Parallel implementation of efficient search schemes for the inference of cancer progression models

Daniele Ramazzotti, Marco S. Nobile, P. Cazzaniga, G. Mauri, M. Antoniotti
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引用次数: 7

Abstract

The emergence and development of cancer is a consequence of the accumulation over time of genomic mutations involving a specific set of genes, which provides the cancer clones with a functional selective advantage. In this work, we model the order of accumulation of such mutations during the progression, which eventually leads to the disease, by means of probabilistic graphic models, i.e., Bayesian Networks (BNs). We investigate how to perform the task of learning the structure of such BNs, according to experimental evidence, adopting a global optimization meta-heuristics. In particular, in this work we rely on Genetic Algorithms, and to strongly reduce the execution time of the inference-which can also involve multiple repetitions to collect statistically significant assessments of the data-we distribute the calculations using both multi-threading and a multi-node architecture. The results show that our approach is characterized by good accuracy and specificity; we also demonstrate its feasibility, thanks to a 84× reduction of the overall execution time with respect to a traditional sequential implementation.
并行实现癌症进展模型推理的高效搜索方案
癌症的出现和发展是涉及一组特定基因的基因组突变随着时间积累的结果,这为癌症克隆提供了功能选择优势。在这项工作中,我们通过概率图形模型,即贝叶斯网络(BNs),对最终导致疾病的进展过程中这些突变的积累顺序进行了建模。我们研究了如何根据实验证据,采用全局优化的元启发式方法来完成学习这种神经网络结构的任务。特别是,在这项工作中,我们依赖于遗传算法,并且为了大大减少推理的执行时间(这也可能涉及多次重复以收集统计上重要的数据评估),我们使用多线程和多节点架构来分配计算。结果表明,该方法具有良好的准确性和特异性;我们还演示了它的可行性,因为与传统的顺序实现相比,总执行时间减少了84倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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