基于进化算法的隐跳蝶种复合体诊断特征定位

D. Ashlock, T. V. Königslöw
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引用次数: 0

摘要

本研究提出了一种定位DNA序列特征的进化算法,这些特征在密切相关的物种群体之间具有诊断性。该算法是使用合成数据开发的,然后在最近发现的一种蝴蝶的生物数据上进行了测试,这种蝴蝶是一种隐物种复合体。该技术在细胞色素c氧化酶亚基I (COI) DNA条形码数据中成功地定位了新热带隐型跳蝶的诊断位置。该算法使用一种新颖的子集表示来选择DNA序列中的位置。设计了一种取子集对到子集对的交叉算子。该交叉操作符允许使用一种新的突变操作符,该突变操作符破坏显示趋同证据的位点,从而在诊断特征位置的进化群体中更好地保存多样性。一个词汇(打破束缚)适应度函数用于平滑适应度景观。如果没有词汇适应度,在DNA序列中定位诊断位置的问题证明是困难的;有了这种创新,这个问题就很容易解决了。所开发的进化算法具有广泛应用的潜力,例如在保护,海关执法和法医方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnostic character location within the cryptic skipper butterfly species complex with an evolutionary algorithm
This study presents an evolutionary algorithm for locating DNA sequence characters that are diagnostic between closely related groups of species. The algorithm is developed using synthetic data and then tested on biological data from a species of butterfly recently discovered to be a cryptic complex of species. This technique proved to be successful in locating positions that are diagnostic of the cryptic neotropical skipper butterfly species within the cytochrome c oxidase subunit I (COI) DNA barcode data. The algorithm uses a novel subset representation to select positions within the DNA sequences. A crossover operator that takes pairs of subsets to pairs of subsets is designed. This crossover operator permits the use of a novel mutation operator that disrupts loci showing evidence of convergence, yielding better preservation of diversity in the evolving population of diagnostic character positions. A lexical (tie breaking) fitness function is used to smooth the fitness landscape. The problem of locating diagnostic positions in DNA sequences proved difficult without lexical fitness; with that innovation in place the problem is quite tractable. The evolutionary algorithm developed has the potential for broad application such as in conservation, customs enforcement, and forensics.
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