Institute for Environmental Genomics, University of Oklahoma, Norman, OK 73019.
Department of Microbiology and Plant Biology, University of Oklahoma, Norman, OK 73019.
Proc Natl Acad Sci U S A. 2022 Jan 11;119(2). doi: 10.1073/pnas.2109995119.
Networks are vital tools for understanding and modeling interactions in complex systems in science and engineering, and direct and indirect interactions are pervasive in all types of networks. However, quantitatively disentangling direct and indirect relationships in networks remains a formidable task. Here, we present a framework, called iDIRECT (Inference of Direct and Indirect Relationships with Effective Copula-based Transitivity), for quantitatively inferring direct dependencies in association networks. Using copula-based transitivity, iDIRECT eliminates/ameliorates several challenging mathematical problems, including ill-conditioning, self-looping, and interaction strength overflow. With simulation data as benchmark examples, iDIRECT showed high prediction accuracies. Application of iDIRECT to reconstruct gene regulatory networks in also revealed considerably higher prediction power than the best-performing approaches in the DREAM5 (Dialogue on Reverse Engineering Assessment and Methods project, #5) Network Inference Challenge. In addition, applying iDIRECT to highly diverse grassland soil microbial communities in response to climate warming showed that the iDIRECT-processed networks were significantly different from the original networks, with considerably fewer nodes, links, and connectivity, but higher relative modularity. Further analysis revealed that the iDIRECT-processed network was more complex under warming than the control and more robust to both random and target species removal ( < 0.001). As a general approach, iDIRECT has great advantages for network inference, and it should be widely applicable to infer direct relationships in association networks across diverse disciplines in science and engineering.
网络是理解和建模科学与工程中复杂系统相互作用的重要工具,直接和间接相互作用在所有类型的网络中都普遍存在。然而,定量区分网络中的直接和间接关系仍然是一项艰巨的任务。在这里,我们提出了一种称为 iDIRECT(有效Copula 基传递性推断直接和间接关系)的框架,用于定量推断关联网络中的直接依赖关系。使用基于Copula 的传递性,iDIRECT 消除/缓解了几个具有挑战性的数学问题,包括病态、自环和相互作用强度溢出。使用仿真数据作为基准示例,iDIRECT 显示出了较高的预测精度。将 iDIRECT 应用于基因调控网络的重建也显示出比 DREAM5(反向工程评估和方法项目,#5)网络推断挑战赛中表现最好的方法具有更高的预测能力。此外,将 iDIRECT 应用于对气候变暖响应的高度多样化的草原土壤微生物群落表明,经过 iDIRECT 处理的网络与原始网络显著不同,节点、链接和连通性都明显减少,但相对模块性更高。进一步分析表明,与对照相比,在变暖条件下,经过 iDIRECT 处理的网络更加复杂,并且对随机和目标物种去除的鲁棒性更高(<0.001)。作为一种通用方法,iDIRECT 在网络推断方面具有很大的优势,并且应该广泛适用于科学和工程领域中关联网络中直接关系的推断。