Fast and Accurate Prediction of Refractive Index of Organic Liquids with Graph Machines

Author:

Duprat François1,Ploix Jean-Luc1,Aubry Jean-Marie2,Gaudin Théophile3

Affiliation:

1. Molecular, Macromolecular Chemistry and Materials, ESPCI Paris, PSL Research University, 75005 Paris, France

2. Unité de Catalyse et Chimie du Solide, Centrale Lille, University Lille, UMR CNRS 8181, 59000 Lille, France

3. Dassault Systemes BIOVIA, Cambridge CB4 0FJ, UK

Abstract

The refractive index (RI) of liquids is a key physical property of molecular compounds and materials. In addition to its ubiquitous role in physics, it is also exploited to impart specific optical properties (transparency, opacity, and gloss) to materials and various end-use products. Since few methods exist to accurately estimate this property, we have designed a graph machine model (GMM) capable of predicting the RI of liquid organic compounds containing up to 16 different types of atoms and effective in discriminating between stereoisomers. Using 8267 carefully checked RI values from the literature and the corresponding 2D organic structures, the GMM provides a training root mean square relative error of less than 0.5%, i.e., an RMSE of 0.004 for the estimation of the refractive index of the 8267 compounds. The GMM predictive ability is also compared to that obtained by several fragment-based approaches. Finally, a Docker-based tool is proposed to predict the RI of organic compounds solely from their SMILES code. The GMM developed is easy to apply, as shown by the video tutorials provided on YouTube.

Publisher

MDPI AG

Subject

Chemistry (miscellaneous),Analytical Chemistry,Organic Chemistry,Physical and Theoretical Chemistry,Molecular Medicine,Drug Discovery,Pharmaceutical Science

Reference48 articles.

1. Optimization of optical transparency of personal care products using the refractive index matching method;Teoman;Colloids Surf. A Physicochem. Eng. Asp.,2021

2. Patton, T.C. (1979). Paint Flow and Pigment Dispersion: A Rheological Approach to Coating and Ink Technology, Wiley. [2nd ed.].

3. Israelachvili, J.N. (2011). Intermolecular and Surface Forces, Academic Press. [3rd ed.].

4. Hansen, C.M. (2007). Hansen Solubility Parameters: A User’s Handbook, Taylor & Francis. [2nd ed.].

5. Robust definition and prediction of dispersive Hansen solubility parameter δD with COSMO-RS;Gaudin;Comput. Theor. Chem.,2023

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