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HSCVFNT: Inference of Time-Delayed Gene Regulatory Network Based on Complex-Valued Flexible Neural Tree Model

机译:HSCVFNT:基于复值柔性神经树模型的时延基因调控网络推断

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摘要

Gene regulatory network (GRN) inference can understand the growth and development of animals and plants, and reveal the mystery of biology. Many computational approaches have been proposed to infer GRN. However, these inference approaches have hardly met the need of modeling, and the reducing redundancy methods based on individual information theory method have bad universality and stability. To overcome the limitations and shortcomings, this thesis proposes a novel algorithm, named HSCVFNT, to infer gene regulatory network with time-delayed regulations by utilizing a hybrid scoring method and complex-valued flexible neural network (CVFNT). The regulations of each target gene can be obtained by iteratively performing HSCVFNT. For each target gene, the HSCVFNT algorithm utilizes a novel scoring method based on time-delayed mutual information (TDMI), time-delayed maximum information coefficient (TDMIC) and time-delayed correlation coefficient (TDCC), to reduce the redundancy of regulatory relationships and obtain the candidate regulatory factor set. Then, the TDCC method is utilized to create time-delayed gene expression time-series matrix. Finally, a complex-valued flexible neural tree model is proposed to infer the time-delayed regulations of each target gene with the time-delayed time-series matrix. Three real time-series expression datasets from (Save Our Soul) SOS DNA repair system in E. coli and Saccharomyces cerevisiae are utilized to evaluate the performance of the HSCVFNT algorithm. As a result, HSCVFNT obtains outstanding F-scores of 0.923, 0.8 and 0.625 for SOS network and (In vivo Reverse-Engineering and Modeling Assessment) IRMA network inference, respectively, which are 5.5%, 14.3% and 72.2% higher than the best performance of other state-of-the-art GRN inference methods and time-delayed methods.
机译:基因调控网络(GRN)推断可以了解动植物的生长发育,并揭示生物学的奥秘。已经提出了许多计算方法来推断GRN。但是,这些推理方法几乎不能满足建模的需要,基于个体信息论方法的约简冗余方法普遍性和稳定性差。为克服这种局限性和不足,本文提出了一种新的算法HSCVFNT,该算法利用混合评分法和复值柔性神经网络(CVFNT)来推断具有时延调控的基因调控网络。每个靶基因的调控可通过反复进行HSCVFNT获得。对于每个靶基因,HSCVFNT算法利用基于时延互信息(TDMI),时延最大信息系数(TDMIC)和时延相关系数(TDCC)的新颖评分方法,以减少监管关系的冗余性并获得候选调节因子集。然后,利用TDCC方法创建时延基因表达时间序列矩阵。最后,提出了一个复值柔性神经树模型,利用时延时间序列矩阵来推导每个目标基因的时延规律。利用来自(Save Our Soul)SOS DNA修复系统的E. coli和啤酒酵母中的三个实时序列表达数据集来评估HSCVFNT算法的性能。结果,HSCVFNT对于SOS网络和(体内逆向工程和建模评估)IRMA网络推理分别获得了0.923、0.8和0.625的出色F评分,分别比最佳水平高5.5%,14.3%和72.2%。其他最新的GRN推理方法和延时方法的性能。

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