基于有向无环图的模拟的当前和未来潜力

Lutz P. Breitling , Anca D. Dragomir , Chongyang Duan , George Luta
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引用次数: 0

摘要

现实世界的数据在监管决策中发挥着越来越重要的作用。在这种情况下,充分解决偏见是至关重要的。使用有向无环图(dag)的偏差结构表示提供了一种统一的方法来概念化偏差,区分不同类型的偏差,并确定解决偏差的方法。基于dag的数据模拟进一步增强了这种方法的范围。最近,dag被用来证明缺失的资格信息如何影响模拟靶试验分析,这是一种利用真实世界数据估计治疗效果的前沿方法。在过去几年中,模拟对方法学研究的重要性已经得到了广泛的认可,其他人认为基于dag的模拟数据对理解各种流行病学概念特别有帮助。在目前的工作中,我们提出了两个具体的例子,说明如何使用基于dag的模拟来深入了解现实世界分析中常见的问题,即回归建模来解决混淆偏差,以及选择偏差的潜在程度。增加可访问性和扩展现有软件的模拟算法以包括纵向和事件时间数据被确定为进一步开发的优先事项。有了这样的扩展,基于dag的模拟将成为一个更强大的工具,促进我们对快速增长的现实世界分析工具箱的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the current and future potential of simulations based on directed acyclic graphs
Real-world data are playing an increasingly important role in regulatory decision making. Adequately addressing bias is of paramount importance in this context. Structural representations of bias using directed acyclic graphs (DAGs) provide a unified approach to conceptualize bias, distinguish between different types of bias, and identify ways to address bias. DAG-based data simulation further enhances the scope of this approach. Recently, DAGs have been used to demonstrate how missing eligibility information can compromise emulated target trial analysis, a cutting edge approach to estimate treatment effects using real-world data. The importance of simulation for methodological research has received substantial recognition in the past few years, and others have argued that simulating data based on DAGs can be especially helpful for understanding various epidemiological concepts. In the present work, we present two concrete examples of how simulations based on DAGs can be used to gain insights into issues commonly encountered in real-world analytics, i.e., regression modelling to address confounding bias, and the potential extent of selection bias. Increasing accessibility and extending the simulation algorithms of existing software to include longitudinal and time-to-event data are identified as priorities for further development. With such extensions, simulations based on DAGs would be an even more powerful tool to advance our understanding of the rapidly growing toolbox of real-world analytics.
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来源期刊
Global Epidemiology
Global Epidemiology Medicine-Infectious Diseases
CiteScore
5.00
自引率
0.00%
发文量
22
审稿时长
39 days
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