Inferring Dynamic Regulatory Interaction Graphs from Time Series Data with Perturbations.

Dhananjay Bhaskar, Daniel Sumner Magruder, Matheo Morales, Edward De Brouwer, Aarthi Venkat, Frederik Wenkel, James Noonan, Guy Wolf, Natalia Ivanova, Smita Krishnaswamy
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Abstract

Complex systems are characterized by intricate interactions between entities that evolve dynamically over time. Accurate inference of these dynamic relationships is crucial for understanding and predicting system behavior. In this paper, we propose Regulatory Temporal Interaction Network Inference (RiTINI) for inferring time-varying interaction graphs in complex systems using a novel combination of space-and-time graph attentions and graph neural ordinary differential equations (ODEs). RiTINI leverages time-lapse signals on a graph prior, as well as perturbations of signals at various nodes in order to effectively capture the dynamics of the underlying system. This approach is distinct from traditional causal inference networks, which are limited to inferring acyclic and static graphs. In contrast, RiTINI can infer cyclic, directed, and time-varying graphs, providing a more comprehensive and accurate representation of complex systems. The graph attention mechanism in RiTINI allows the model to adaptively focus on the most relevant interactions in time and space, while the graph neural ODEs enable continuous-time modeling of the system's dynamics. We evaluate RiTINI's performance on simulations of dynamical systems, neuronal networks, and gene regulatory networks, demonstrating its state-of-the-art capability in inferring interaction graphs compared to previous methods.

从有扰动的时间序列数据推断动态调节相互作用图。
复杂系统的特点是实体之间复杂的相互作用,这些相互作用随时间动态演变。这些动态关系的准确推断对于理解和预测系统行为至关重要。本文提出了一种将时空图关注与图神经常微分方程(ODEs)相结合的新方法,用于复杂系统时变交互图的推理。为了有效地捕捉底层系统的动态,RiTINI利用了先验图上的延时信号,以及各个节点上的信号扰动。这种方法与传统的因果推理网络不同,传统的因果推理网络仅限于推断非循环和静态图。相比之下,RiTINI可以推断循环,有向和时变图,为复杂系统提供更全面和准确的表示。RiTINI中的图注意机制允许模型自适应地关注时间和空间中最相关的交互,而图神经ode则允许对系统动态进行连续时间建模。我们评估了RiTINI在模拟动力系统、神经网络和基因调控网络上的性能,与以前的方法相比,展示了其在推断相互作用图方面的最先进能力。
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