...
首页> 外文期刊>BMC Bioinformatics >MLIP: using multiple processors to compute the posterior probability of linkage
【24h】

MLIP: using multiple processors to compute the posterior probability of linkage

机译:MLIP:使用多个处理器来计算链接的后验概率

获取原文

摘要

Background Localization of complex traits by genetic linkage analysis may involve exploration of a vast multidimensional parameter space. The posterior probability of linkage (PPL), a class of statistics for complex trait genetic mapping in humans, is designed to model the trait model complexity represented by the multidimensional parameter space in a mathematically rigorous fashion. However, the method requires the evaluation of integrals with no functional form, making it difficult to compute, and thus further test, develop and apply. This paper describes MLIP, a multiprocessor two-point genetic linkage analysis system that supports statistical calculations, such as the PPL, based on the full parameter space implicit in the linkage likelihood. Results The fundamental question we address here is whether the use of additional processors effectively reduces total computation time for a PPL calculation. We use a variety of data – both simulated and real – to explore the question "how close can we get?" to linear speedup. Empirical results of our study show that MLIP does significantly speed up two-point log-likelihood ratio calculations over a grid space of model parameters. Conclusion Observed performance of the program is dependent on characteristics of the data including granularity of the parameter grid space being explored and pedigree size and structure. While work continues to further optimize performance, the current version of the program can already be used to efficiently compute the PPL. Thanks to MLIP, full multidimensional genome scans are now routinely being completed at our centers with runtimes on the order of days, not months or years.
机译:背景技术通过遗传连锁分析对复杂性状进行定位可能涉及探索巨大的多维参数空间。连锁后验概率(PPL)是人类复杂性状遗传映射的一类统计数据,旨在以数学上严格的方式对多维参数空间所代表的特征模型复杂性进行建模。但是,该方法需要对没有功能形式的积分进行评估,从而使其难以计算,因此难以进一步测试,开发和应用。本文介绍MLIP,这是一种多处理器两点遗传连锁分析系统,它基于隐含在连锁可能性中的完整参数空间,支持统计计算(例如PPL)。结果我们这里要解决的基本问题是,使用附加处理器是否有效地减少了PPL计算的总计算时间。我们使用各种数据(包括模拟数据和真实数据)来探讨“我们能接近多远?”这一问题。线性加速。我们的研究的经验结果表明,MLIP确实大大加快了模型参数网格空间上的两点对数似然比计算。结论所观察到的程序性能取决于数据的特征,包括所探索的参数网格空间的粒度以及谱系的大小和结构。当工作继续进一步优化性能时,该程序的当前版本已经可以用于有效地计算PPL。多亏有了MLIP,我们的中心现在才能正常完成完整的多维基因组扫描,而运行时间约为几天,而不是几个月或几年。

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