Kakkar T, Boxenbaum H, Mayersohn M
Department of Pharmacy Practice and Science and the Center for Toxicology, College of Pharmacy, The University of Arizona, Tucson, Arizona 85721, USA.
Drug Metab Dispos. 1999 Jun;27(6):756-62.
There are a variety of methods available to calculate the inhibition constant (Ki) that characterizes substrate inhibition by a competitive inhibitor. Linearized versions of the Michaelis-Menten equation (e.g., Lineweaver-Burk, Dixon, etc.) are frequently used, but they often produce substantial errors in parameter estimation. This study was conducted to compare three methods of analysis for the estimation of Ki: simultaneous nonlinear regression (SNLR); nonsimultaneous, nonlinear regression, "KM,app" method; and the Dixon method. Metabolite formation rates were simulated for a competitive inhibition model with random error (corresponding to 10% coefficient of variation). These rates were generated for a control (i.e., no inhibitor) and five inhibitor concentrations with six substrate concentrations per inhibitor and control. The KM/Ki ratios ranged from less than 0.1 to greater than 600. A total of 3 data sets for each of three KM/Ki ratios were generated (i.e., 108 rates/data set per KM/Ki ratio). The mean inhibition and control data were fit simultaneously (SNLR method) using the full competitive enzyme-inhibition equation. In the KM,app method, the mean inhibition and control data were fit separately to the Michaelis-Menten equation. The SNLR approach was the most robust, fastest, and easiest to implement. The KM,app method gave good estimates of Ki but was more time consuming. Both methods gave good recoveries of KM and VMAX values. The Dixon method gave widely ranging and inaccurate estimates of Ki. For reliable estimation of Ki values, the SNLR method is preferred.
有多种方法可用于计算表征竞争性抑制剂对底物抑制作用的抑制常数(Ki)。米氏方程的线性化形式(如Lineweaver-Burk法、Dixon法等)经常被使用,但它们在参数估计中往往会产生较大误差。本研究旨在比较三种分析方法来估计Ki:同时非线性回归(SNLR);非同时非线性回归“KM,app”法;以及Dixon法。针对具有随机误差(对应10%变异系数)的竞争性抑制模型模拟代谢物生成速率。这些速率是针对一个对照(即无抑制剂)以及五种抑制剂浓度生成的,每种抑制剂和对照有六个底物浓度。KM/Ki比值范围从小于0.1到大于600。针对三个KM/Ki比值中的每一个生成了总共3个数据集(即每个KM/Ki比值有108个速率/数据集)。使用完整的竞争性酶抑制方程同时拟合平均抑制和对照数据(SNLR法)。在“KM,app”法中,分别将平均抑制和对照数据拟合到米氏方程。SNLR方法是最稳健、最快且最易于实施的。“KM,app”法对Ki给出了良好的估计,但耗时更长。两种方法对KM和VMAX值都有良好的回收率。Dixon法对Ki的估计范围广泛且不准确。为了可靠地估计Ki值,首选SNLR方法。