基于图神经网络链接预测的基因调控网络推断

S. Ganeshamoorthy, L. Roden, D. Klepl, F. He
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引用次数: 0

摘要

基因调控网络(grn)描述了转录因子(tf)与其靶基因之间的因果调控相互作用[2],其中tf是调节基因转录的蛋白质。GRN在解释基因功能方面起着至关重要的作用,它有助于识别和优先考虑候选基因进行功能分析[3]。目前,高维转录组数据集是由高通量测序技术产生的,如微阵列和RNA-Seq。这些技术可以同时捕获数千个基因表达的差异。通过这些湿实验室实验,在网络水平上研究大量基因或tf之间的相互联系是具有挑战性的[4]。因此,通过统计和机器学习方法从高维基因表达数据推断grn是计算生物学的重要课题之一[2]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene Regulatory Network Inference through Link Prediction using Graph Neural Network
Gene Regulatory Networks (GRNs) depict the causal regulatory interactions between transcription factors (TFs) and their target genes [2], where TFs are proteins that regulate gene transcription. GRN plays a vital role in explaining gene function, which helps to identify and prioritize the candidate genes for functional analysis [3]. Currently, high-dimensional transcriptome datasets are produced from high-throughput sequencing techniques, such as microarray and RNA-Seq. These techniques can capture the differences in the expression of thousands of genes at once. Through these wet-lab experiments, studying the interconnections among a large number of genes or TFs at a network level is challenging [4]. Therefore, one of the important topics in computational biology is the inference of GRNs from high-dimensional gene expression data through statistical and machine learning approaches [2].
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