SulfoTyr-PseAAC:一种识别巯基酪氨酸位点的机器学习框架

Asghar Ali Shah, Y. Khan
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引用次数: 1

摘要

酪氨酸是一种蛋白质,它是氨基酸残基链。真核生物利用它合成蛋白质。它是由其侧链羟基经过磺化、磷酸化和硝化修饰而成的翻译后修饰(PTM)。硫代酪氨酸参与蛋白质-蛋白质相互作用。硫代酪氨酸是不可逆的,因为仍然没有酶从酪氨酸残留物中去除硫酸盐。磺胺基酪氨酸在糖尿病和老年性黄斑变性(AMD)等人类疾病中被发现。研究酪氨酸中硫酸化的发生具有重要意义。目前有许多方法可以准确地预测硫代酪氨酸,但大多数方法需要更多的时间和专家团队。因此,开发了一个模型来准确有效地预测硫代酪氨酸,并且可以通过机器学习算法减少铸造和时间。本研究通过逻辑回归创造了一个学习统计矩并能准确预测的机器。该模型的预测精度为100%。这项研究的方法取决于周的五步规则。
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SulfoTyr-PseAAC: A Machine Learning Framework to Identify Sulfotyrosine Sites
Tyrosine is a type of protein which is a chain of amino acid residues. It is utilized to synthesize proteins by eukaryotic. It is post-Translational modified (PTM) by its side chain hydeoxyl group by sulfation, phosphorylation, and nitration. Sulfotyrosine participate in protein-protein interaction. Sulfotyrosine is irreversible because still there is no enzymes that removes sulfate from tyrosine residue. Sulfotyrosines are identified in human diseases such as diabetes and Age-related Macular degeneration (AMD). It is very important to investigate the occurrence of sulfation in Tyrosine. There are many methods available to accurately predict Sulfotyrosines but most of them need more time and expert team. Therefore, a model is developed to predict sulfotyrosine accurately and efficiently and it is possible through machine learning algorithms which reduce cast and time. This study created a Machine through Logistic Regression which learnt statistical moments and can predict accurately. The prediction accuracy of this proposed model is 100%. The methodology of this study depends upon Chou’s 5-step rule.
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