...
首页> 外文期刊>International Journal of Advanced Computer Research >Traditional machine learning and big data analytics in virtual screening: a comparative study
【24h】

Traditional machine learning and big data analytics in virtual screening: a comparative study

机译:虚拟筛选中的传统机器学习和大数据分析:比较研究

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Nowadays, the massive amount of data that needs to be processed is increased. High-performance computing (HPC) and big data analytics are required. In the identical context, research on drug discovery has reached an area where it has no preference, but the use of HPC and huge data processing systems to perform its targets at a reasonable time. Virtual screen (VS) is one of the costliest tasks in terms of computation requirements. It is considered as an intensive and heavy task. At the same time, it plays an essential role in new drug design. This research investigates machine learning and big data analytics in VS. It tries to use a ligand base and a structural base and rank molecular databases as active against a specific target protein. The machine learning algorithms, including random forests, naive Bayesian classifiers, nerve networks, decision trees, support vector machines, and deep-learning strategies have been developed for both Ligand-based and structure-based docking. Also, this paper introduces a review of previous research conducted on the utilization of machine learning as well as big data analytics framework in VS. The paper outlines the current progress in the use of traditional methods for machine learning and massive data analytic applications in a multi-node dataset. This article compares the estimation of machine learning approaches and broad ligand-base theoretical system. It also explores how machine learning approaches can improve the performance of various problems of virtual screening classification in broad repositories. Finally, various challenges and solutions of the virtual screening dataset in the machine learning and big data analytics are discussed.
机译:如今,需要加工的大量数据增加。需要高性能计算(HPC)和大数据分析。在相同的背景下,对药物发现的研究已经到达了它不偏好的区域,而是使用HPC和庞大的数据处理系统在合理的时间内执行其目标。虚拟屏幕(VS)是计算要求中最昂贵的任务之一。它被认为是一个密集型和繁忙的任务。与此同时,它在新的药物设计中起重要作用。本研究调查了对VS的机器学习和大数据分析它试图使用配体碱和结构基础,并将分子数据库等级为含有针对特定靶蛋白的活性。为配体基和基于结构的对接开发了机器学习算法,包括随机森林,天真贝叶斯分类器,神经网络,决策树,支持向量机和深度学习策略。此外,本文介绍了对利用机器学习的先前研究以及与VS的大数据分析框架进行了综述。本文概述了在多节点数据集中使用传统方法的使用传统方法的进展情况。本文比较了机器学习方法和宽配体基础理论系统的估计。它还探讨了机器学习方法如何提高广泛存储库中的虚拟筛选分类问题的性能。最后,讨论了机器学习中虚拟屏蔽数据集的各种挑战和解决方案和大数据分析。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号