基于混合指纹特征的深度信念网络药物设计虚拟筛选

Aries Fitriawan, Ito Wasito, A. F. Syafiandini, Mukhlis Amien, Arry Yanuar
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引用次数: 2

摘要

虚拟筛选(VS)是一种用于药物发现的计算技术。VS过程通常通过识别结构相互绑定的能力来工作。其中一种结构解释是分子指纹。分子指纹作为vs的特征被用于计算药物发现,各种指纹类型已经被介绍。将两个或多个指纹组合成混合指纹可以提高vs的性能,此外,机器学习技术有助于提高vs的性能。本研究的目的是为混合指纹特征找到一种新的深度信念网络(DBN)架构方法。本文提出了两种不同的组合DBN指纹特征的方法,分别是初始组合和后组合。本研究与之前针对vs的DBN研究一样,使用了6个蛋白质靶类。实验结果表明,DBN结构指纹组合的最佳方式是初始组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep belief networks using hybrid fingerprint feature for virtual screening of drug design
Virtual screening (VS) is a computational technique used in drug discovery. VS process usually works by identifying the ability of structures to bind each other. One of the structure interpretation is molecular fingerprints. Molecular fingerprints are used for computational drug discovery as feature for VS. A variety of fingerprint types has been introduced. Combining two or more fingerprints into a hybrid fingerprints has been found to improve the performance of VS. Furthermore, machine learning techniques have helped to improve the performance of VS. The purpose of this research is to find a new Deep Belief Networks (DBN) architecture approach for hybrid fingerprint features. In this paper, there were two different approaches for combining two fingerprints feature for DBN, then called initial combining and latter combining. This research used six protein target classes as same as the previous research about DBN for VS. The experiments result show that the best way to combine the fingerprints for DBN architecture is initial combining.
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