Tellinghuisen Joel
Department of Chemistry, Vanderbilt University, Nashville, Tennessee, USA.
Methods Enzymol. 2009;467:499-529. doi: 10.1016/S0076-6879(09)67019-1.
The rectangular hyperbola, y=abx/(1+bx), is widely used as a fit model in the analysis of data from studies of binding, sorption, enzyme kinetics, and fluorescence quenching. The choice of this or its linearized versions--the double-reciprocal, y-reciprocal, or x-reciprocal--in unweighted least squares imply different assumptions about the error structure of the data. The rules of error propagation are reviewed and used to derive weighting expressions for application in weighted least squares, in the usual case where y is correctly considered the dependent variable, and in the less common situations where x is the true dependent variable, in violation of one of the fundamental premises of most least-squares methods. The latter case is handled through an effective variance treatment and through a least-squares method that treats any or all of the variables as uncertain. The weighting expressions for the linearized versions of the fit model are verified by computing the parameter standard errors for exactly fitting data. Consistent weightings yield identical standard errors in this exercise, as is demonstrated with a common data analysis program. The statistical properties of linear and nonlinear estimators of the parameters are examined with reference to the properties of reciprocals of normal variates. Monte Carlo simulations confirm that the least-squares methods yield negligible bias and trustworthy confidence limits for the parameters as long as their percent standard errors are less than approximately 10%. Correct weights being the key to optimal analysis in all cases, methods for estimating variance functions by least-squares analysis of replicate data are reviewed briefly.
矩形双曲线(y = \frac{abx}{1 + bx})在结合、吸附、酶动力学和荧光猝灭研究的数据分析中被广泛用作拟合模型。在无加权最小二乘法中选择该模型或其线性化形式(双倒数、y倒数或x倒数)意味着对数据的误差结构有不同的假设。回顾了误差传播规则,并用于推导加权表达式,以便在加权最小二乘法中应用。在通常情况下,y被正确地视为因变量;在不太常见的情况下,x是真正的因变量,这违反了大多数最小二乘法的基本前提之一。后一种情况通过有效的方差处理和将任何或所有变量视为不确定的最小二乘法来处理。通过计算精确拟合数据的参数标准误差,验证了拟合模型线性化形式的加权表达式。如一个常见的数据分析程序所示,在这个练习中,一致的加权会产生相同的标准误差。参照正态变量倒数的性质,研究了参数线性和非线性估计量的统计特性。蒙特卡罗模拟证实,只要参数的百分比标准误差小于约10%,最小二乘法对参数产生的偏差可以忽略不计,置信限是可靠的。在所有情况下,正确的加权是最优分析的关键,简要回顾了通过对重复数据进行最小二乘分析来估计方差函数的方法。