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Improved Deep Learning Based Method for Molecular Similarity Searching Using Stack of Deep Belief Networks

机译:基于深度学习的分子相似性搜索方法使用深度信仰网络

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摘要

Virtual screening (VS) is a computational practice applied in drug discovery research. VS is popularly applied in a computer-based search for new lead molecules based on molecular similarity searching. In chemical databases similarity searching is used to identify molecules that have similarities to a user-defined reference structure and is evaluated by quantitative measures of intermolecular structural similarity. Among existing approaches, 2D fingerprints are widely used. The similarity of a reference structure and a database structure is measured by the computation of association coefficients. In most classical similarity approaches, it is assumed that the molecular features in both biological and non-biologically-related activity carry the same weight. However, based on the chemical structure, it has been found that some distinguishable features are more important than others. Hence, this difference should be taken consideration by placing more weight on each important fragment. The main aim of this research is to enhance the performance of similarity searching by using multiple descriptors. In this paper, a deep learning method known as deep belief networks (DBN) has been used to reweight the molecule features. Several descriptors have been used for the MDL Drug Data Report (MDDR) dataset each of which represents different important features. The proposed method has been implemented with each descriptor individually to select the important features based on a new weight, with a lower error rate, and merging together all new features from all descriptors to produce a new descriptor for similarity searching. Based on the extensive experiments conducted, the results show that the proposed method outperformed several existing benchmark similarity methods, including Bayesian inference networks (BIN), the Tanimoto similarity method (TAN), adapted similarity measure of text processing (ASMTP) and the quantum-based similarity method (SQB). The results of this proposed multi-descriptor-based on Stack of deep belief networks method (SDBN) demonstrated a higher accuracy compared to existing methods on structurally heterogeneous datasets.
机译:虚拟筛选(VS)是在药物发现研究中应用的计算实践。基于分子相似性搜索,VS广泛地应用于基于计算机的新铅分子。在化学数据库中,相似性搜索用于识别与用户定义的参考结构具有相似性的分子,并通过分子间结构相似度的定量测量来评估。在现有方法中,广泛使用2D指纹。参考结构和数据库结构的相似性通过计算关联系数来测量。在最古典的相似性方法中,假设生物和非生物学相关活性的分子特征具有相同的重量。然而,基于化学结构,已经发现一些可区分特征比其他特征更重要。因此,应通过在每个重要碎片上放置更多重量来考虑这种差异。本研究的主要目的是通过使用多个描述符来增强相似性搜索的性能。在本文中,已被称为深度信仰网络(DBN)的深度学习方法,用于重新重量分子特征。已经用于MDL药物数据报告(MDDR)数据集的几个描述符代表了不同的重要特征。该提出的方法已经用每个描述符来单独实现,以基于新权重选择重要特征,以较低的错误率,并将所有描述符的所有新功能合并以生成用于相似性搜索的新描述符。基于进行的广泛实验,结果表明,该方法优于几种现有的基准相似性方法,包括贝叶斯推理网络(BIN),Tanimoto相似性方法(TAN),文本处理(ASMTP)的适应性测量和量子 - 基于相似性方法(SQB)。与在结构异构数据集上的现有方法相比,基于一系列深度信仰网络方法(SDBN)的基于深度信仰网络方法(SDBN)的结果表明了更高的准确性。

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