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Genome signatures, self-organizing maps and higher order phylogenies:a parametric analysis

机译:基因组签名,自组织图谱和高阶系统发育:参数分析

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摘要

Genome signatures are data vectors derived from the compositional statistics of DNA. The self-organizing map (SOM) is a neural network method for the conceptualisation of relationships within complex data, such as genome signatures. The various parameters of the SOM training phase are investigated for their effect on the accuracy of the resulting output map. It is concluded that larger SOMs, as well as taking longer to train, are less sensitive in phylogenetic classification of unknown DNA sequences. However, where a classification can be made, a larger SOM is more accurate. Increasing the number of iterations in the training phase of the SOM only slightly increases accuracy, without improving sensitivity. The optimal length of the DNA sequence k-mer from which the genome signature should be derived is 4 or 5, but shorter values are almost as effective. In general, these results indicate that small, rapidly trained SOMs are generally as good as larger, longer trained ones for the analysis of genome signatures. These results may also be more generally applicable to the use of SOMs for other complex data sets, such as microarray data.
机译:基因组签名是源自DNA组成统计的数据载体。自组织图(SOM)是一种神经网络方法,用于概念化复杂数据(例如基因组签名)中的关系。研究了SOM训练阶段的各种参数对最终输出图的准确性的影响。结论是,较大的SOM以及需要较长的训练时间,在未知DNA序列的系统发育分类中敏感性较低。但是,在可以进行分类的地方,较大的SOM更准确。在SOM的训练阶段中增加迭代次数只会稍微提高准确性,而不会提高灵敏度。应从中得出基因组签名的DNA序列k-mer的最佳长度为4或5,但较短的值几乎一样有效。通常,这些结果表明,对于基因组特征分析,小型,快速训练的SOM与大型,较长训练的SOM一样好。这些结果也可能更普遍地适用于将SOM用于其他复杂数据集,例如微阵列数据。

著录项

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    Gatherer Derek;

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  • 年度 2007
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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