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SVM Model for Amino Acid Composition Based Prediction of MMPs and ADAMs

机译:基于MMP和ADAM的氨基酸组成的SVM模型

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The MMPs and ADAMs are cell surface proteases which belong to metalloprotease family. They play an important role in skin aging, skin disorders, anticancer therapy and other physiological disorders. Thus there arises the need to understand the relationships among various parameters of these proteins for prediction of their classes, structures and functionality. The computational approaches for prediction of their classes are fast and economical therefore can be used to complement the existing wet lab techniques. Realizing their importance, in this paper an attempt has been made to correlate them with their amino acid composition and predict them with fair accuracy. This is a novel method where ADAMs and MMPs have been classified on the basis of amino acid composition using Support Vector Machine. The SVM has been implemented using Lib SVM package. The method discriminates MMP subfamily from ADAM proteases with Matthew's correlation coefficient of 0.98 using amino acid composition. The performance of the method was evaluated using 5-fold cross-validation where accuracy of 98% was obtained.
机译:MMP和ADAM是属于金属蛋白酶酶的细胞表面蛋白酶。它们在皮肤衰老,皮肤病,抗癌治疗和其他生理疾病中发挥着重要作用。因此,出现了需要了解这些蛋白质的各种参数之间的关系,以预测其类,结构和功能。预测其类的计算方法是快速且经济的经济可用于补充现有的湿式实验室技术。在本文中实现了他们的重要性,已经尝试将它们与氨基酸组成相关,并以公平的准确性预测它们。这是一种新的方法,其中adams和MMPS在使用支持向量机的基础上被分类为氨基酸组合物。 SVM已使用Lib SVM包实现。该方法使用氨基酸组合物与Matthew的相关系数从ADAM蛋白酶中鉴别MMP蛋白质。使用5倍交叉验证评估该方法的性能,其中精度为98%获得了。

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