Chen Feng, Li Chunhe
Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai 200433, China.
Shanghai Center for Mathematical Sciences, Fudan University, Shanghai 200433, China.
NAR Genom Bioinform. 2022 Sep 13;4(3):lqac068. doi: 10.1093/nargab/lqac068. eCollection 2022 Sep.
The reconstruction of gene regulatory networks (GRNs) from data is vital in systems biology. Although different approaches have been proposed to infer causality from data, some challenges remain, such as how to accurately infer the direction and type of interactions, how to deal with complex network involving multiple feedbacks, as well as how to infer causality between variables from real-world data, especially single cell data. Here, we tackle these problems by deep neural networks (DNNs). The underlying regulatory network for different systems (gene regulations, ecology, diseases, development) can be successfully reconstructed from trained DNN models. We show that DNN is superior to existing approaches including Boolean network, Random Forest and partial cross mapping for network inference. Further, by interrogating the ensemble DNN model trained from single cell data from dynamical system perspective, we are able to unravel complex cell fate dynamics during preimplantation development. We also propose a data-driven approach to quantify the energy landscape for gene regulatory systems, by combining DNN with the partial self-consistent mean field approximation (PSCA) approach. We anticipate the proposed method can be applied to other fields to decipher the underlying dynamical mechanisms of systems from data.
从数据中重建基因调控网络(GRN)在系统生物学中至关重要。尽管已经提出了不同的方法来从数据中推断因果关系,但仍存在一些挑战,例如如何准确推断相互作用的方向和类型,如何处理涉及多个反馈的复杂网络,以及如何从现实世界数据(尤其是单细胞数据)中推断变量之间的因果关系。在这里,我们通过深度神经网络(DNN)来解决这些问题。不同系统(基因调控、生态学、疾病、发育)的潜在调控网络可以从训练好的DNN模型中成功重建。我们表明,DNN在网络推断方面优于包括布尔网络、随机森林和部分交叉映射在内的现有方法。此外,通过从动态系统角度审视从单细胞数据训练的集成DNN模型,我们能够揭示植入前发育过程中复杂的细胞命运动态。我们还提出了一种数据驱动的方法,通过将DNN与部分自洽平均场近似(PSCA)方法相结合,来量化基因调控系统的能量景观。我们预计所提出的方法可以应用于其他领域,以从数据中解读系统的潜在动态机制。