Department of Cellular and Molecular Physiology, Yale School of Medicine, New Haven, CT, USA.
J Biol Rhythms. 2010 Oct;25(5):372-80. doi: 10.1177/0748730410379711.
Circadian rhythms are oscillations of physiology, behavior, and metabolism that have period lengths near 24 hours. In several model organisms and humans, circadian clock genes have been characterized and found to be transcription factors. Because of this, researchers have used microarrays to characterize global regulation of gene expression and algorithmic approaches to detect cycling. This article presents a new algorithm, JTK_CYCLE, designed to efficiently identify and characterize cycling variables in large data sets. Compared with COSOPT and the Fisher's G test, two commonly used methods for detecting cycling transcripts, JTK_CYCLE distinguishes between rhythmic and nonrhythmic transcripts more reliably and efficiently. JTK_CYCLE's increased resistance to outliers results in considerably greater sensitivity and specificity. Moreover, JTK_CYCLE accurately measures the period, phase, and amplitude of cycling transcripts, facilitating downstream analyses. Finally, JTK_CYCLE is several orders of magnitude faster than COSOPT, making it ideal for large-scale data sets. JTK_CYCLE was used to analyze legacy data sets including NIH3T3 cells, which have comparatively low amplitude oscillations. JTK_CYCLE's improved power led to the identification of a novel cluster of RNA-interacting genes whose abundance is under clear circadian regulation. These data suggest that JTK_CYCLE is an ideal tool for identifying and characterizing oscillations in genome-scale data sets.
昼夜节律是生理、行为和代谢的波动,其周期长度接近 24 小时。在几种模式生物和人类中,昼夜节律钟基因已经被描述,并被发现是转录因子。正因为如此,研究人员使用微阵列来描述基因表达的全局调控,并采用算法方法来检测循环。本文提出了一种新的算法 JTK_CYCLE,旨在有效地识别和描述大数据集中的循环变量。与两种常用的检测循环转录本的方法(COSMOPT 和 Fisher 的 G 检验)相比,JTK_CYCLE 能够更可靠和有效地区分节律和非节律转录本。JTK_CYCLE 对异常值的更高抵抗力导致其具有更高的灵敏度和特异性。此外,JTK_CYCLE 可以准确地测量循环转录本的周期、相位和幅度,从而促进下游分析。最后,JTK_CYCLE 的速度比 COSOPT 快几个数量级,使其成为大规模数据集的理想选择。JTK_CYCLE 被用于分析包括 NIH3T3 细胞在内的遗留数据集,这些细胞的振荡幅度相对较低。JTK_CYCLE 提高了功率,从而鉴定出了一个新的 RNA 相互作用基因簇,其丰度受到明显的昼夜节律调节。这些数据表明,JTK_CYCLE 是识别和描述基因组规模数据集振荡的理想工具。