论文标题
对非线性生物物理趋势进行建模,然后是长期内存平衡,变化点未知
Modeling a Nonlinear Biophysical Trend Followed by Long-Memory Equilibrium with Unknown Change Point
论文作者
论文摘要
许多生物过程的测量值是初始趋势周期,其次是平衡时期。科学家可能希望量化两个时期的特征以及变化点的时间。具体而言,我们是出于研究电细胞 - 基底阻抗感应(ECIS)数据的问题。 ECIS是一种流行的新技术,可无创地测量细胞行为。先前使用ECIS数据的研究发现,不同的细胞类型可以通过其平衡行为进行分类。但是,确定何时达到平衡并量化细胞平衡行为的相关特征可能会很具有挑战性。在本文中,我们假设趋势期间的测量值是与时间平滑的非线性函数的独立偏差,并且在平衡期间的测量值以简单的长记忆模型为特征。我们提出了一种同时估计趋势和平衡过程参数并定位两者之间的变化点的方法。我们发现该方法在模拟和实践中表现良好。当应用于ECIS数据时,它会产生变化点的估计值和细胞平衡行为的度量,从而改善了感染和未感染细胞的分类。
Measurements of many biological processes are characterized by an initial trend period followed by an equilibrium period. Scientists may wish to quantify features of the two periods, as well as the timing of the change point. Specifically, we are motivated by problems in the study of electrical cell-substrate impedance sensing (ECIS) data. ECIS is a popular new technology which measures cell behavior non-invasively. Previous studies using ECIS data have found that different cell types can be classified by their equilibrium behavior. However, it can be challenging to identify when equilibrium has been reached, and to quantify the relevant features of cells' equilibrium behavior. In this paper, we assume that measurements during the trend period are independent deviations from a smooth nonlinear function of time, and that measurements during the equilibrium period are characterized by a simple long memory model. We propose a method to simultaneously estimate the parameters of the trend and equilibrium processes and locate the change point between the two. We find that this method performs well in simulations and in practice. When applied to ECIS data, it produces estimates of change points and measures of cell equilibrium behavior which offer improved classification of infected and uninfected cells.