Department of Animal Sciences, University of Wisconsin-Madison, Madison, WI.
Department of Statistics, Kansas State University, Manhattan, KS.
J Anim Sci. 2018 Sep 29;96(10):4045-4062. doi: 10.1093/jas/sky277.
Understanding causal mechanisms among variables is critical to efficient management of complex biological systems such as animal agriculture production. The increasing availability of data from commercial livestock operations offers unique opportunities for attaining causal insight, despite the inherently observational nature of these data. Causal claims based on observational data are substantiated by recent theoretical and methodological developments in the rapidly evolving field of causal inference. Thus, the objectives of this review are as follows: 1) to introduce a unifying conceptual framework for investigating causal effects from observational data in livestock, 2) to illustrate its implementation in the context of the animal sciences, and 3) to discuss opportunities and challenges associated with this framework. Foundational to the proposed conceptual framework are graphical objects known as directed acyclic graphs (DAGs). As mathematical constructs and practical tools, DAGs encode putative structural mechanisms underlying causal models together with their probabilistic implications. The process of DAG elicitation and causal identification is central to any causal claims based on observational data. We further discuss necessary causal assumptions and associated limitations to causal inference. Last, we provide practical recommendations to facilitate implementation of causal inference from observational data in the context of the animal sciences.
理解变量之间的因果机制对于有效管理复杂的生物系统(如动物农业生产)至关重要。尽管这些数据本质上是观察性的,但来自商业牲畜养殖场的数据的日益普及为获得因果洞察力提供了独特的机会。基于观察性数据的因果主张得到了因果推断这一快速发展领域中最近的理论和方法发展的支持。因此,本综述的目的如下:1)介绍用于研究牲畜中观察性数据因果效应的统一概念框架,2)说明其在动物科学背景下的实施情况,以及 3)讨论与该框架相关的机会和挑战。所提出的概念框架的基础是称为有向无环图(DAG)的图形对象。作为数学结构和实用工具,DAG 一起编码潜在的因果模型的结构机制及其概率含义。基于观察性数据的任何因果主张的核心都是 DAG 启发和因果识别过程。我们进一步讨论了必要的因果假设和与因果推断相关的局限性。最后,我们提供了实用建议,以促进在动物科学背景下从观察性数据中进行因果推断。