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IONS: Identification of Orthologs by Neighborhood and Similarity-an Automated Method to Identify Orthologs in Chromosomal Regions of Common Evolutionary Ancestry and its Application to Hemiascomycetous Yeasts.

机译:离子:通过邻域和相似性鉴定直系同源物-一种用于鉴定共同进化祖先的染色体区域中直系同源物的自动化方法及其在半乳糖酵母中的应用。

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摘要

Comparative sequence analysis is widely used to infer gene function and study genome evolution and requires proper ortholog identification across different genomes. We have developed a program for the Identification of Orthologs in one-to-one relationship by Neighborhood and Similarity (IONS) between closely related species. The algorithm combines two levels of evidence to determine co-ancestrality at the genome scale: sequence similarity and shared neighborhood. The method was initially designed to provide anchor points for syntenic blocks within the Génolevures project concerning nine hemiascomycetous yeasts (about 50,000 genes) and is applicable to different input databases. Comparison based on use of a Rand index shows that the results are highly consistent with the pillars of the Yeast Gene Order Browser, a manually curated database. Compared with SYNERGY, another algorithm reporting homology relationships, our method's main advantages are its automation and the absence of dataset-dependent parameters, facilitating consistent integration of newly released genomes.
机译:比较序列分析被广泛用于推断基因功能和研究基因组进化,并且需要在不同基因组之间进行正确的直系同源物鉴定。我们开发了一个程序,用于通过紧密相关物种之间的邻域和相似度(IONS)进行一对一关系的直向同源物鉴定。该算法结合了两个级别的证据来确定基因组规模上的祖先:序列相似性和共有邻域。该方法最初旨在为Génolevures项目中涉及9个半胱氨酸酵母的酵母(约50,000个基因)的同构块提供锚点,并且可应用于不同的输入数据库。根据兰德指数的使用进行的比较显示,结果与酵母基因订单浏览器(手动编辑的数据库)的支柱高度一致。与另一种报告同源性关系的算法SYNERGY相比,我们的方法的主要优势在于它的自动化和不依赖于数据集的参数,从而有利于新发布基因组的一致整合。

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