快速优先级:一种在motif发现工具(如Priority)中减少处理时间的策略

C. A. Sierra, P. Reyes-Herrera
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引用次数: 0

摘要

基序识别是确定转录因子或RNA结合蛋白等不同蛋白质识别的共同序列和特定元件的关键。计算识别基序的一个有趣方法是使用除输入序列之外的附加信息源来指导基序搜索。然而,根据信息和输入数据的大小,基序恢复过程可能需要几个小时。motif recovery最常用的算法之一是Priority[1]。该算法使用吉布斯采样策略,并在信息性先验中包含附加信息,以指导motif搜索。我们建议通过使用线程并行执行独立进程来减少motif恢复处理时间。我们将该策略应用于优先级,结果表明该策略对时间有积极的影响,并且不影响合成基序的质量。减少处理时间的基序恢复算法是重要的考虑到大规模并行测序频繁使用的今天。通过大规模测序,通过实验技术得到的序列数量只会越来越多。
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Fast Priority: A strategy to reduce processing time in a motif discovery tool like Priority
Motif recognition is key to identify common sequences and specific elements recognized by different proteins such as Transcription Factors or RNA Binding Proteins. One interesting approach to computationally identify motifs consists on using additional sources of information besides the input sequences to guide the motif search. However, depending on the information and input data size the motif recovery process can take several hours. One of the most used algorithms for motif recovery is Priority [1]. This algorithm uses a Gibbs sampling strategy and includes additional information, in informative priors, to guide the motif search. We propose to reduce motif recovery processing time by using threads to execute independent processes in parallel. We apply the strategy to Priority and the results show the strategy has a positive effect on time and it does not affect the quality of the resultant motif. Reducing processing time in motif recovery algorithms is important considering that massive parallel sequencing is frequently used today. By using massive sequencing the number of sequences derived by experimental techniques is only getting bigger.
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