Kinetic solubility: Experimental and machine‐learning modeling perspectives

Author:

Baybekov Shamkhal1ORCID,Llompart Pierre12,Marcou Gilles1ORCID,Gizzi Patrick3,Galzi Jean‐Luc45,Ramos Pascal6,Saurel Olivier6,Bourban Claire3,Minoletti Claire2,Varnek Alexandre1ORCID

Affiliation:

1. Laboratoire de Chémoinformatique UMR 7140 CNRS Institut Le Bel University of Strasbourg 4 Rue Blaise Pascal 67081 Strasbourg France

2. IDD/CADD Sanofi, Vitry-Sur-Seine France

3. Plateforme de Chimie Biologique Intégrative de Strasbourg UAR 3286 CNRS University of Strasbourg 300 Boulevard Sébastien Brant 67412 Illkirch France

4. Biotechnologie et signalisation cellulaire UMR 7242 CNRS École supérieure de biotechnologie de Strasbourg University of Strasbourg 300 Boulevard Sébastien Brant 67412 Illkirch France

5. ChemBioFrance – Chimiothèque Nationale UAR 3035 ENSCM – 240 Avenue du Prof. E. Jeanbrau CS 60297-34296 Montpellier Cedex 5 France

6. Institut de Pharmacologie et de Biologie Structurale (IPBS) Université de Toulouse, CNRS Université Toulouse III – Paul Sabatier (UT3) Toulouse France

Abstract

AbstractKinetic aqueous or buffer solubility is important parameter measuring suitability of compounds for high throughput assays in early drug discovery while thermodynamic solubility is reserved for later stages of drug discovery and development. Kinetic solubility is also considered to have low inter‐laboratory reproducibility because of its sensitivity to protocol parameters [1]. Presumably, this is why little efforts have been put to build QSPR models for kinetic in comparison to thermodynamic aqueous solubility. Here, we investigate the reproducibility and modelability of kinetic solubility assays. We first analyzed the relationship between kinetic and thermodynamic solubility data, and then examined the consistency of data from different kinetic assays. In this contribution, we report differences between kinetic and thermodynamic solubility data that are consistent with those reported by others [1, 2] and good agreement between data from different kinetic solubility campaigns in contrast to general expectations. The latter is confirmed by achieving high performing QSPR models trained on merged kinetic solubility datasets. The poor performance of QSPR model trained on thermodynamic solubility when applied to kinetic solubility dataset reinforces the conclusion that kinetic and thermodynamic solubilities do not correlate: one cannot be used as an ersatz for the other. This encourages for building predictive models for kinetic solubility. The kinetic solubility QSPR model developed in this study is freely accessible through the Predictor web service of the Laboratory of Chemoinformatics (https://chematlas.chimie.unistra.fr/cgi‐bin/predictor2.cgi).

Funder

Agence Nationale de la Recherche

Publisher

Wiley

Subject

Organic Chemistry,Computer Science Applications,Drug Discovery,Molecular Medicine,Structural Biology

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