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首页> 外文期刊>Nucleic Acids Research >Genome wide screens in yeast to identify potential binding sites and target genes of DNA-binding proteins
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Genome wide screens in yeast to identify potential binding sites and target genes of DNA-binding proteins

机译:酵母中的全基因组筛选,以识别潜在的结合位点和DNA结合蛋白的靶基因

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摘要

Knowledge of all binding sites for transcriptional activators and repressors is essential for computationally aided identification of transcriptional networks. The techniques developed for defining the binding sites of transcription factors tend to be cumbersome and not adaptable to high throughput. We refined a versatile yeast strategy to rapidly and efficiently identify genomic targets of DNA-binding proteins. Yeast expressing a transcription factor is mated to yeast containing a library of genomic fragments cloned upstream of the reporter gene URA3. DNA fragments with target-binding sites are identified by growth of yeast clones in media lacking uracil. The experimental approach was validated with the tumor suppressor protein p53 and the forkhead protein FoxI1 using genomic libraries for zebrafish and mouse generated by shotgun cloning of short genomic fragments. Computational analysis of the genomic fragments recapitulated the published consensus-binding site for each protein. Identified fragments were mapped to identify the genomic context of each binding site. Our yeast screening strategy, combined with bioinformatics approaches, will allow both detailed and high-throughput characterization of transcription factors, scalable to the analysis of all putative DNA-binding proteins.
机译:转录激活子和阻遏子的所有结合位点的知识对于转录网络的计算辅助识别至关重要。用于定义转录因子结合位点的技术往往很麻烦并且不适合高通量。我们完善了一种通用的酵母策略,可快速有效地识别DNA结合蛋白的基因组靶标。表达转录因子的酵母与包含克隆在报告基因URA3上游的基因组片段文库的酵母交配。具有靶标结合位点的DNA片段可通过酵母克隆在缺乏尿嘧啶的培养基中生长来鉴定。实验方法通过使用抑癌蛋白p53和叉头蛋白FoxI1进行了验证,并使用了由短基因组片段的fragments弹枪克隆产生的斑马鱼和小鼠基因组库。对基因组片段的计算分析概括了每种蛋白质的已公开共识结合位点。将鉴定的片段作图以鉴定每个结合位点的基因组背景。我们的酵母筛选策略与生物信息学方法相结合,将能够对转录因子进行详细和高通量的表征,可扩展用于分析所有假定的DNA结合蛋白。

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