Department of Chemical Engineering, KU Leuven, Leuven, Belgium
J R Soc Interface. 2018 Oct 31;15(147):20180530. doi: 10.1098/rsif.2018.0530.
Heterogeneity among individual cells is a characteristic and relevant feature of living systems. A range of experimental techniques to investigate this heterogeneity is available, and multiple modelling frameworks have been developed to describe and simulate the dynamics of heterogeneous populations. Measurement data are used to adjust computational models, which results in parameter and state estimation problems. Methods to solve these estimation problems need to take the specific properties of data and models into account. The aim of this review is to give an overview on the state of the art in estimation methods for heterogeneous cell population data and models. The focus is on models based on the population balance equation, but stochastic and individual-based models are also discussed. It starts with a brief discussion of common experimental approaches and types of measurement data that can be obtained in this context. The second part describes computational modelling frameworks for heterogeneous populations and the types of estimation problems occurring for these models. The third part starts with a discussion of observability and identifiability properties, after which the computational methods to solve the various estimation problems are described.
细胞间的异质性是生命系统的一个特征和相关特征。有一系列用于研究这种异质性的实验技术,并且已经开发出多种建模框架来描述和模拟异质群体的动态。测量数据用于调整计算模型,这导致了参数和状态估计问题。解决这些估计问题的方法需要考虑数据和模型的特定属性。本文的目的是概述用于异质细胞群体数据和模型的估计方法的最新进展。重点是基于群体平衡方程的模型,但也讨论了随机和基于个体的模型。它首先简要讨论了在这种情况下可以获得的常见实验方法和测量数据类型。第二部分描述了用于异质群体的计算建模框架以及这些模型中出现的各种估计问题的类型。第三部分首先讨论了可观测性和可识别性属性,然后描述了解决各种估计问题的计算方法。