非线性RANSAC优化参数估计及其在吞噬细胞迁移中的应用。

Mingon Kang, Jean Gao, Liping Tang
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引用次数: 0

摘要

建立有力的数学方程和在可行的计算时间内估计准确的参数是建立可靠的系统模型以表示系统的生物特性和进行可靠的仿真所不可缺少的两个部分。对于观测值有限的复杂生物系统,数学建模中存在大量未知参数,这些参数的取值直接决定了计算建模的性能,这是一项艰巨的任务。为了解决这一问题,我们开发了一种数据驱动的全局优化方法——非线性RANSAC,该方法基于随机样本共识(RANdom SAmple Consensus,又名RANSAC)方法,用于非线性系统模型的参数估计。传统的RANSAC方法简单可靠,但主要面向线性系统模型。我们不仅吸收了RANSAC的优点,而且将该方法推广到具有优异性能的非线性系统中。作为一个具体的应用实例,我们有针对性地了解了生物医学器械植入过程中参与纤维化过程的吞噬细胞迁移。根据系统的非线性数学方程,对系统参数进行非线性RANSAC估计。为了评估该方法的一般性能,我们还将该方法应用于具有一般格式的常微分方程的信号通路。
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Nonlinear RANSAC Optimization for Parameter Estimation with Applications to Phagocyte Transmigration.

Developing vigorous mathematical equations and estimating accurate parameters within feasible computational time are two indispensable parts to build reliable system models for representing biological properties of the system and for producing reliable simulation. For a complex biological system with limited observations, one of the daunting tasks is the large number of unknown parameters in the mathematical modeling whose values directly determine the performance of computational modeling. To tackle this problem, we have developed a data-driven global optimization method, nonlinear RANSAC, based on RANdom SAmple Consensus (a.k.a. RANSAC) method for parameter estimation of nonlinear system models. Conventional RANSAC method is sound and simple, but it is oriented for linear system models. We not only adopt the strengths of RANSAC, but also extend the method to nonlinear systems with outstanding performance. As a specific application example, we have targeted understanding phagocyte transmigration which is involved in the fibrosis process for biomedical device implantation. With well-defined mathematical nonlinear equations of the system, nonlinear RANSAC is performed for the parameter estimation. In order to evaluate the general performance of the method, we also applied the method to signalling pathways with ordinary differential equations as a general format.

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