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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Prophage loci predictor for bacterial genomes
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Prophage loci predictor for bacterial genomes

机译:针对细菌基因组的预知座位

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This paper proposes a new algorithm for prophage loci prediction in bacteria. Prophages are defined in Bioinformatics as viral nucleotide sequences that are found intermixed with host nucleotide sequences in bacteria. The proposed algorithm uses machine learning patterns and processing methodologies in order to provide a highly e +/- cient system for loci prediction, thereby reducing the time-space complexity required unlike others of its class. In the training phase, a pattern database is constructed from raw nucleotide sequences of both bacteria and viruses obtained from a training set. In the prediction phase, the aforementioned database is used along with Particle Swarm Optimization (PSO) to predict the probable loci of prophages in a test set of bacterial nucleotide sequences. Testing this method on raw sequences consisting of both partial and complete nucleotide sequences of various bacteria has yielded good results in predicting the loci of prophages in them. This algorithm and connected processes compare favorably in terms of predictive performance with others of its class such as PhiSpy and ProphET, while outperforming others in terms of raw processing speed, suggesting that a data-centric approach can yield comparable results while using a fraction of the resources.
机译:本文提出了一种新的细菌原噬菌体基因座预测算法。原噬菌体在生物信息学中被定义为病毒核苷酸序列,与细菌中的宿主核苷酸序列混合。该算法利用机器学习模式和处理方法,为基因座预测提供了一个高度高效的系统,从而降低了与同类算法不同的时空复杂度。在训练阶段,根据从训练集中获得的细菌和病毒的原始核苷酸序列构建模式数据库。在预测阶段,上述数据库与粒子群优化(PSO)一起用于预测细菌核苷酸序列测试集中原噬菌体的可能位点。在由各种细菌的部分和完整核苷酸序列组成的原始序列上测试这种方法,在预测其原噬菌体位点方面取得了良好的结果。在预测性能方面,该算法和连接的流程与同类其他算法(如PhiSpy和ProphET)相比表现良好,而在原始处理速度方面则优于其他算法,这表明以数据为中心的方法可以在使用少量资源的情况下产生可比的结果。

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