基于自编码器的QSAR建模降维

Shrooq A. Alsenan, Isra M. Al-Turaiki, Alaaeldin M. Hafez
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引用次数: 11

摘要

机器学习工具和算法的最新进展影响了包括药物发现在内的领域。如今,通过试错实验进行的研究已经被计算方法所取代。这种增长促进了合成化学数据以支持化学信息学研究的不可否认的发展。其中一个广泛使用的工具来模拟化学信息学问题是定量结构-活性关系(QSAR)。以前的QSAR模型处理的是小数据集和有限数量的特征。当前的QSAR数据集存在高维问题,特征数量超过记录数量。多年来,高维度的诅咒是QSAR分类模型的一个主要缺点。线性主成分分析是一种常用的特征提取方法,用于降低QSAR数据集的高维数。然而,QSAR数据集非常复杂,需要对特征表示有深入的理解。自编码器是一种神经网络类型,在QSAR建模中尚未充分探讨降维目的。在本研究中,我们研究了自编码器对高维QSAR数据集的影响。在总体精度指标上比较了自编码器与PCA的性能。我们的初步分析表明,所提出的技术优于PCA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autoencoder-based Dimensionality Reduction for QSAR Modeling
The recent advances in Machine Learning tools and algorithms have influenced fields including drug discovery. Nowadays, research conducted via trial- and-error experiments have been replaced by computational approaches. This growth prompted an undeniable development in synthesizing chemical data to support chemoinformatics research. One of the widely used tools to model chemoinformatics problems is Quantitative Structure-Activity Relationships (QSAR). Previous QSAR models were dealing with small datasets and limited number of features. Current QSAR datasets suffer from the problem of high dimensionality, where the number of features exceeds the number of records. Over the years, the curse of high dimensionality posed a major shortcoming in QSAR classification models. Linear Principle Component Analysis is a popular feature extraction method used to reduce the high dimensioanlity of QSAR datasets. However, QSAR datasets are highly complex and require deep understanding of features representation. Autoencoder is a type of neural networks that is not fully explored in QSAR modeling for dimensionality reduction purposes. In this research, we investigate the impact of autoencoder on a high dimensional QSAR dataset. The autoencoder performance is compared with PCA on the over all accuracy measure. Our preliminary analysis demonstrated that the proposed technique outperforms PCA.
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