Rodbard D, Munson P J, Thakur A K
Cancer. 1980 Dec 15;46(12 Suppl):2907-18. doi: 10.1002/1097-0142(19801215)46:12+<2907::aid-cncr2820461433>3.0.co;2-6.
Most workers characterize steroid (and other hormone) receptors by graphical analysis of Scatchard plots or by simple linear regression. Unfortunately, these methods are suboptimal from a statistical point of view. The Scatchard plot, B/F vs. [Bound], does not satisfy the assumptions underlying simple linear regression: both variables are subject to error, and these errors are intimately interdependent. Accordingly, nether B/F nor [Bound] is an appropriate independent variable. Furthermore, both variables (B/F and [Bound] show non-uniformity of variance. Thus, even when the Scatchard plot is liner, one should estimate the binding parameters (affinity, K, and binding capacity, R) by means of weighted nonlinear least-squares regression, using the Total ligand concentration as the independent variable, and either B/T or [Bound] as the dependent variable. In the case of a nonlinear Scatchard plot, one should also use weighted nonlinear least-squares curve fitting to estimate the K and R values for the high and low affinity classes of sites. Allowing the computer program to provide the best estimate of the nonspecific or nonsaturable binding is also desirable. The program should provide estimates of the standard errors and/or 95% confidence limits for the estimated parameters, and the joint 95% confidence limits for K and R. One should routinely attempt to fit several models of varying degrees of complexity (e.g., 1,2, or 3 classes of sites), provide estimates of the goodness-of-fit for each, and then select the best model by statistical criteria. Sometimes, we encounter Scatchard plots that are obviously nonlinear but provide insufficient information within any one experiment to permit reliable characterization of two or more classes of sites. In this case, we may employ any of several alternative techniques, including 1) use of the " limiting slopes" technique to obtain approximate estimates of parameters; 2) use of a Continuous Affinity Distribution, with consideration of only the receptors with an affinity above an arbitrarily selected cutoff value of k; 3) use of a Discrete Affinity Distribution, by assigning values to the affinities (K19 K2) based on prior information, and then estimating the binding capacities; 4) pooling information over several specimens within an assay or over several assays by use of normalizing or scaling factors. The best estimates of these scaling factors can be obtained by the use of a general least-squares method for pooling data from different specimens or experiments. A series of computer programs to perform these analyses has been developed. They have been applied successfully to analysis of steroid receptors in specimens from breast carcinoma.
大多数研究人员通过对Scatchard图进行图形分析或简单线性回归来表征类固醇(及其他激素)受体。不幸的是,从统计学角度来看,这些方法并不理想。Scatchard图(B/F对[Bound])并不满足简单线性回归的基本假设:两个变量都存在误差,且这些误差紧密相关。因此,B/F和[Bound]都不是合适的自变量。此外,两个变量(B/F和[Bound])都表现出方差的不均匀性。所以,即使Scatchard图呈线性,也应通过加权非线性最小二乘法回归来估计结合参数(亲和力,K,和结合容量,R),以总配体浓度作为自变量,以B/T或[Bound]作为因变量。对于非线性Scatchard图的情况,也应使用加权非线性最小二乘曲线拟合来估计高亲和力和低亲和力位点类别的K和R值。让计算机程序提供非特异性或非饱和结合的最佳估计也是可取的。该程序应提供估计参数的标准误差和/或95%置信限,以及K和R的联合95%置信限。应常规尝试拟合几种不同复杂度的模型(例如,1、2或3类位点),为每个模型提供拟合优度估计,然后根据统计标准选择最佳模型。有时,我们会遇到明显非线性的Scatchard图,但在任何一个实验中提供的信息不足以可靠地表征两类或更多类位点。在这种情况下,我们可以采用几种替代技术中的任何一种,包括:1)使用“极限斜率”技术来获得参数的近似估计;2)使用连续亲和力分布,仅考虑亲和力高于任意选定的截止值k的受体;3)使用离散亲和力分布,根据先验信息为亲和力(K1、K2)赋值,然后估计结合容量;4)通过使用归一化或缩放因子在一个测定中的几个样本或几个测定之间汇总信息。这些缩放因子的最佳估计可以通过使用一般最小二乘法从不同样本或实验中汇总数据来获得。已经开发了一系列用于执行这些分析的计算机程序。它们已成功应用于乳腺癌标本中类固醇受体的分析。