Sazal Musfiqur, Stebliankin Vitalii, Mathee Kalai, Yoo Changwon, Narasimhan Giri
Bioinformatics Research Group (BioRG), Florida International University, Miami, 33199, USA.
Herbert Wertheim College of Medicine, Florida International University, Miami, 33199, USA.
Sci Rep. 2021 Mar 11;11(1):5724. doi: 10.1038/s41598-021-84905-3.
Causal inference in biomedical research allows us to shift the paradigm from investigating associational relationships to causal ones. Inferring causal relationships can help in understanding the inner workings of biological processes. Association patterns can be coincidental and may lead to wrong conclusions about causality in complex systems. Microbiomes are highly complex, diverse, and dynamic environments. Microbes are key players in human health and disease. Hence knowledge of critical causal relationships among the entities in a microbiome, and the impact of internal and external factors on microbial abundance and their interactions are essential for understanding disease mechanisms and making appropriate treatment recommendations. In this paper, we employ causal inference techniques to understand causal relationships between various entities in a microbiome, and to use the resulting causal network to make useful computations. We introduce a novel pipeline for microbiome analysis, which includes adding an outcome or "disease" variable, and then computing the causal network, referred to as a "disease network", with the goal of identifying disease-relevant causal factors from the microbiome. Internventional techniques are then applied to the resulting network, allowing us to compute a measure called the causal effect of one or more microbial taxa on the outcome variable or the condition of interest. Finally, we propose a measure called causal influence that quantifies the total influence exerted by a microbial taxon on the rest of the microiome. Our pipeline is robust, sensitive, different from traditional approaches, and able to predict interventional effects without any controlled experiments. The pipeline can be used to identify potential eubiotic and dysbiotic microbial taxa in a microbiome. We validate our results using synthetic data sets and using results on real data sets that were previously published.
生物医学研究中的因果推断使我们能够将范式从研究关联关系转变为因果关系。推断因果关系有助于理解生物过程的内在运作。关联模式可能是巧合的,并且可能在复杂系统中导致关于因果关系的错误结论。微生物群落是高度复杂、多样且动态的环境。微生物是人类健康和疾病的关键因素。因此,了解微生物群落中各实体之间的关键因果关系,以及内部和外部因素对微生物丰度及其相互作用的影响,对于理解疾病机制和提出适当的治疗建议至关重要。在本文中,我们采用因果推断技术来理解微生物群落中各种实体之间的因果关系,并利用所得的因果网络进行有用的计算。我们引入了一种用于微生物群落分析的新颖流程,该流程包括添加一个结果或“疾病”变量,然后计算因果网络,即所谓的“疾病网络”,目的是从微生物群落中识别与疾病相关的因果因素。然后将干预技术应用于所得网络,使我们能够计算一种称为一个或多个微生物分类群对结果变量或感兴趣条件的因果效应的度量。最后,我们提出一种称为因果影响的度量,它量化了一个微生物分类群对微生物群落其余部分施加的总影响。我们的流程稳健、灵敏,不同于传统方法,并且能够在没有任何对照实验的情况下预测干预效果。该流程可用于识别微生物群落中潜在的有益和有害微生物分类群。我们使用合成数据集以及先前发表的真实数据集的结果来验证我们的结果。