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ZeitZeiger: supervised learning for high-dimensional data from an oscillatory system

机译:Zeitzeiger:监督从振荡系统的高维数据学习

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摘要

Numerous biological systems oscillate over time or space. Despite these oscillators' importance, data from an oscillatory system is problematic for existing methods of regularized supervised learning. We present ZeitZeiger, a method to predict a periodic variable (e.g. time of day) from a high-dimensional observation. ZeitZeiger learns a sparse representation of the variation associated with the periodic variable in the training observations, then uses maximum-likelihood to make a prediction for a test observation. We applied ZeitZeiger to a comprehensive dataset of genome-wide gene expression from the mammalian circadian oscillator. Using the expression of 13 genes, ZeitZeiger predicted circadian time (internal time of day) in each of 12 mouse organs to within similar to 1 h, resulting in a multi-organ predictor of circadian time. Compared to the state-of-the-art approach, ZeitZeiger was faster, more accurate and used fewer genes. We then validated the multi-organ predictor on 20 additional datasets comprising nearly 800 samples. Our results suggest that ZeitZeiger not only makes accurate predictions, but also gives insight into the behavior and structure of the oscillator from which the data originated. As our ability to collect high-dimensional data from various biological oscillators increases, ZeitZeiger should enhance efforts to convert these data to knowledge.
机译:许多生物系统随时间或空间振荡。尽管有这些振荡器的重要性,来自振荡系统的数据对于现有的正规化监督学习方法是有问题的。我们介绍Zeitzeiger,一种从高维观察预测周期性变量(例如时的时间)的方法。 Zeitzeiger学习与训练观测中的定期变量相关的变化的稀疏表示,然后使用最大可能性来对测试观察进行预测。我们将Zeitzeiger应用于来自哺乳动物昼夜振荡器的基因组基因表达的综合数据集。使用13个基因的表达,Zeitzeiger预测了12只小鼠器官中的每一个中的昼夜昼夜时间(内部时间)到类似于1小时,导致昼夜节点的多器官预测因子。与最先进的方法相比,Zeitzeiger更快,更准确,并使用较少的基因。然后,我们在包含近800个样本的20个附加数据集上验证了多器官预测器。我们的结果表明,Zeitzeiger不仅可以准确预测,而且还可以深入了解振荡器的行为和结构,从中起源于此。由于我们从各种生物振荡器收集高维数据的能力增加,Zeitzeiger应该增强将这些数据转换为知识的努力。

著录项

  • 来源
    《Nucleic Acids Research》 |2016年第8期|共13页
  • 作者单位

    Univ Calif San Francisco Inst Computat Hlth Sci San Francisco CA 94158 USA;

    Stanford Univ Dept Stat Stanford CA 94305 USA;

    Univ Calif San Francisco Inst Computat Hlth Sci San Francisco CA 94158 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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