4.5 Article

Statistical error in isothermal titration calorimetry: Variance function estimation from generalized least squares

Journal

ANALYTICAL BIOCHEMISTRY
Volume 343, Issue 1, Pages 106-115

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.ab.2005.04.026

Keywords

ITC; data analysis; generalized least squares; nonlinear least squares; Monte Carlo

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The method of generalized least squares (GLS) is used to assess the variance function for isothermal titration calorimetry (ITC) data collected for the 1:1 complexation of Ba2+ with 18-crown-6 ether. In the GLS method, the least squares (LS) residuals from the data fit are themselves fitted to a variance function, with iterative adjustment of the weighting function in the data analysis to produce consistency. The data are treated in a pooled fashion, providing 321 fitted residuals from 35 data sets in the final analysis. Heteroscedasticity (nonconstant variance) is clearly indicated. Data error terms proportional to q(i) and q(i)/v are well defined statistically, where qi is the heat from the ith injection of titrant and v is the injected volume. The statistical significance of the variance function parameters is confirmed through Monte Carlo calculations that mimic the actual data set. For the data in question, which fall mostly in the range of q(i) = 100-2000 peal, the contributions to the data variance from the terms in q(i)(2) typically exceed the background constant term for q(i) > 300 peal and v < 10 mu l. Conversely, this means that in reactions with qi much less than this, heteroscedasticity is not a significant problem. Accordingly, in such cases the standard unweighted fitting procedures provide reliable results for the key parameters, K and Delta H degrees and their statistical errors. These results also support an important earlier finding: in most ITC work on 1: 1 binding processes, the optimal number of injections is 7-10, which is a factor of 3 smaller than the current norm. For high-q reactions, where weighting is needed for optimal LS analysis, tips are given for using the weighting option in the commercial software commonly employed to process ITC data. (c) 2005 Elsevier Inc. All rights reserved.

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