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What time is it? Deep learning approaches for circadian rhythms

机译:现在是几奌?昼夜节律的深度学习方法

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摘要

>Motivation: Circadian rhythms date back to the origins of life, are found in virtually every species and every cell, and play fundamental roles in functions ranging from metabolism to cognition. Modern high-throughput technologies allow the measurement of concentrations of transcripts, metabolites and other species along the circadian cycle creating novel computational challenges and opportunities, including the problems of inferring whether a given species oscillate in circadian fashion or not, and inferring the time at which a set of measurements was taken.>Results: We first curate several large synthetic and biological time series datasets containing labels for both periodic and aperiodic signals. We then use deep learning methods to develop and train BIO_CYCLE, a system to robustly estimate which signals are periodic in high-throughput circadian experiments, producing estimates of amplitudes, periods, phases, as well as several statistical significance measures. Using the curated data, BIO_CYCLE is compared to other approaches and shown to achieve state-of-the-art performance across multiple metrics. We then use deep learning methods to develop and train BIO_CLOCK to robustly estimate the time at which a particular single-time-point transcriptomic experiment was carried. In most cases, BIO_CLOCK can reliably predict time, within approximately 1 h, using the expression levels of only a small number of core clock genes. BIO_CLOCK is shown to work reasonably well across tissue types, and often with only small degradation across conditions. BIO_CLOCK is used to annotate most mouse experiments found in the GEO database with an inferred time stamp.>Availability and Implementation: All data and software are publicly available on the CircadiOmics web portal: .>Contacts: or >Supplementary information>: are available at Bioinformatics online.
机译:>动机:昼夜节律可以追溯到生命的起源,几乎存在于每个物种和每个细胞中,并在从代谢到认知的各种功能中起着基本作用。现代高通量技术允许在昼夜节律周期中测量转录本,代谢物和其他物种的浓度,从而产生新的计算挑战和机遇,包括推断给定物种是否以昼夜节律振荡以及推断时间的问题。 >结果:我们首先整理几个大型的合成和生物时间序列数据集,其中包含周期性和非周期性信号的标签。然后,我们使用深度学习方法来开发和训练BIO_CYCLE,该系统可以稳健地估计高通量昼夜节律实验中哪些信号是周期性的,并产生幅度,周期,相位以及几种统计显着性度量的估计。使用经过整理的数据,BIO_CYCLE与其他方法进行了比较,并显示出可以在多个指标上达到最新的性能。然后,我们使用深度学习方法来开发和训练BIO_CLOCK,以稳健地估计进行特定单时间点转录组实验的时间。在大多数情况下,BIO_CLOCK可以仅使用少量核心时钟基因的表达水平可靠地预测大约1 h内的时间。 BIO_CLOCK在各种组织类型上均能很好地发挥作用,并且在各种情况下通常只有很小的降解。 BIO_CLOCK用于用推断的时间戳注释在GEO数据库中找到的大多数鼠标实验。>可用性和实现:所有数据和软件均可在CircadiOmics网站门户上公开获得。 / strong>或>补充信息 >:可在在线生物信息学中获得。

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