A Sequential Monte Carlo EM Solution to the Transcription Factor Binding Site Identification Problem

Edmund S. Jackson, W. Fitzgerald
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Abstract

A significant and stubbornly intractable problem in genome sequence analysis has been the de-novo identification of transcription factor binding sites in promoter regions. Probabilistic methods have faced difficulties from prior ignorance and poor models of the biological sequence. These problems result in inference in an extremely irregular, high dimensional space. We derive and demonstrate a novel method with improved convergence to the global mode utilising an iterated particle optimisation in place of the standard Gibbs sampling approach.
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转录因子结合位点鉴定问题的顺序蒙特卡罗EM解决方案
基因组序列分析中一个重要而棘手的问题是启动子区域转录因子结合位点的重新鉴定。由于对生物序列的先验无知和较差的模型,概率方法面临着困难。这些问题导致在极不不规则的高维空间中进行推理。我们推导并演示了一种新的方法,利用迭代粒子优化代替标准吉布斯采样方法,改进了全局模式的收敛性。
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