...
首页> 外文期刊>Journal of consulting and clinical psychology >Modeling Nonlinear Time-Dependent Treatment Effects: An Application of the Generalized Time-Varying Effect Model (TVEM)
【24h】

Modeling Nonlinear Time-Dependent Treatment Effects: An Application of the Generalized Time-Varying Effect Model (TVEM)

机译:非线性时变治疗效果建模:广义时变效果模型(TVEM)的应用

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Objective: The goal of this article is to introduce to social and behavioral scientists the generalized time-varying effect model (TVEM), a semiparametric approach for investigating time-varying effects of a treatment. The method is best suited for data collected intensively over time (e.g., experience sampling or ecological momentary assessments) and addresses questions pertaining to effects of treatment changing dynamically with time. Thus, of interest is the description of timing, magnitude, and (nonlinear) patterns of the effect. Method: Our presentation focuses on practical aspects of the model. A step-by-step demonstration is presented in the context of an empirical study designed to evaluate effects of surgical treatment on quality of life among early stage lung cancer patients during posthospitalization recovery (N = 59; 61% female, M age = 66.1 years). Frequency and level of distress associated with physical symptoms were assessed twice daily over a 2-week period, providing a total of 1,544 momentary assessments. Results: Traditional analyses (analysis of covariance [ANCOVA], repeated-measures ANCOVA, and multilevel modeling) yielded findings of no group differences. In contrast, generalized TVEM identified a pattern of the effect that varied in time and magnitude. Group differences manifested after Day 4. Conclusions: Generalized TVEM is a flexible statistical approach that offers insight into the complexity of treatment effects and allows modeling of nonnormal outcomes. The practical demonstration, shared syntax, and availability of a free set of macros aim to encourage researchers to apply TVEM to complex data and stimulate important scientific discoveries.
机译:目的:本文的目的是向社会和行为科学家介绍广义时变效应模型(TVEM),这是一种用于研究治疗时变效应的半参数方法。该方法最适合于随时间推移密集收集的数据(例如经验采样或生态瞬时评估),并解决与治疗效果随时间动态变化有关的问题。因此,有趣的是对效果的时间,幅度和(非线性)模式的描述。方法:我们的演示集中在模型的实际方面。在一项旨在评估手术治疗对早期肺癌患者住院后恢复期间生活质量的影响的经验研究中提供了分步演示(N = 59; 61%的女性,M年龄= 66.1岁)。在2周的时间内每天两次评估与身体症状相关的困扰的频率和水平,总共进行了1,544次瞬时评估。结果:传统分析(协方差分析[ANCOVA],重复测量的ANCOVA和多层次建模)得出的结果没有组差异。相比之下,广义TVEM识别出随时间和幅度变化的效果模式。第4天后出现组差异。结论:广义TVEM是一种灵活的统计方法,可洞悉治疗效果的复杂性,并可以对非正常结果进行建模。实用的演示,共享的语法以及免费的宏集的可用性旨在鼓励研究人员将TVEM应用于复杂数据并激发重要的科学发现。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号