2019
DOI: 10.1002/cem.3183
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Properly handling negative values in the calculation of binding constants by physicochemical modeling of spectroscopic titration data

Abstract: To implement equilibrium hard‐modeling of spectroscopic titration data, the analyst must make a variety of crucial data processing choices that address negative absorbance and molar absorptivity values. The efficacy of three such methodological options is evaluated via high‐throughput Monte Carlo simulations, root‐mean‐square error surface mapping, and two mathematical theorems. Accuracy of the calculated binding constant values constitutes the key figure of merit used to compare different data analysis approa… Show more

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Cited by 7 publications
(5 citation statements)
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References 51 publications
(110 reference statements)
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“…In these simulations, spiked profiles are run to 1.5 equivalents to ensure that the 1:1 equivalence is reached near the same point during the titration. Spiked profiles should be employed when the guest species does not absorb so that the dataset may be safely shifted upwards, eliminating negative values and any associated bias without introducing new errors . These profiles are additionally employed in the existing experimental literature to reduce the possibility of aggregation side reactions, to avoid unnecessary dilution factors in the data analysis, and to permit easier visual identification of the titration endpoint.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…In these simulations, spiked profiles are run to 1.5 equivalents to ensure that the 1:1 equivalence is reached near the same point during the titration. Spiked profiles should be employed when the guest species does not absorb so that the dataset may be safely shifted upwards, eliminating negative values and any associated bias without introducing new errors . These profiles are additionally employed in the existing experimental literature to reduce the possibility of aggregation side reactions, to avoid unnecessary dilution factors in the data analysis, and to permit easier visual identification of the titration endpoint.…”
Section: Methodsmentioning
confidence: 99%
“…This technique achieves superior resolution over averaging results from single‐wavelength vectors by making the global minimum more sharply defined on the error surface . The basic implementation of global analysis in physicochemical modeling (also known as hard modeling) has been explained in detail elsewhere . Briefly, the idea is to decompose the absorbance matrix, D , into the matrix product of smaller matrices of molar absorptivities, R , and equilibrium concentrations, C , with an additive residual error matrix: D = RC + E .…”
Section: Introductionmentioning
confidence: 99%
“…While statistical methods such as the Hamilton R-factor, Pearson R-factor, mean error of prediction, and Akaike information criteria can be employed, 20,21 previous work has shown these methods frequently fail to predict the correct model owing to experimental error in the initial concentration (predictor variables) and the many degrees of freedom in the fitted absorptivity curves. 16 Furthermore, the number of reactions considered does not vary in a stoichiometry optimization calculation, so the use of information criteria metrics does not alter the model rankings. 43,44 We therefore take the view that the RMSE metric is sufficient, and we employ chemical intuition based on inspection of the stoichiometry ratios and absorptivity curves whenever it is necessary to distinguish between models with different degrees of freedom.…”
Section: Mathematical Definition Of the Stoichiometry Optimization Pr...mentioning
confidence: 99%
“…The mathematical procedure of hard modeling has been described in great detail in previous literature 6 . When the exact equilibrium binding model is known, the hard‐modeling process is in general very time efficient, requiring at most a couple minutes to obtain results even for complex equilibrium models 16 …”
Section: Introductionmentioning
confidence: 99%
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