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PASTA: Ultra-Large Multiple Sequence Alignment for Nucleotide and Amino-Acid Sequences

机译:PASTA:核苷酸和氨基酸序列的超大序列比对

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Abstract We introduce PASTA, a new multiple sequence alignment algorithm. PASTA uses a new technique to produce an alignment given a guide tree that enables it to be both highly scalable and very accurate. We present a study on biological and simulated data with up to 200,000 sequences, showing that PASTA produces highly accurate alignments, improving on the accuracy and scalability of the leading alignment methods (including SATé). We also show that trees estimated on PASTA alignments are highly accurate—slightly better than SATé trees, but with substantial improvements relative to other methods. Finally, PASTA is faster than SATé, highly parallelizable, and requires relatively little memory." /> rel="meta" type="application/atom+xml" href="http://dx.doi.org/10.1089%2Fcmb.2014.0156" /> rel="meta" type="application/rdf+json" href="http://dx.doi.org/10.1089%2Fcmb.2014.0156" /> rel="meta" type="application/unixref+xml" href="http://dx.doi.org/10.1089%2Fcmb.2014.0156" /> 展开▼
机译:摘要我们介绍了一种新的多序列比对算法PASTA。 PASTA使用一种新技术来生成给定导向树的对齐方式,从而使它既具有高度可伸缩性又具有非常高的准确性。我们对多达200,000个序列的生物学和模拟数据进行了研究,表明PASTA可以产生高度精确的比对,从而提高了领先比对方法(包括SATé)的准确性和可扩展性。我们还表明,通过PASTA路线估计的树木非常准确-稍好于SATé树木,但相对于其他方法而言有很大的改进。最后,PASTA比SATé更快,可高度并行化,并且需要相对较少的内存。“ /> <元名称=” dc.Date“方案=” WTN8601“ content =” 2015-04-30“ /> <元名称=” dc.Type“ content =” research-article“ /> <元名称= “ dc.Format” content =“文本/ HTML” /> <元名称=“ dc.Identifier” scheme =“ publisher-id” content =“ 10.1089 / cmb.2014.0156” /> rel =“ meta” type =“ application / atom + xml” href =“ http://dx.doi.org/10.1089%2Fcmb.2014.0156” /> rel =“ meta” type =“ application / rdf + json” href =“ http://dx.doi.org/10.1089%2Fcmb.2014.0156” /> rel =“ meta” type =“ application / unixref + xml” href =“ http://dx.doi.org/ 10.1089%2Fcmb.2014.0156“ />

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