Classification of substances by health hazard using deep neural networks and molecular electron densities

Author:

Singh Satnam1,Zeh Gina1,Freiherr Jessica1,Bauer Thilo2,Türkmen Işik1,Grasskamp Andreas1

Affiliation:

1. Fraunhofer Institute for Process Engineering and Packaging

2. Computer Chemistry Center, Friedrich-Alexander-Universität Erlangen-Nürnberg

Abstract

Abstract In this paper we present a method that allows leveraging 3D electron density information to train a deep neural network pipeline to segment regions of high, medium and low electronegativity and classify substances as health hazardous or non-hazardous. We show that this can be used for use-cases such as cosmetics and food products. For this purpose, we first generate 3D electron density cubes using semiempirical molecular calculations for a custom European Chemical Agency (ECHA) subset consisting of substances labelled as hazardous and non-hazardous for cosmetic usage. Together with their 3-class electronegativity maps we train a modified 3D-UNet with electron density cubes to segment reactive sites in molecules and classify substances with an accuracy of 78.1%. We perform the same process on a custom food dataset (CompFood) consisting of hazardous and non-hazardous substances compiled from European Food Safety Authority (EFSA) OpenFoodTox, Food and Drug Administration (FDA) Generally Recognized as Safe (GRAS) and FooDB datasets to achieve a classification accuracy of 64.1%. Our results show that 3D electron densities and particularly masked electron densities denoting regions of high and low reactivity can be used to classify molecules for different use-cases and thus serve not only to guide safe-by-design product development but also aid in regulatory decisions.

Publisher

Research Square Platform LLC

Reference61 articles.

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