Ramakrishnan Rajasekhar, Ramakrishnan Janak D
Department of Pediatrics, Columbia University College of Physicians and Surgeons, New York, NY 10032, USA.
Metabolism. 2008 Aug;57(8):1078-87. doi: 10.1016/j.metabol.2008.03.011.
Tracer enrichment data are fitted by multicompartmental models to estimate rate constants and fluxes or transport rates. In apolipoprotein turnover studies, mass measurements are also available, for example, apolipoprotein B levels in very low-density lipoprotein, intermediate-density lipoprotein, and low-density lipoprotein, and are often essential to calculate some of the rate constants. The usual method to use mass measurements is to estimate pool masses along with rate constants. A systematic alternative approach is developed to use flux balances around pools to express some rate constants in terms of the other rate constants and the measured masses. The resulting reduction in the number of parameters to be estimated makes the modeling more efficient. In models that would be unidentifiable without mass measurements, the usual approach and the proposed approach yield identical results. In a simple two-pool model, the number of unknown parameters is reduced from 4 to 2. In a published five-pool model for apolipoprotein B kinetics with three mass measurements, the number of parameters is reduced from 12 to 9. With m mass measurements, the number of responses to be fitted and the number of parameters to be estimated are each reduced by m, a simplification by 1/4 to 1/3 in a typical pool model. Besides a proportionate reduction in computational effort, there is a further benefit because the dimensionality of the problem is also decreased significantly, which means ease of convergence and a smaller likelihood of suboptimal solutions. Although our approach is conceptually straightforward, the dependencies get considerably more complex with increasing model size. To generate dependency definitions automatically, a Web-accessible program is available at http://biomath.info/poolfit/constraints.
示踪剂富集数据通过多室模型进行拟合,以估计速率常数、通量或转运速率。在载脂蛋白周转研究中,也可获得质量测量数据,例如极低密度脂蛋白、中间密度脂蛋白和低密度脂蛋白中的载脂蛋白B水平,这些数据对于计算某些速率常数通常至关重要。使用质量测量数据的常用方法是同时估计池质量和速率常数。本文开发了一种系统的替代方法,利用池周围的通量平衡,根据其他速率常数和测量质量来表示一些速率常数。由此减少了待估计参数的数量,使建模更高效。在没有质量测量数据就无法识别的模型中,常用方法和本文提出的方法会产生相同的结果。在一个简单的双池模型中,未知参数的数量从4个减少到2个。在一个已发表的用于载脂蛋白B动力学的五池模型中,有三次质量测量,参数数量从12个减少到9个。有了m次质量测量,待拟合的响应数量和待估计的参数数量均减少了m个,在典型的池模型中简化了1/4到1/3。除了计算量成比例减少外,还有一个进一步的好处,即问题的维度也显著降低,这意味着更容易收敛,且出现次优解的可能性更小。尽管我们的方法在概念上很简单,但随着模型规模的增加,相关性会变得相当复杂。为了自动生成相关性定义,可通过http://biomath.info/poolfit/constraints访问一个网络程序。