理解多重病态:图形模型的见解。

IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Erika Banzato, Alberto Roverato, Alessandra Buja, Giovanna Boccuzzo
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引用次数: 0

摘要

背景:由于图形模型对结果的直观可视化,在多病背景下使用图形模型越来越受欢迎。对模型本身的全面了解是有效利用和优化应用的必要条件。本文是关于使用图形模型来更好地理解多病态的实用指南。它提供了一个教程,重点是对模型结构和参数值的解释。在这项研究中,我们分析了由帕多瓦省(意大利东北部)当地卫生单位协助的214,401人的队列数据,从医院出院表中收集信息。方法:我们解释了一些基本概念,特别注意边缘联想和条件联想之间的区别。我们强调将多病态视为一个网络的重要性,其中所涉及的变量是相互作用的互连系统的一部分,以纠正分析中的虚假影响。我们通过引入和解释一些中心性度量来展示如何分析从数据中学习到的网络结构。最后,我们将通过调整人口特征得到的模型与分层分析的结果进行比较。结果:使用估计模型中的示例,我们展示了边缘关联和条件关联之间的关键差异。具体来说,我们表明,在边际上,所有变量似乎都是相关的,而在考虑条件关联时,情况并非如此,其中许多变量似乎是给定其他变量的条件独立的。我们展示了中心性指数分析的结果,揭示了心血管疾病在网络中占据中心位置,而不像感觉器官疾病等更外围的疾病。最后,我们说明了在亚种群中估计的网络之间的差异,强调了不同群体之间疾病关联的差异。结论:图形模型是分析多发病的通用工具,在控制其他变量影响的同时提供对疾病关联的见解。本文提供了图形模型的概述,但不关注详细的方法,强调了它们在理解网络结构和潜在亚组差异方面的效用,例如多病模式中与性别相关的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding multimorbidity: insights with graphical models.

Background: The use of graphical models in the multimorbidity context is increasing in popularity due to their intuitive visualization of the results. A comprehensive understanding of the model itself is essential for its effective utilization and optimal application. This article is a practical guide on the use of graphical models to better understand multimorbidity. It provides a tutorial with a focus on the interpretation of the model structure and of the parameter values. In this study, we analyze data related to a cohort of 214,401 individuals, who were assisted by the Local Health Unit of the province of Padova (north-eastern Italy), collecting information from hospital discharge forms.

Methods: We explain some fundamental concepts, with special attention to the difference between marginal and conditional associations. We emphasize the importance of considering multimorbidity as a network, where the variables involved are part of an interconnected system of interactions, to correct for spurious effects in the analysis. We show how to analyze the network structure learned from the data by introducing and explaining some centrality measures. Finally, we compare the model obtained by adjusting for population characteristics with the results of a stratified analysis.

Results: Using examples from the estimated model, we demonstrate the key differences between marginal and conditional associations. Specifically, we show that, marginally, all variables appear associated, while this is not the case when considering conditional associations, where many variables appear to be conditionally independent given the others. We present the results from the analysis of centrality indices, revealing that cardiovascular diseases occupy a central position in the network, unlike more peripheral conditions such as sensory organ diseases. Finally, we illustrate the differences between networks estimated in subpopulations, highlighting how disease associations vary across different groups.

Conclusion: Graphical models are a versatile tool for analyzing multimorbidity, offering insights into disease associations while controlling for the effects of other variables. This paper provides an overview of graphical models without focusing on detailed methodology, highlighting their utility in understanding network structures and potential subgroup differences, such as gender-related variations in multimorbidity patterns.

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来源期刊
BMC Medical Research Methodology
BMC Medical Research Methodology 医学-卫生保健
CiteScore
6.50
自引率
2.50%
发文量
298
审稿时长
3-8 weeks
期刊介绍: BMC Medical Research Methodology is an open access journal publishing original peer-reviewed research articles in methodological approaches to healthcare research. Articles on the methodology of epidemiological research, clinical trials and meta-analysis/systematic review are particularly encouraged, as are empirical studies of the associations between choice of methodology and study outcomes. BMC Medical Research Methodology does not aim to publish articles describing scientific methods or techniques: these should be directed to the BMC journal covering the relevant biomedical subject area.
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