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Computational approaches for classification and prediction of P-type ATPase substrate specificity in Arabidopsis

机译:拟南芥中P型ATPase底物特异性分类和预测的计算方法

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摘要

As an extended gamut of integral membrane (extrinsic) proteins, and based on their transporting specificities, P-type ATPases include five subfamilies in Arabidopsis, inter alia, P4ATPases (phospholipid-transporting ATPase), P3AATPases (plasma membrane H+ pumps), P2A and P2BATPases (Ca2+ pumps) and P1B ATPases (heavy metal pumps). Although, many different computational methods have been developed to predict substrate specificity of unknown proteins, further investigation needs to improve the efficiency and performance of the predicators. In this study, various attribute weighting and supervised clustering algorithms were employed to identify the main amino acid composition attributes, which can influence the substrate specificity of ATPase pumps, classify protein pumps and predict the substrate specificity of uncharacterized ATPase pumps. The results of this study indicate that both non-reduced coefficients pertaining to absorption and Cys extinction within 280 nm, the frequencies of hydrogen, Ala, Val, carbon, hydrophilic residues, the counts of Val, Asn, Ser, Arg, Phe, Tyr, hydrophilic residues, Phe-Phe, Ala-Ile, Phe-Leu, Val-Ala and length are specified as the most important amino acid attributes through applying the whole attribute weighting models. Here, learning algorithms engineered in a predictive machine (Naive Bays) is proposed to foresee the Q9LVV1 and O22180 substrate specificities (P-type ATPase like proteins) with 100 % prediction confidence. For the first time, our analysis demonstrated promising application of bioinformatics algorithms in classifying ATPases pumps. Moreover, we suggest the predictive systems that can assist towards the prediction of the substrate specificity of any new ATPase pumps with the maximum possible prediction confidence.
机译:作为完整膜(外部)蛋白的扩展域,并基于其转运特异性,P型ATPase包括拟南芥中的五个亚家族,尤其是P4ATPase(磷脂转运ATPase),P3AATPases(质膜H + < / sup>泵),P2A和P2BATPases(Ca 2 + 泵)和P1B ATPase(重金属泵)。尽管已开发出许多不同的计算方法来预测未知蛋白质的底物特异性,但仍需进一步研究以提高谓词的效率和性能。在这项研究中,使用各种属性加权和监督聚类算法来识别主要的氨基酸组成属性,这些属性可以影响ATPase泵的底物特异性,对蛋白泵进行分类并预测未表征的ATPase泵的底物特异性。这项研究的结果表明,与280 nm范围内的吸收和Cys消光有关的非降低系数,氢,Ala,Val,碳,亲水性残基的频率,Val,Asn,Ser,Arg,Phe,Tyr的计数通过应用整个属性权重模型,将亲水残基,Phe-Phe,Ala-Ile,Phe-Leu,Val-Ala和长度指定为最重要的氨基酸属性。在这里,提出了在预测机器(Naive Bays)中设计的学习算法,以100%的预测置信度预测Q9LVV1和O22180底物特异性(P型ATPase一样的蛋白质)。我们的分析首次证明了生物信息学算法在ATPases泵分类中的应用前景。此外,我们建议使用预测系统,以最大可能的预测置信度协助任何新的ATPase泵的底物特异性预测。

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