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Identifying the pre-transition state during biological processes by hidden Markov model

机译:用隐马尔可夫模型识别生物过程中的过渡前状态

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Identifying the pre-transition state just before the occurrence of a critical transition during a complex biological process is a challenging task, because the state of the system may show little apparent change or clear phenomenon before this critical transition during the biological processes. By regarding that the pre-transition state is the end or change-point of a stationary Markov process, we present a novel computational method, hidden Markov model (HMM) based state-transition forward method, which is a non-parametric estimation and can identify the pre-transition state. To validate the effectiveness, we apply this method to detect the signal of the imminent critical deterioration of complex diseases based on both simulated dataset and the rich information provided by high-throughput microarray data. We identify the pre-transition states and a number of related modules for the acute lung injury triggered by phosgene inhalation. Both functional and pathway enrichment analyses validate the results.
机译:在复杂的生物过程中发生关键转变之前识别前转换状态是一个具有挑战性的任务,因为系统的状态可能在生物过程期间在这种关键转变之前表现出很小的表观变化或清晰现象。关于前转换状态是静止马尔可夫进程的结束或变化点,我们呈现了一种新的计算方法,基于隐马尔可夫模型(HMM)的状态转换前进方法,这是非参数估计和可以识别前转换状态。为了验证有效性,我们应用该方法以检测基于模拟数据集的复杂疾病的即将临界恶化的信号和高吞吐量微阵列数据提供的丰富信息。我们识别通过光气吸入引发的急性肺损伤的急性肺损后的预过渡状态和许多相关模块。功能和途径富集分析验证结果。

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