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Mathematical analysis of HIV dynamics: A new learning algorithm for genetic signal representation

机译:HIV动态的数学分析:一种用于遗传信号表示的新学习算法

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We implement a data mining technique based on the method of Independent Component Analysis (ICA) to generate reliable independent data sets for different HIV therapies. The ICA algorithm has been used to generate different patterns of the HIV dynamics under different therapy conditions. By converting the sequences of nucleotides and polypeptides into digital genomic signals, this approach offers the possibility to use a large variety of signal processing methods for their handling and analysis. It is also shown that some essential features of the nucleotide sequences can be better extracted using this representation. New tools for genomic signal analysis, including the use of phase, aggregated phase, unwrapped phase, sequence path, stem representation of components' relative frequencies, as well as analysis of the transitions are introduced at the nucleotide, codon and amino acid levels, and in a multiresolution approach.
机译:我们基于独立分量分析(ICA)的方法来实现数据挖掘技术,为不同的HIV疗法生成可靠的独立数据集。 ICA算法已用于在不同治疗条件下产生不同模式的HIV动态。通过将核苷酸和多肽的序列转化为数字基因组信号,这种方法提供了使用各种信号处理方法来处理和分析的可能性。还表明,可以使用该表示可以更好地提取核苷酸序列的一些基本特征。在核苷酸,密码子和氨基酸水平下引入了新的基因组信号分析的新工具,包括使用相位,聚集相,未包装的相位,序列路径,组分相对频率的分析,以及转变的分析以多分辨率的方法。

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