基于工作站集群的染色体重构并行计算

S. Bhandarkar, Salem Machaka, S. Shete, J. Arnold
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引用次数: 1

摘要

从基因组文库中重建染色体的物理图谱是遗传学中的一个核心计算问题。存在误差的物理地图重构是一个计算复杂度很高的问题,它为并行计算提供了动力。提出了一种基于极大似然估计的物理地图重构并行化策略。估计过程需要梯度下降搜索,以确定给定探针顺序下探针之间的最佳间隔。利用随机优化算法确定探针的最优排序。提出了一种双层并行化策略,下层并行化梯度下降搜索,上层并行化随机优化算法。给出了在并行虚拟机(PVM)环境下的分布式内存多处理器集群的实现和实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel computation for chromosome reconstruction on a cluster of workstations
Reconstructing a physical map of a chromosome from a genomic library presents a central computational problem in genetics. Physical map reconstruction in the presence of errors is a problem of high computational complexity which provides the motivation for parallel computing. Parallelization strategies for a maximum likelihood estimation-based approach to physical map reconstruction are presented. The estimation procedure entails gradient descent search for determining the optimal spacings between probes for a given probe ordering. The optimal probe ordering is determined using a stochastic optimization algorithm. A two-tier parallelization strategy is proposed wherein the gradient descent search is parallelized at the lower level and the stochastic optimization algorithm is simultaneously parallelized at the higher level. Implementation and experimental results on a distributed memory multiprocessor cluster running the Parallel Virtual Machine (PVM) environment are presented.
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