首页> 外文会议>Eighth Pacific Symposium on Biocomputing (PSB), Jan 3-7, 2003, Kauai, Hawaii >DIGIT: A NOVEL GENE FINDING PROGRAM BY COMBINING GENE-FINDERS
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DIGIT: A NOVEL GENE FINDING PROGRAM BY COMBINING GENE-FINDERS

机译:数字:结合基因发现者的新基因发现计划

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We have developed a general purpose algorithm which finds genes by combining plural existing gene-finders. The algorithm has been implemented into a novel gene-finder named DIGIT. An outline of the algorithm is as follows. First, existing gene-finders are applied to an uncharacterized genomic sequence (input sequence). Next, DIGIT produces all possible exons from the results of gene-finders, and assigns them their exon types, reading frames and exon scores. Finally, DIGIT searches a set of exons whose additive score is maximized under their reading frame constraints. Bayesian procedure and a hidden Markov model are used to infer exon scores and search the exon set, respectively. We have designed DIGIT so as to combine the results of FGENESH, GENSCAN and HMMgene, and have assessed its prediction accuracy by using recently compiled benchmark data sets. For all data sets, DIGIT successfully discarded many false-positive exons predicted by individual gene-finders and yielded remarkable improvements in sensitivity and specificity at the gene level compared with the best gene level accuracies achieved by any single gene-finder.
机译:我们已经开发了一种通用算法,可以通过组合多个现有的基因查找器来查找基因。该算法已被实施到名为DIGIT的新型基因发现器中。该算法的概述如下。首先,将现有的基因发现者应用于未表征的基因组序列(输入序列)。接下来,DIGIT从基因发现者的结果中产生所有可能的外显子,并为其分配外显子类型,阅读框和外显子评分。最后,DIGIT搜索一组外显子,这些外显子在其阅读框架约束下其加性得分最大。贝叶斯过程和隐马尔可夫模型分别用于推断外显子分数和搜索外显子集。我们设计DIGIT是为了结合FGENESH,GENSCAN和HMMgene的结果,并使用最近编译的基准数据集评估了其预测准确性。对于所有数据集,DIGIT成功抛弃了单个基因发现者预测的许多假阳性外显子,与任何单个基因发现者获得的最佳基因水平准确性相比,在基因水平上的敏感性和特异性均得到了显着改善。

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