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Spectral Analysis on Time-Course Expression Data: Detecting Periodic Genes Using a Real-Valued Iterative Adaptive Approach

机译:时间过程表达数据的频谱分析:使用实值迭代自适应方法检测周期基因

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摘要

Time-course expression profiles and methods for spectrum analysis have been applied for detecting transcriptional periodicities, which are valuable patterns to unravel genes associated with cell cycle and circadian rhythm regulation. However, most of the proposed methods suffer from restrictions and large false positives to a certain extent. Additionally, in some experiments, arbitrarily irregular sampling times as well as the presence of high noise and small sample sizes make accurate detection a challenging task. A novel scheme for detecting periodicities in time-course expression data is proposed, in which a real-valued iterative adaptive approach (RIAA), originally proposed for signal processing, is applied for periodogram estimation. The inferred spectrum is then analyzed using Fisher's hypothesis test. With a proper p-value threshold, periodic genes can be detected. A periodic signal, two nonperiodic signals, and four sampling strategies were considered in the simulations, including both bursts and drops. In addition, two yeast real datasets were applied for validation. The simulations and real data analysis reveal that RIAA can perform competitively with the existing algorithms. The advantage of RIAA is manifested when the expression data are highly irregularly sampled, and when the number of cycles covered by the sampling time points is very reduced.
机译:时程表达谱和用于频谱分析的方法已用于检测转录周期,这是揭示与细胞周期和昼夜节律调节相关的基因的宝贵模式。然而,大多数提出的方法在一定程度上受到限制和较大的误报。此外,在某些实验中,任意不规则的采样时间以及高噪声和小样本量的存在使准确检测成为一项艰巨的任务。提出了一种检测时程表达数据中周期性的新方案,该方案将最初提出用于信号处理的实值迭代自适应方法(RIAA)用于周期图估计。然后使用Fisher假设检验分析推断的光谱。使用适当的p值阈值,可以检测到周期性基因。在仿真中考虑了周期性信号,两个非周期性信号和四种采样策略,包括突发和下降。另外,应用了两个酵母真实数据集进行验证。仿真和实际数据分析表明,RIAA可以与现有算法竞争。当对表达数据进行高度不规则采样时,以及采样时间点所覆盖的循环数大大减少时,RIAA的优势就得到了体现。

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