Kordmahalleh Mina Moradi, Sefidmazgi Mohammad Gorji, Harrison Scott H, Homaifar Abdollah
Department of Electrical and Computer Engineering, North Carolina A&T State University, 1601 E. Market Street, Greensboro, 27411 NC USA.
Department of Biology, North Carolina A&T State University, 1601 E. Market Street, Greensboro, 27411 NC USA.
BioData Min. 2017 Aug 3;10:29. doi: 10.1186/s13040-017-0146-4. eCollection 2017.
The modeling of genetic interactions within a cell is crucial for a basic understanding of physiology and for applied areas such as drug design. Interactions in gene regulatory networks (GRNs) include effects of transcription factors, repressors, small metabolites, and microRNA species. In addition, the effects of regulatory interactions are not always simultaneous, but can occur after a finite time delay, or as a combined outcome of simultaneous and time delayed interactions. Powerful biotechnologies have been rapidly and successfully measuring levels of genetic expression to illuminate different states of biological systems. This has led to an ensuing challenge to improve the identification of specific regulatory mechanisms through regulatory network reconstructions. Solutions to this challenge will ultimately help to spur forward efforts based on the usage of regulatory network reconstructions in systems biology applications.
We have developed a hierarchical recurrent neural network (HRNN) that identifies time-delayed gene interactions using time-course data. A customized genetic algorithm (GA) was used to optimize hierarchical connectivity of regulatory genes and a target gene. The proposed design provides a non-fully connected network with the flexibility of using recurrent connections inside the network. These features and the non-linearity of the HRNN facilitate the process of identifying temporal patterns of a GRN.
Our HRNN method was implemented with the Python language. It was first evaluated on simulated data representing linear and nonlinear time-delayed gene-gene interaction models across a range of network sizes and variances of noise. We then further demonstrated the capability of our method in reconstructing GRNs of the synthetic network for in vivo benchmarking of reverse-engineering and modeling approaches (IRMA). We compared the performance of our method to TD-ARACNE, HCC-CLINDE, TSNI and ebdbNet across different network sizes and levels of stochastic noise. We found our HRNN method to be superior in terms of accuracy for nonlinear data sets with higher amounts of noise.
The proposed method identifies time-delayed gene-gene interactions of GRNs. The topology-based advancement of our HRNN worked as expected by more effectively modeling nonlinear data sets. As a non-fully connected network, an added benefit to HRNN was how it helped to find the few genes which regulated the target gene over different time delays.
细胞内遗传相互作用的建模对于深入理解生理学以及药物设计等应用领域至关重要。基因调控网络(GRN)中的相互作用包括转录因子、阻遏物、小分子代谢物和微小RNA种类的影响。此外,调控相互作用的影响并非总是同时发生,而是可能在有限的时间延迟后出现,或者是同时和时间延迟相互作用的综合结果。强大的生物技术已迅速且成功地测量基因表达水平,以阐明生物系统的不同状态。这引发了一个随之而来的挑战,即通过调控网络重建来改进特定调控机制的识别。应对这一挑战的解决方案最终将有助于推动基于调控网络重建在系统生物学应用中的努力。
我们开发了一种分层递归神经网络(HRNN),它使用时间进程数据识别时间延迟的基因相互作用。一种定制的遗传算法(GA)用于优化调控基因和目标基因的分层连接。所提出的设计提供了一个非完全连接的网络,具有在网络内部使用递归连接的灵活性。这些特性以及HRNN的非线性促进了识别GRN时间模式的过程。
我们的HRNN方法用Python语言实现。它首先在代表一系列网络大小和噪声方差的线性和非线性时间延迟基因 - 基因相互作用模型的模拟数据上进行评估。然后,我们进一步展示了我们的方法在重建用于逆向工程和建模方法体内基准测试(IRMA)的合成网络的GRN方面的能力。我们在不同网络大小和随机噪声水平下,将我们的方法与TD - ARACNE、HCC - CLINDE、TSNI和ebdbNet的性能进行了比较。我们发现我们的HRNN方法在处理具有较高噪声量的非线性数据集时,在准确性方面更具优势。
所提出的方法识别GRN的时间延迟基因 - 基因相互作用。我们的HRNN基于拓扑的改进按预期发挥作用,通过更有效地对非线性数据集进行建模。作为一个非完全连接的网络,HRNN的一个额外好处是它有助于找到在不同时间延迟下调控目标基因的少数基因。