首页> 外文期刊>Plant Biotechnology Journal >A combination of gene expression ranking and co?¢????expression network analysis increases discovery rate in large?¢????scale mutant screens for novel Arabidopsis thaliana abiotic stress genes
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A combination of gene expression ranking and co?¢????expression network analysis increases discovery rate in large?¢????scale mutant screens for novel Arabidopsis thaliana abiotic stress genes

机译:基因表达排名和共表达网络分析的结合提高了新型拟南芥非生物胁迫基因在大规模突变体筛选中的发现率

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As challenges to food security increase, the demand for lead genes for improving crop production is growing. However, genetic screens of plant mutants typically yield very low frequencies of desired phenotypes. Here, we present a powerful computational approach for selecting candidate genes for screening insertion mutants. We combined ranking of Arabidopsis thaliana regulatory genes according to their expression in response to multiple abiotic stresses (Multiple Stress [MST] score), with stress?¢????responsive RNA co?¢????expression network analysis to select candidate multiple stress regulatory ( MSTR ) genes. Screening of 62 T?¢????DNA insertion mutants defective in candidate MSTR genes, for abiotic stress germination phenotypes yielded a remarkable hit rate of up to 62%; this gene discovery rate is 48?¢????fold greater than that of other large?¢????scale insertional mutant screens. Moreover, the MST score of these genes could be used to prioritize them for screening. To evaluate the contribution of the co?¢????expression analysis, we screened 64 additional mutant lines of MST?¢????scored genes that did not appear in the RNA co?¢????expression network. The screening of these MST?¢????scored genes yielded a gene discovery rate of 36%, which is much higher than that of classic mutant screens but not as high as when picking candidate genes from the co?¢????expression network. The MSTR co?¢????expression network that we created, AraSTressRegNet is publicly available at http:/etbio.bgu.ac.il/arnet . This systems biology?¢????based screening approach combining gene ranking and network analysis could be generally applicable to enhancing identification of genes regulating additional processes in plants and other organisms provided that suitable transcriptome data are available.
机译:随着粮食安全挑战的增加,对改善作物产量的先导基因的需求正在增长。但是,植物突变体的遗传筛选通常会产生非常低的所需表型频率。在这里,我们提出了一种强大的计算方法,用于选择候选基因来筛选插入突变体。我们根据拟南芥调节基因对多种非生物胁迫(多重胁迫[MST]得分)的反应表达的等级,并结合应激反应RNA共表达网络分析,将候选基因进行筛选,以筛选出候选基因多重压力调节(MSTR)基因。筛选出62个在候选MSTR基因中有缺陷的T 6 -DNA插入突变体,以非生物胁迫发芽表型产生了高达62%的显着命中率。该基因的发现率是其他大范围的插入突变体筛选的48倍。此外,这些基因的MST分数可用于对它们进行优先排序以进行筛选。为了评估共表达的贡献,我们筛选了64个MST评分分子的突变株,这些突变株未出现在RNA共表达网络中。通过筛选这些MSTα得分基因,可发现36%的基因发现率,这比经典的突变体筛选方法高得多,但不如从合作伙伴中挑选候选基因时高。表达网络。我们创建的MSTR合作表达网络AraSTressRegNet可从http:/etbio.bgu.ac.il/arnet公开获得。只要有合适的转录组数据,这种结合基因排名和网络分析的基于系统生物学的筛选方法通常可用于增强对调节植物和其他生物中其他过程的基因的鉴定。

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