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Hierarchical Cluster-based Partial Least Squares Regression (HC-PLSR) is an efficient tool for metamodelling of nonlinear dynamic models

机译:基于层次聚类的偏最小二乘回归(HC-PLSR)是用于非线性动力学模型的元建模的有效工具

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摘要

BackgroundDeterministic dynamic models of complex biological systems contain a large number of parameters and state variables, related through nonlinear differential equations with various types of feedback. A metamodel of such a dynamic model is a statistical approximation model that maps variation in parameters and initial conditions (inputs) to variation in features of the trajectories of the state variables (outputs) throughout the entire biologically relevant input space. A sufficiently accurate mapping can be exploited both instrumentally and epistemically. Multivariate regression methodology is a commonly used approach for emulating dynamic models. However, when the input-output relations are highly nonlinear or non-monotone, a standard linear regression approach is prone to give suboptimal results. We therefore hypothesised that a more accurate mapping can be obtained by locally linear or locally polynomial regression. We present here a new method for local regression modelling, Hierarchical Cluster-based PLS regression (HC-PLSR), where fuzzy C-means clustering is used to separate the data set into parts according to the structure of the response surface. We compare the metamodelling performance of HC-PLSR with polynomial partial least squares regression (PLSR) and ordinary least squares (OLS) regression on various systems: six different gene regulatory network models with various types of feedback, a deterministic mathematical model of the mammalian circadian clock and a model of the mouse ventricular myocyte function.
机译:背景技术复杂生物系统的确定性动力学模型包含大量参数和状态变量,这些参数和状态变量是通过具有各种反馈类型的非线性微分方程关联的。这种动态模型的元模型是一种统计近似模型,可以将参数和初始条件(输入)的变化映射到整个生物学相关输入空间中状态变量(输出)的轨迹特征的变化。可以在仪器上和认识论上利用足够精确的映射。多元回归方法是模拟动态模型的常用方法。但是,当输入输出关系是高度非线性或非单调时,标准的线性回归方法倾向于给出次优的结果。因此,我们假设可以通过局部线性或局部多项式回归获得更准确的映射。我们在这里介绍一种用于局部回归建模的新方法,即基于层次聚类的PLS回归(HC-PLSR),其中,模糊C均值聚类用于根据响应面的结构将数据集分为多个部分。我们将HC-PLSR的元建模性能与多项式偏最小二乘回归(PLSR)和普通最小二乘(OLS)回归在各种系统上进行比较:六种具有各种反馈类型的基因调控网络模型,这是哺乳动物昼夜节律的确定性数学模型时钟和小鼠心室肌细胞功能模型。

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