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DEOGEN2: prediction and interactive visualization of single amino acid variant deleteriousness in human proteins

机译:DEOGEN2:人蛋白质中单个氨基酸变异的预测和交互式可视化

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摘要

High-throughput sequencing methods are generating enormous amounts of genomic data, giving unprecedented insights into human genetic variation and its relation to disease. An individual human genome contains millions of Single Nucleotide Variants: to discriminate the deleterious from the benign ones, a variety of methods have been developed that predict whether a protein-coding variant likely affects the carrier individual's health. We present such a method, DEOGEN2, which incorporates heterogeneous information about the molecular effects of the variants, the domains involved, the relevance of the gene and the interactions in which it participates. This extensive contextual information is non-linearly mapped into one single deleteriousness score for each variant. Since for the non-expert user it is sometimes still difficult to assess what this score means, how it relates to the encoded protein, and where it originates from, we developed an interactive online framework () to better present the DEOGEN2 deleteriousness predictions of all possible variants in all human proteins. The prediction is visualized so both expert and non-expert users can gain insights into the meaning, protein context and origins of each prediction.
机译:高通量测序方法正在产生大量的基因组数据,为人类遗传变异及其与疾病的关系提供了前所未有的见识。一个单独的人类基因组包含数百万个单核苷酸变异体:为了区分有害的和良性的,已开发出多种方法来预测蛋白质编码变异体是否可能影响携带者的健康。我们提出了一种这样的方法,DEOGEN2,它结合了有关变体的分子效应,涉及的域,基因的相关性以及它参与的相互作用的异质信息。对于每个变体,这些广泛的上下文信息被非线性映射到一个单一的有害性得分中。由于对于非专业用户而言,有时仍然很难评估该分数的含义,其与编码蛋白质的关系以及其来源,因此我们开发了一个交互式在线框架(),以更好地展示所有DEOGEN2有害性预测所有人类蛋白质中可能存在的变异。该预测是可视化的,因此专家和非专家用户都可以洞悉每种预测的含义,蛋白质背景和来源。

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