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首页> 外文期刊>Biochimica et Biophysica Acta. Gene Regulatory Mechanisms >Inferring biosynthetic and gene regulatory networks from Artemisia annua RNA sequencing data on a credit card-sized ARM computer
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Inferring biosynthetic and gene regulatory networks from Artemisia annua RNA sequencing data on a credit card-sized ARM computer

机译:从Artemisia Annua RNA测序数据上推断生物合成和基因调节网络上的信用卡大小的ARM计算机

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摘要

Prediction of gene function and gene regulatory networks is one of the most active topics in bioinformatics. The accumulation of publicly available gene expression data for hundreds of plant species, together with advances in bioinformatical methods and affordable computing, sets ingenuity as one of the major bottlenecks in understanding gene function and regulation. Here, we show how a credit card-sized computer retailing for < 50 USD can be used to rapidly predict gene function and infer regulatory networks from RNA sequencing data. To achieve this, we constructed a bioinformatical pipeline that downloads and allows quality-control of RNA sequencing data; and generates a gene co-expression network that can reveal enzymes and transcription factors participating and controlling a given biosynthetic pathway. We exemplify this by first identifying genes and transcription factors involved in the biosynthesis of secondary cell wall in the plant Artemisia annua, the main natural source of the anti-malarial drug artemisinin. Networks were then used to dissect the artemisinin biosynthesis pathway, which suggest potential transcription factors regulating artemisinin biosynthesis. We provide the source code of our pipeline (https://github.com/mutwll/LSTrAP-Lite) and envision that the ubiquity of affordable computing, availability of biological data and increased bioinformatical training of biologists will transform the field of bioinformatics. This article is part of a Special Issue entitled: Transcriptional Profiles and Regulatory Gene Networks edited by Dr. Dr. Federico Manuel Giorgi and Dr. Shaun Mahony.
机译:基因函数和基因监管网络的预测是生物信息学中最活跃的主题之一。将公开的基因表达数据积累数百种植物物种以及生物信息方法的进步和实惠的计算,将聪明才智设定为理解基因功能和调节中的主要瓶颈之一。在这里,我们展示了如何使用信用卡大小的计算机零售能力如何从RNA测序数据迅速预测基因功能和推断监管网络。为实现这一目标,我们构建了一个生物信息流水线,下载并允许RNA测序数据的质量控制;并产生一种基因共表达网络,可以揭示参与和控制给定的生物合成途径的酶和转录因子。我们通过首先鉴定植物蒿属植物中涉及的次级细胞壁生物合成的基因和转录因子,抗疟疾药物的主要天然来源。然后使用网络来描述阿尔美霉素生物合成途径,这提出了调节蒿蛋白生物合成的潜在转录因子。我们提供我们管道的源代码(https://github.com/mutwll/lstrap-lite),并设想了无处不在的经济实惠的计算,生物数据的可用性和生物学家的生物信息训练增加将改变生物信息学的领域。本文是题为的特殊问题的一部分:由Federico Manuel Giorgi博士和Shaun Mahony博士编辑的转录简介和监管基因网络。

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