Suppr超能文献

利用动态评估的时间序列分析揭示因果异质性:应用于心肌梗死后抑郁与身体活动之间的关联。

Revealing causal heterogeneity using time series analysis of ambulatory assessments: application to the association between depression and physical activity after myocardial infarction.

机构信息

Department of Psychiatry, University of Groningen, Groningen, The Netherlands.

出版信息

Psychosom Med. 2012 May;74(4):377-86. doi: 10.1097/PSY.0b013e3182545d47.

Abstract

OBJECTIVE

Studies in psychosomatic medicine are characterized by analyses that typically compare groups. This nomothetic approach leads to conclusions that apply to the average group member but not necessarily to individual patients. Idiographic studies start at the individual patient and are suitable to study associations that differ between time points or between individuals. We illustrate the advantages of the idiographic approach in analyzing ambulatory assessments, taking the association between depression and physical activity after myocardial infarction as an example.

METHODS

Five middle-aged men who had myocardial infarction with mild to moderate symptoms of depression were included in this study. Four of these participants monitored their physical activity and depressive symptoms during a period of 2 to 3 months using a daily self-registration form. The time series of each individual participant were investigated using vector autoregressive modeling, which enables the analysis of temporal dynamics between physical activity and depression.

RESULTS

We found causal heterogeneity in the association between depression and physical activity. Participants differed in the predominant direction of effect, which was either from physical activity to depression (n = 1, 85 observations, unstandardized effect size = -0.183, p = .03) or from depression to physical activity (n = 2, 65 and 59 observations, unstandardized effect sizes = -0.038 and -0.381, p < .001 and p = .04). Also, the persistency of effects differed among individuals.

CONCLUSIONS

Vector autoregressive models are suitable in revealing causal heterogeneity and can be easily used to analyze ambulatory assessments. We suggest that these models might bridge the gap between science and clinical practice by translating epidemiological results to individual patients.

摘要

目的

心身医学研究的特点是通常进行组间分析。这种规律方法得出的结论适用于平均组内成员,但不一定适用于个体患者。个体研究从个体患者开始,适合研究在不同时间点或个体之间存在差异的关联。我们以心肌梗死后抑郁与体力活动之间的关联为例,说明了个体研究方法的优势。

方法

本研究纳入了 5 名中年男性,他们均患有心肌梗死且有轻度至中度抑郁症状。其中 4 名参与者使用每日自我登记表格在 2 至 3 个月期间监测他们的体力活动和抑郁症状。使用向量自回归模型对每个个体参与者的时间序列进行研究,该模型可分析体力活动和抑郁之间的时间动态关系。

结果

我们发现抑郁与体力活动之间的关联存在因果异质性。参与者的主要效应方向不同,要么是体力活动引起抑郁(n = 1,85 次观察,未标准化效应大小 = -0.183,p =.03),要么是抑郁引起体力活动(n = 2,65 和 59 次观察,未标准化效应大小分别为-0.038 和-0.381,p <.001 和 p =.04)。此外,个体之间的效应持久性也存在差异。

结论

向量自回归模型适合揭示因果异质性,并且可以轻松用于分析动态评估数据。我们建议,这些模型可能通过将流行病学结果转化为个体患者,缩小科学与临床实践之间的差距。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验