计算转录能力的计算机方法

Young-Sup Lee, Kyung-Hye Won, Jae-Don Oh, Donghyun Shin
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摘要

我们寻求了新的概念,转录能力(TC),并分析了TC。我们通过计算机方法估计TC。TC是指转录物在翻译后作为酶或蛋白质功能在细胞中发挥的能力。我们使用全基因组关联研究(GWAS)β效应和RNA测序中的转录水平来估计TC。该特征是体脂百分比,转录物读数来自人类蛋白质图谱。假设GWASβ效应是基因的效应,TC与相应的基因效应和转录物读数有关。此外,我们调查了最高TC和最低TC基因的基因本体论(GO)。TC最高的最常见GOs是神经元相关的和细胞投射组织相关的。TC最低的GOs最常见的是与伤口愈合相关的和与胚胎发育相关的。我们希望我们的分析有助于估计不同物种的TC,并为新的生物信息学分析发挥有益作用。
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In silico approach to calculate the transcript capacity
We sought the novel concept, transcript capacity (TC) and analyzed TC. Our approach to estimate TC was through an in silico method. TC refers to the capacity that a transcript exerts in a cell as enzyme or protein function after translation. We used the genome-wide association study (GWAS) beta effect and transcription level in RNA-sequencing to estimate TC. The trait was body fat percent and the transcript reads were obtained from the human protein atlas. The assumption was that the GWAS beta effect is the gene’s effect and TC was related to the corresponding gene effect and transcript reads. Further, we surveyed gene ontology (GO) in the highest TC and the lowest TC genes. The most frequent GOs with the highest TC were neuronal-related and cell projection organization related. The most frequent GOs with the lowest TC were wound-healing related and embryo development related. We expect that our analysis contributes to estimating TC in the diverse species and playing a benevolent role to the new bioinformatic analysis.
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