网格系统发育预测

Priyanka Katariya, Sathish S. Vadhiyar
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引用次数: 1

摘要

系统发育或进化树是由一组物种或DNA序列构建的,并描述了序列之间的关系。系统发育树中未来序列的预测对于包括药物发现、药物研究和疾病控制在内的各种应用都很重要。在这项工作中,我们使用细胞自动机在系统发育树中预测未来的DNA序列。元胞自动机用于模拟系统发育树分支中从祖先到后代的邻居依赖突变。由于从祖先到后代的可能转换方式数量巨大,因此我们使用计算网格和中间件技术来探索用于突变的大量元胞自动机规则。我们使用流行的和反复出现的基于邻居的过渡或突变来预测系统发育树中的后代序列。我们在4个国家的4个集群29台机器组成的网格上获得细胞自动机规则,对磷酸三糖异构酶、丙酮酸激酶和聚酮合成酶三种序列进行了预测,并将我们的预测结果与随机方法的预测结果进行了比较。我们发现,在所有情况下,我们的方法给出的预测比随机方法好40%左右。
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Phylogenetic Predictions on Grids
A phylogenetic or evolutionary tree is constructed from a set of species or DNA sequences and depicts the relatedness between the sequences. Predictions of future sequences in a phylogenetic tree are important for a variety of applications including drug discovery, pharmaceutical research and disease control. In this work, we predict future DNA sequences in a phylogenetic tree using cellular automata. Cellular automata are used for modeling neighbor-dependent mutations from an ancestor to a progeny in a branch of the phylogenetic tree. Since the number of possible ways of transformations from an ancestor to a progeny is huge, we use computational grids and middleware techniques to explore the large number of cellular automata rules used for the mutations. We use the popular and recurring neighbor-based transitions or mutations to predict the progeny sequences in the phylogenetic tree. We performed predictions for three types of sequences, namely, triose phosphate isomerase, pyruvate kinase, and polyketide synthase sequences, by obtaining cellular automata rules on a grid consisting of 29 machines in 4 clusters located in 4 countries, and compared the predictions of the sequences using our method with predictions by random methods. We found that in all cases, our method gave about 40% better predictions than the random methods.
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