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Comparison of several non-linear-regression methods for fitting the Michaelis-Menten equation.

机译:几种拟合Michaelis-Menten方程的非线性回归方法的比较。

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摘要

The known jackknife methods (i.e. standard jackknife, weighted jackknife, linear jackknife and weighted linear jackknife) for the determination of the parameters (as well as of their confidence regions) were tested and compared with the simple Marquardt's technique (comprising the calculation of confidence intervals from the variance-co-variance matrix). The simulated data corresponding to the Michaelis-Menten equation with defined structure and magnitude of error of the dependent variable were used for fitting. There were no essential differences between the results of both point and interval parameter estimations by the tested methods. Marquardt's procedure yielded slightly better results than the jackknives for five scattered data points (the use of this method is advisable for routine analyses). The classical jackknife was slightly superior to the other methods for 20 data points (this method can be recommended for very precise calculations if great numbers of data are available). The weighting does not seem to be necessary in this type of equation because the parameter estimates obtained with all methods with the use of constant weights were comparable with those calculated with the weights corresponding exactly to the real error structure whereas the relative weighting led to rather worse results.
机译:测试了用于确定参数(及其置信区间)的已知折刀方法(即标准折刀,加权折刀,线性折刀和加权线性折刀),并与简单的Marquardt技术(包括计算置信区间)进行了比较来自方差-协方差矩阵)。使用与具有定义的结构和因变量的误差幅度的Michaelis-Menten方程相对应的模拟数据进行拟合。通过测试方法得出的点参数和区间参数估计的结果之间没有本质区别。在五个分散的数据点上,Marquardt的方法产生的结果要比折刀略好(建议对常规分析使用此方法)。对于20个数据点,经典折刀略胜于其他方法(如果有大量数据可用,建议使用此方法进行非常精确的计算)。在这种类型的方程中,似乎不需要加权,因为使用恒定权重的所有方法所获得的参数估计值与精确地对应于实际误差结构的权重所计算的参数估计值具有可比性,而相对权重则导致更糟结果。

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