多层感知器与深度神经网络在乙酰胆碱酯酶抑制剂QSAR分类中的准确率比较

Mushliha, A. Bustamam, Arry Yanuar, W. Mangunwardoyo, P. Anki, R. Amalia
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引用次数: 2

摘要

最近,由于有大量可用的数据集,人工智能方法的发展是评估候选药物的有效性、分析和安全性的解决方案。人工智能的方法之一是深度学习。深度学习对药物发现过程具有重要影响,有利于药物的合理开发和优化,从而影响公众健康。各种抑制剂的发现需要可靠的模型来计算药物的副作用,而不需要大量的成本和长时间。乙酰胆碱酯酶抑制剂是治疗阿尔茨海默病的新途径。定量构效关系(Quantitative structure - activity Relationship, QSAR)模型是一种用于筛选化合物的大型数据库,从而根据化学分子的结构来确定其生物学特性的模型。本研究中使用的建模是QSAR分类。QSAR分类模型预测乙酰胆碱酯酶抑制剂的活性和非活性成分。共有3809种抑制剂,其中活性抑制剂2215种,非活性抑制剂1594种。他们用指纹作为描述符进行了标记。本研究比较了MLP和DNN在分类中的性能。本研究结果表明,DNN在分类上具有较好的准确率,为0.841。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison Accuracy of Multi-Layer Perceptron and DNN in QSAR Classification for Acetylcholinesterase Inhibitors
Recently, the development of the artificial intelligence approach is a solution for evaluating the effectiveness, analysis, and safety of drug candidates due to a large number of data sets available. One of the approaches to artificial intelligence is deep learning. Deep learning has a significant influence on drug discovery procedures for rational drug development and optimization so that it can affect public health. The discovery of various inhibitors needs reliable models to figure out the side effects of the drug without requiring large costs and long amounts of time. A new way for the treatment of Alzheimer's disease is Acetylcholinesterase inhibitors. The Quantitative Structure-Activity Relationship (QSAR) model is a model used to filter large databases of the compound to figure the biological properties of chemical molecules based on their structure. The modeling that was used in this study was QSAR classification. The QSAR classification model predicted active and inactive compounds in Acetylcholinesterase inhibitors. There were 3809 inhibitors which consisted of 2215 active inhibitors and 1594 inactive inhibitors. They were labeled using fingerprints as descriptors. This study compared the performances of MLP and DNN in the classification. The result of this study showed DNN had better accuracy of 0.841 in classification.
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