Coloring Molecules with Explainable Artificial Intelligence for Preclinical Relevance Assessment

José Jiménez-Luna(ETH Zurich), Miha Škalič(Boehringer Ingelheim (Germany)), Nils Weskamp(Boehringer Ingelheim (Germany)), Gisbert Schneider(ETH Zurich)
Journal of Chemical Information and Modeling
February 25, 2021
Cited by 91Open Access
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Abstract

molecule generation. However, these models are considered "black-box" and "hard-to-debug". This study aimed to improve modeling transparency for rational molecular design by applying the integrated gradients explainable artificial intelligence (XAI) approach for graph neural network models. Models were trained for predicting plasma protein binding, hERG channel inhibition, passive permeability, and cytochrome P450 inhibition. The proposed methodology highlighted molecular features and structural elements that are in agreement with known pharmacophore motifs, correctly identified property cliffs, and provided insights into unspecific ligand-target interactions. The developed XAI approach is fully open-sourced and can be used by practitioners to train new models on other clinically relevant endpoints.


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