Huang Yun, Huang Sen, Zhang Xiao-Fei, Ou-Yang Le, Liu Chen
Department of Geriatrics, The First Affiliated Hospital of Fujian Medical University, Fuzhou 350005, China.
Clinical Research Center for Geriatric Hypertension Disease of Fujian province, The First Affiliated Hospital of Fujian Medical University, Fuzhou 350005, China.
Comput Struct Biotechnol J. 2024 Aug 22;23:3199-3210. doi: 10.1016/j.csbj.2024.08.010. eCollection 2024 Dec.
Inferring the interactions between genes is essential for understanding the mechanisms underlying biological processes. Gene networks will change along with the change of environment and state. The accumulation of gene expression data from multiple states makes it possible to estimate the gene networks in various states based on computational methods. However, most existing gene network inference methods focus on estimating a gene network from a single state, ignoring the similarities between networks in different but related states. Moreover, in addition to individual edges, similarities and differences between different networks may also be driven by hub genes. But existing network inference methods rarely consider hub genes, which affects the accuracy of network estimation. In this paper, we propose a novel node-based joint Gaussian copula graphical (NJGCG) model to infer multiple gene networks from gene expression data containing heterogeneous samples jointly. Our model can handle various gene expression data with missing values. Furthermore, a tree-structured group lasso penalty is designed to identify the common and specific hub genes in different gene networks. Simulation studies show that our proposed method outperforms other compared methods in all cases. We also apply NJGCG to infer the gene networks for different stages of differentiation in mouse embryonic stem cells and different subtypes of breast cancer, and explore changes in gene networks across different stages of differentiation or different subtypes of breast cancer. The common and specific hub genes in the estimated gene networks are closely related to stem cell differentiation processes and heterogeneity within breast cancers.
推断基因之间的相互作用对于理解生物过程背后的机制至关重要。基因网络会随着环境和状态的变化而改变。来自多个状态的基因表达数据的积累使得基于计算方法估计各种状态下的基因网络成为可能。然而,大多数现有的基因网络推断方法专注于从单一状态估计基因网络,忽略了不同但相关状态下网络之间的相似性。此外,除了单个边之外,不同网络之间的相似性和差异也可能由枢纽基因驱动。但现有的网络推断方法很少考虑枢纽基因,这影响了网络估计的准确性。在本文中,我们提出了一种新颖的基于节点的联合高斯Copula图形(NJGCG)模型,用于从包含异质样本的基因表达数据中联合推断多个基因网络。我们的模型可以处理具有缺失值的各种基因表达数据。此外,设计了一种树状结构的组套索惩罚来识别不同基因网络中的共同和特定枢纽基因。模拟研究表明,我们提出的方法在所有情况下都优于其他比较方法。我们还应用NJGCG推断小鼠胚胎干细胞分化不同阶段和乳腺癌不同亚型的基因网络,并探索基因网络在分化不同阶段或乳腺癌不同亚型之间的变化。估计的基因网络中的共同和特定枢纽基因与干细胞分化过程和乳腺癌内的异质性密切相关。