论文标题
基于随机的神经网络硬件加速度,用于有效的基于配体的虚拟筛选
Stochastic-based Neural Network hardware acceleration for an efficient ligand-based virtual screening
论文作者
论文摘要
人工神经网络(ANN)由于解决了许多复杂的模式匹配问题的能力,因此在许多科学和技术领域都普及了。虚拟筛查就是这种研究领域,该研究领域研究了如何鉴定那些具有最高可能性的分子化合物,以呈现治疗靶点的生物学活性。由于可能进行了大量的有机化合物和数千个可能进行大规模筛查的目标,因此,对研究界增加了越来越多的兴趣来提高分子数据库的筛查速度和能源效率。在这项工作中,我们提出了一个分类模型,该模型用单个能量的向量描述了每个分子,并根据使用ANN的使用提出了机器学习系统。研究了不同的ANN关于识别生化相似性的适用性。此外,为ANN实施提供了基于随机计算的使用,基于使用随机计算的高性能和节能硬件加速平台。当筛选大量化合物库时,该平台是有效的。结果,提出的模型在主要相关特征(准确性,速度和能源效率)方面对先前发表的作品显示出明显的改进。
Artificial Neural Networks (ANN) have been popularized in many science and technological areas due to their capacity to solve many complex pattern matching problems. That is the case of Virtual Screening, a research area that studies how to identify those molecular compounds with the highest probability to present biological activity for a therapeutic target. Due to the vast number of small organic compounds and the thousands of targets for which such large-scale screening can potentially be carried out, there has been an increasing interest in the research community to increase both, processing speed and energy efficiency in the screening of molecular databases. In this work, we present a classification model describing each molecule with a single energy-based vector and propose a machine-learning system based on the use of ANNs. Different ANNs are studied with respect to their suitability to identify biochemical similarities. Also, a high-performance and energy-efficient hardware acceleration platform based on the use of stochastic computing is proposed for the ANN implementation. This platform is of utility when screening vast libraries of compounds. As a result, the proposed model showed appreciable improvements with respect previously published works in terms of the main relevant characteristics (accuracy, speed and energy-efficiency).