Incipient knowledge in protein folding kinetics states prophecy using deep neural network-based ensemble classifier

M. Anbarasi, M. Durai
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Abstract

In this paper, we focus on incipient knowledge in the prediction of protein folding kinetics states using deep neural network-based stacking technique in ensemble classifier. Protein folding procedure is highly crucial for deciding the molecular function. The protein folding kinetic states check whether particle stimulus structure has done with the intermediary or not. Folding structure can be done with the stable intermediary (3S/3States) and without stable intermediary (2S/2State). Furthermore, there is a vast number of proteins in PDB still unfolding mechanism are found unknown. In this paper, we proposed stacking with the deep neural network for predicting protein folding kinetics states. In first level learning, we have used five bases classifier, i.e., naive Bayesian, decision tree, random forest, support vector machine and neural network and in the second level meta-learning we have used the rule-based method and deep neural network-based stacking in ensemble classifier for increasing the accuracy.
基于深度神经网络的集成分类器在蛋白质折叠动力学状态预测中的初步研究
在本文中,我们重点研究了在集成分类器中使用基于深度神经网络的堆叠技术来预测蛋白质折叠动力学状态的早期知识。蛋白质折叠过程是决定分子功能的关键。蛋白质折叠的动力学状态检查了粒子刺激结构是否与中间体完成。折叠结构可以有稳定中间体(3S/ 3state),也可以没有稳定中间体(2S/2State)。此外,PDB中大量蛋白的展开机制尚不清楚。在本文中,我们提出了用深度神经网络叠加来预测蛋白质折叠动力学状态。在第一级学习中,我们使用了朴素贝叶斯、决策树、随机森林、支持向量机和神经网络五基分类器,在第二级元学习中,我们在集成分类器中使用了基于规则的方法和基于深度神经网络的叠加方法来提高准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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