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An Automated Method To Predict Mouse Gene and Protein Sequences Using Variant Data

机译:使用变异数据预测小鼠基因和蛋白质序列的自动化方法

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摘要

With recent advances in sequencing technologies, the scientific community has begun to probe the potential genetic bases behind complex phenotypes in humans and model organisms. In many cases, the genomes of genetically distinct strains of model organisms, such as the mouse ( , have not been fully sequenced. Here, we report on a tool designed to use single-nucleotide polymorphism (SNP) and insertion-deletion (indel) data to predict gene, mRNA, and protein sequences for up to 36 genetically distinct mouse strains. By automated querying of freely accessible databases through a graphical interface, the software requires no data and little computational experience. As a proof of concept, we predicted the gene and amino acid sequence of the aryl hydrocarbon receptor ( ) for all inbred mouse strains of which variant data were currently available through Mouse Genome Project. Predicted sequences were compared with fully sequenced genomes to show that the tool is effective in predicting gene and protein sequences.
机译:随着测序技术的最新发展,科学界已开始探索人类和模型生物中复杂表型背后的潜在遗传基础。在许多情况下,模型生物的遗传上不同的菌株的基因组,例如小鼠()尚未完全测序。在这里,我们报道了一种设计用于使用单核苷酸多态性(SNP)和插入缺失(indel)的工具数据来预测多达36种遗传上不同的小鼠品系的基因,mRNA和蛋白质序列。通过图形界面自动查询可自由访问的数据库,该软件不需要数据,也不需要多少计算经验。作为概念证明,我们预测了目前可通过Mouse Genome Project获得变异数据的所有近交小鼠品系的芳烃受体()的基因和氨基酸序列,并将预测的序列与全序列基因组进行比较,表明该工具可有效预测基因和蛋白质序列。

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