously with excess zeros, skewness, and correlated observations. We introduce and demonstrate this new method to mental health services researchers and evaluators by analyzing the data from a study of assertive community treatment (ACT). The response variable is the number of days of hospitalization, collected every 6 months over 3 years. The explanatory variable is group: ACT vs. standard case management. Diagnosis (schizophrenia vs. bipolar disorder), time, and the baseline values of hospital days are covariates. Results indicate that clients in the ACT group have a higher probability of hospital admission, but tend to have shorter lengths of stay. The mixed-distribution model provides greater specification of a model to fit these data and leads to more refined interpretation of the results.

摘要

医疗保健利用和成本数据给分析人员带来了挑战,因为这些数据往往随时间相关、高度偏态且在零处聚集。传统方法无法解决所有这些问题,心理健康和药物滥用干预措施的评估人员常常纠结于如何以准确反映项目影响的方式分析这些数据。最近,传统的两部分模型已扩展为具有相关随机效应的混合效应混合分布模型,以同时处理过多的零值、偏态和相关观测值。我们通过分析一项积极社区治疗(ACT)研究的数据,向心理健康服务研究人员和评估人员介绍并演示了这种新方法。响应变量是住院天数,在3年中每6个月收集一次。解释变量是组别:ACT组与标准病例管理组。诊断(精神分裂症与双相情感障碍)、时间以及住院天数的基线值是协变量。结果表明,ACT组的患者入院概率更高,但住院时间往往更短。混合分布模型为拟合这些数据提供了更完善的模型设定,并能对结果进行更精确的解释。

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