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On Inferring Reactions from Data Time Series by a Statistical Learning Greedy Heuristics

机译:基于统计学习贪婪启发式的数据时间序列推断反应

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With the automation of biological experiments and the increase of quality of single cell data that can now be. obtained by phos-phoproteomic and time lapse videomicroscopy, automating the building of mechanistic models from these data time series becomes conceivable and a necessity for many new applications. While learning numerical parameters to fit a given model structure to observed data is now a quite well understood subject, learning the structure of the model is a more challenging problem that previous attempts failed to solve without relying quite heavily on prior knowledge about that structure. In this paper, we consider mechanistic models based on chemical reaction networks (CRN) with their continuous dynamics based on ordinary differential equations, and finite time series about the time evolution of concentration of molecular species for a given time horizon and a finite set of perturbed initial conditions. We present a greedy heuristics unsupervised statistical learning algorithm to infer reactions with a time complexity for inferring one reaction in O(t.n~2) where n is the number of species and t the number of observed transitions in the traces. We evaluate this algorithm both on simulated data from hidden CRNs, and on real videomicroscopy single cell data about the circadian clock and cell cycle progression of NIH3T3 embryonic fibroblasts. In all cases, our algorithm is able to infer meaningful reactions, though generally not a complete set for instance in presence of multiple time scales or highly variable traces.
机译:随着生物实验的自动化以及单细胞数据质量的提高,现在可以了。通过光蛋白质组学和延时视频显微术获得的结果,从这些数据时间序列自动建立机理模型变得可行,这对于许多新应用是必要的。虽然学习数值参数以使给定的模型结构适合观察到的数据现在是一个非常容易理解的主题,但是学习模型的结构是一个更具挑战性的问题,以前的尝试无法在不非常依赖于该结构的先验知识的情况下解决。在本文中,我们考虑基于化学反应网络(CRN)的机械模型及其基于常微分方程的连续动力学,以及在给定时间范围内和有限扰动下关于分子种类浓度的时间演化的有限时间序列初始状态。我们提出了一种贪婪启发式无监督统计学习算法来推断具有时间复杂性的反应,以推断O(t.n〜2)中的一个反应,其中n是物种数,t是迹线中观察到的跃迁数。我们对来自隐藏的CRN的模拟数据以及有关NIH3T3胚胎成纤维细胞的昼夜节律和细胞周期进程的真实视频显微镜单细胞数据都评估了该算法。在所有情况下,我们的算法都能够推断出有意义的反应,尽管例如在存在多个时间尺度或高度可变的迹线的情况下通常不是完整的反应。

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