Prediction of Active Drug Molecule using Back-Propagation Neural Network

Lakshmi Mandal, N. D. Jana
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引用次数: 1

Abstract

Traditional drug designing and discovery processes are a very time consuming, expensive and challenging tasks to produce a new drug in the market. Computer Aided Drug Design (CADD) is a promising approach that is cost effective as well as speeds up the drug designing process. CADD is a computational methods which provides resources for simplifying the design and discovery of a new drug. At molecular level, a drug binds to the target protein and neutralizes the disease. Therefore, identification of active molecules which can bind to the target protein is an essential part of CADD. In this paper, the back propagation neural network model is employed for predicting inactive or active molecules, which provides chemical compounds with desirable properties for drug design. The proposed approach demonstrates 99% prediction accuracy on the dataset which consists of active and inactive molecules taken from PubChem data repository.
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基于反向传播神经网络的活性药物分子预测
传统的药物设计和发现过程是一项非常耗时、昂贵和具有挑战性的任务,以生产市场上的新药。计算机辅助药物设计(CADD)是一种具有成本效益和加速药物设计过程的有前途的方法。CADD是一种计算方法,为简化新药的设计和发现提供了资源。在分子水平上,药物与目标蛋白结合并中和疾病。因此,识别能够与靶蛋白结合的活性分子是CADD的重要组成部分。本文采用反向传播神经网络模型对活性分子和非活性分子进行预测,为药物设计提供具有理想性质的化合物。该方法对PubChem数据库中含有活性分子和非活性分子的数据集的预测准确率达到99%。
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