PTGAC Model: A machine learning approach for constructing phylogenetic tree to compare protein sequences.

IF 0.9 4区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY Journal of Bioinformatics and Computational Biology Pub Date : 2023-02-01 DOI:10.1142/S0219720022500287
Jayanta Pal, Sourav Saha, Bansibadan Maji, Dilip Kumar Bhattacharya
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Abstract

This work proposes a machine learning-based phylogenetic tree generation model based on agglomerative clustering (PTGAC) that compares protein sequences considering all known chemical properties of amino acids. The proposed model can serve as a suitable alternative to the Unweighted Pair Group Method with Arithmetic Mean (UPGMA), which is inherently time-consuming in nature. Initially, principal component analysis (PCA) is used in the proposed scheme to reduce the dimensions of 20 amino acids using seven known chemical characteristics, yielding 20 TP (Total Points) values for each amino acid. The approach of cumulative summing is then used to give a non-degenerate numeric representation of the sequences based on these 20 TP values. A special kind of three-component vector is proposed as a descriptor, which consists of a new type of non-central moment of orders one, two, and three. Subsequently, the proposed model uses Euclidean Distance measures among the descriptors to create a distance matrix. Finally, a phylogenetic tree is constructed using hierarchical agglomerative clustering based on the distance matrix. The results are compared with the UPGMA and other existing methods in terms of the quality and time of constructing the phylogenetic tree. Both qualitative and quantitative analysis are performed as key assessment criteria for analyzing the performance of the proposed model. The qualitative analysis of the phylogenetic tree is performed by considering rationalized perception, while the quantitative analysis is performed based on symmetric distance (SD). On both criteria, the results obtained by the proposed model are more satisfactory than those produced earlier on the same species by other methods. Notably, this method is found to be efficient in terms of both time and space requirements and is capable of dealing with protein sequences of varying lengths.

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PTGAC模型:一种用于构建系统发育树以比较蛋白质序列的机器学习方法。
这项工作提出了一种基于聚类(PTGAC)的基于机器学习的系统发育树生成模型,该模型考虑所有已知氨基酸的化学性质来比较蛋白质序列。该模型可以作为一种合适的替代算法,以克服UPGMA算法固有的耗时问题。最初,主成分分析(PCA)在提议的方案中使用七个已知的化学特性来降低20个氨基酸的维数,为每个氨基酸产生20个TP (Total Points)值。然后使用累积求和的方法给出基于这20个TP值的序列的非退化数字表示。提出了一种特殊的三分量矢量作为描述子,它由一、二、三阶的新型非中心矩组成。随后,该模型使用描述符之间的欧几里得距离度量来创建距离矩阵。最后,采用基于距离矩阵的分层聚类方法构建了系统发育树。结果与UPGMA和其他现有方法在构建系统发育树的质量和时间方面进行了比较。定性和定量分析作为分析所提出模型性能的关键评估标准。系统发育树的定性分析是基于理性感知,定量分析是基于对称距离(SD)。在这两个标准下,所提出的模型所得到的结果比以前用其他方法对同一物种所得到的结果更令人满意。值得注意的是,该方法在时间和空间要求方面都是有效的,并且能够处理不同长度的蛋白质序列。
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来源期刊
Journal of Bioinformatics and Computational Biology
Journal of Bioinformatics and Computational Biology MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
2.10
自引率
0.00%
发文量
57
期刊介绍: The Journal of Bioinformatics and Computational Biology aims to publish high quality, original research articles, expository tutorial papers and review papers as well as short, critical comments on technical issues associated with the analysis of cellular information. The research papers will be technical presentations of new assertions, discoveries and tools, intended for a narrower specialist community. The tutorials, reviews and critical commentary will be targeted at a broader readership of biologists who are interested in using computers but are not knowledgeable about scientific computing, and equally, computer scientists who have an interest in biology but are not familiar with current thrusts nor the language of biology. Such carefully chosen tutorials and articles should greatly accelerate the rate of entry of these new creative scientists into the field.
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