基于MPI技术的平行支键法在路径频率推断化合物中的应用

Kun-Ming Yu, Chun-Yuan Lin, Huiyuan Wang, C. Tang, Jiayi Zhou
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引用次数: 2

摘要

药物设计是使用计算工具通过设计来寻找药物的方法。在设计一种新药时,可以通过对潜在化合物的分类来模拟药物分子的结构。内核的方法已成功地用于分类潜在的化合物。为了对目标化合物的特征进行分类,提出了用标记路径的频率将化合物映射到特征中。在这项研究中,我们提出了一个算法基于内核的方法通过并行计算技术,以减少计算时间。这种较少的时间限制使我们能够针对所有可能的预图像的完整方案进行反向跟踪,而不管它们在分子结构上的差异,只要它们具有相同的特征向量。我们的方法在BB-CIPF的基础上进行了改进,并使用MPI来减少计算时间。实验结果表明,该算法可以有效地减少化合物推理问题的计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel branch-and-bound approach with MPI technology in inferring chemical compounds with path frequency
Drug design is the approach of finding drugs by design using computational tools. When designing a new drug, the structure of the drug molecule can be modeled by classification of potential chemical compounds. Kernel Methods have been successfully used in classifying potential chemical compounds. Frequency of labeled paths has been proposed to map compounds into feature in order to classify the characteristics of target compounds. In this study, we proposed an algorithm based on Kernel method via parallel computing technology to reduce computation time. This less constrain of timing allows us to aim at back tracking a full scheme of all of the possible pre-images, regardless of their difference in molecular structure, only if they shared with the same feature vector. Our method is modified on BB-CIPF and used MPI to reduce the computation time. The experimental results show that our algorithms can reduce the computation time effectively for chemical compound inference problem.
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