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Published June 2022 | Supplemental Material
Journal Article Open

A reliable algorithm for calculating stoichiometry parameters in the hard modeling of spectrophotometric titration data

Abstract

Computation of binding constants from spectrophotometric titration data is a very popular application of chemometric hard modeling. However, the calculated values are misleading if the correct binding model is not used. Given that many supramolecular systems of interest feature unknown speciation, a priori determination of binding stoichiometry constitutes an important unsolved problem in chemometrics. We present a new and reliable algorithm for accomplishing this task, implemented using a hybrid particle swarm optimization technique. Simultaneous optimization of stoichiometry ratios and binding constants allows the optimal binding model to be calculated in just a few minutes for systems with up to four reactions. Simulated data studies demonstrate that the algorithm finds the correct stoichiometry with up to nine reactions in the absence of noise, including accurately determining species with unusual stoichiometry, such as H2G5. Application to four experimental datasets shows the algorithm is robust to experimental errors for a variety of chemical systems and binding models. This algorithm will facilitate the discovery of complex binding models, increase efficiency in titration analysis, and avert incorrect stoichiometry models, thereby improving the reliability of binding constant information in spectrophotometric titrations.

Additional Information

© 2022 John Wiley & Sons Ltd. Issue Online: 18 June 2022; Version of Record online: 25 May 2022; Accepted manuscript online: 08 May 2022; Manuscript accepted: 04 May 2022; Manuscript revised: 29 April 2022; Manuscript received: 14 March 2022. Funding information: National Science Foundation Graduate Research Fellowship, Grant/Award Numbers: DGE-2034835, DGE-1745301; Hertz Fellowship; Arnold and Mabel Beckman Foundation; National Science Foundation, Grant/Award Numbers: 1726260, 2004005. Peer Review: The peer review history for this article is available at https://publons.com/publon/10.1002/cem.3409. Data Availability Statement: The data that support the findings of this study are openly available at https://zenodo.org/record/6345367, doi:10.5281/zenodo.6345367.

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Supplemental Material - cem3409-sup-0001-supportinginformationrevision_draft1_notrackchanges.docx

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Additional details

Created:
August 22, 2023
Modified:
October 23, 2023