Sadegh Zadeh Kouroush, Elman Howard C, Montas Hubert J, Shirmohammadi Adel
Department of Computer Science, University of Maryland, College Park, MD 20742, USA.
Biomed Eng Online. 2007 Jun 28;6:24. doi: 10.1186/1475-925X-6-24.
Biological mass transport processes determine the behavior and function of cells, regulate interactions between synthetic agents and recipient targets, and are key elements in the design and use of biosensors. Accurately predicting the outcomes of such processes is crucial to both enhancing our understanding of how these systems function, enabling the design of effective strategies to control their function, and verifying that engineered solutions perform according to plan.
A Galerkin-based finite element model was developed and implemented to solve a system of two coupled partial differential equations governing biomolecule transport and reaction in live cells. The simulator was coupled, in the framework of an inverse modeling strategy, with an optimization algorithm and an experimental time series, obtained by the Fluorescence Recovery after Photobleaching (FRAP) technique, to estimate biomolecule mass transport and reaction rate parameters. In the inverse algorithm, an adaptive method was implemented to calculate sensitivity matrix. A multi-criteria termination rule was developed to stop the inverse code at the solution. The applicability of the model was illustrated by simulating the mobility and binding of GFP-tagged glucocorticoid receptor in the nucleoplasm of mouse adenocarcinoma.
The numerical simulator shows excellent agreement with the analytic solutions and experimental FRAP data. Detailed residual analysis indicates that residuals have zero mean and constant variance and are normally distributed and uncorrelated. Therefore, the necessary and sufficient criteria for least square parameter optimization, which was used in this study, were met.
The developed strategy is an efficient approach to extract as much physiochemical information from the FRAP protocol as possible. Well-posedness analysis of the inverse problem, however, indicates that the FRAP protocol provides insufficient information for unique simultaneous estimation of diffusion coefficient and binding rate parameters. Care should be exercised in drawing inferences, from FRAP data, regarding concentrations of free and bound proteins, average binding and diffusion times, and protein mobility unless they are confirmed by long-range Markov Chain-Monte Carlo (MCMC) methods and experimental observations.
生物质量传输过程决定细胞的行为和功能,调节合成试剂与受体靶点之间的相互作用,并且是生物传感器设计和使用中的关键要素。准确预测此类过程的结果对于增进我们对这些系统如何运作的理解、设计控制其功能的有效策略以及验证工程解决方案是否按计划执行至关重要。
开发并实施了基于伽辽金法的有限元模型,以求解控制活细胞中生物分子传输和反应的两个耦合偏微分方程组。在逆建模策略框架下,该模拟器与一种优化算法以及通过光漂白后荧光恢复(FRAP)技术获得的实验时间序列相结合,以估计生物分子质量传输和反应速率参数。在逆算法中,采用了一种自适应方法来计算灵敏度矩阵。制定了多准则终止规则以在解处停止逆代码。通过模拟绿色荧光蛋白标记的糖皮质激素受体在小鼠腺癌核质中的迁移率和结合情况,说明了该模型的适用性。
数值模拟器与解析解和实验FRAP数据显示出极好的一致性。详细的残差分析表明,残差具有零均值和恒定方差,呈正态分布且不相关。因此,满足了本研究中使用的最小二乘参数优化的充要条件。
所开发的策略是一种从FRAP实验方案中尽可能多地提取物理化学信息的有效方法。然而,对逆问题的适定性分析表明,FRAP实验方案为唯一同时估计扩散系数和结合速率参数提供的信息不足。在从FRAP数据推断游离和结合蛋白的浓度、平均结合和扩散时间以及蛋白迁移率时应谨慎,除非它们通过长程马尔可夫链蒙特卡罗(MCMC)方法和实验观察得到证实。