Comparative analysis of protein-protein interaction networks in neural differentiation mechanisms

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2022-07-01 DOI:10.1016/j.diff.2022.05.003
Marzieh Moazeny , Ali Salari , Zohreh Hojati , Fariba Esmaeili
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引用次数: 1

Abstract

Neural differentiation as a major process during neural cell therapy is one of the main issues that is not fully characterized. This study focuses on the major deconstruction of the transcriptional networks that regulate cell fate determination during neural differentiation under the influence of RA signalling. In our studies, we used four different microarray datasets containing a total of 15,660 genes to determine which genes were differentially expressed during neural differentiation from pluripotent stem cells (P19), among the 17 samples from four different datasets that were integrated via meta-analysis approaches. Of the 15,660 gene expression in our data integration, 443 DEGs are induced during neural differentiation. Upstream dissection of these 443 DEGs revealed a network of protein-protein interactions (PPIs) from TFs and kinases, as well as intermediate proteins between them, which are indicated by three (POU51, NANOG, and FOXO1) down-expression genes and one PAX6 up-expression gene playing roles in up-stream of these 443 induced DEGs during neural differentiation. The constructed network from the PPIs database revealed that four novel sub-networks play major roles in neuron differentiation in cluster 3, retinol metabolism in cluster 4, Rap1 signalling pathways in cluster 2, and axonogenesis in cluster 6. These four clusters have revealed very useful information about how neural characterization will be created from pluripotent stem cells.

This research reveals a plethora of information on the neural differentiation process, including cell commitment and neural differentiation, and lays the groundwork for future research into particular pathways involving protein-protein interactions in neurogenesis.

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神经分化机制中蛋白-蛋白相互作用网络的比较分析
神经分化作为神经细胞治疗的一个重要过程,是目前尚未完全描述的主要问题之一。本研究的重点是在RA信号的影响下,在神经分化过程中调节细胞命运决定的转录网络的主要解构。在我们的研究中,我们使用了四个不同的微阵列数据集,共包含15,660个基因,以确定在多能干细胞(P19)的神经分化过程中哪些基因是差异表达的,其中来自四个不同数据集的17个样本通过荟萃分析方法进行了整合。在我们数据整合的15,660个基因表达中,443个基因是在神经分化过程中诱导的。对这443个deg进行上游解剖,发现了一个由tf和激酶之间的蛋白相互作用(PPIs)网络,以及它们之间的中间蛋白,这是由3个(POU51、NANOG和FOXO1)下调表达基因和1个PAX6上调表达基因在这些443个诱导deg的上游神经分化过程中发挥作用所指示的。从PPIs数据库构建的网络显示,4个新的子网络在簇3的神经元分化、簇4的视黄醇代谢、簇2的Rap1信号通路和簇6的轴突发生中发挥重要作用。这四个集群揭示了如何从多能干细胞中创建神经特性的非常有用的信息。这项研究揭示了神经分化过程的大量信息,包括细胞承诺和神经分化,并为未来研究涉及神经发生中蛋白质-蛋白质相互作用的特定途径奠定了基础。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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