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Prediction of mitochondrial proteins of malaria parasite using improved hybrid method and reduced amino acid alphabet

机译:利用改进的杂种方法预测疟疾寄生虫的线粒体蛋白质及降低氨基酸字母

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The rate of human death and morbidity due to malaria is increasing in many parts of the developing countries. Thus, there is a great need to understand the critical pathways in malaria parasite in order to develop effective drugs and vaccines. In this work, based on the measure of diversity definition, we introduce the increment of diversity fusion (IDF), an improved hybrid method to predict mitochondrial proteins of malaria parasite. We conduct our experiment on an expanded protein dataset where we require the pairwise identity between two proteins is less than 25%. By choosing amino acids composition as the only input vector, we are able to achieve 65.4% accuracy with 0.32 Mathew's correlation coefficient (MCC) for the jackknife test. Further, incorporting the compositions of the N-terminal and C-terminal regions into the input vector, we show that the prediction results are improved to 82.0% accuracy with 0.64 MCC in the jackknife test. In addition, by combining with the several reduced amino acid alphabet and the hydropathy distribution along protein sequence, we achieve maximum 83.4% accuracy with 0.67 MCC in the jackknife test by using the 64 dipeptide compositions of the reduced amino acid alphabet obtained from Protein Blocks method.
机译:发展中国家的许多地方,疟疾引起的人死亡和发病率正在增加。因此,很有需要了解疟疾寄生虫的关键途径,以便开发有效的药物和疫苗。在这项工作中,基于多样性定义的衡量标准,我们介绍了多样性融合(IDF)的增量,改进的杂种方法预测疟疾寄生虫的线粒体蛋白。我们在展开的蛋白质数据上进行实验,我们需要两种蛋白质之间的成对标识小于25%。通过选择氨基酸组合物作为唯一输入的输入载体,我们能够以0.32 Mathew的相关系数(MCC)为巨头测试达到65.4%的精度。此外,将N-末端和C末端区域的组合物进入输入载体,我们表明预测结果在千刀测试中提高到0.64 MCC的精度为82.0%。另外,通过将几种降低的氨基酸字母和沿蛋白质序列的水小肿分布组合,通过使用从蛋白质嵌段方法获得的还原氨基酸字母表的64个二肽组合物,在千刀测试中获得最大83.4%的精度。 。

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