Advancing Predictive Risk Assessment of Chemicals via Integrating Machine Learning, Computational Modeling, and Chemical/Nano‐Quantitative Structure‐Activity Relationship Approaches

Author:

Singh Ajay Vikram1ORCID,Varma Mansi2,Rai Mansi3,Pratap Singh Shubham4,Bansod Girija5,Laux Peter1,Luch Andreas1

Affiliation:

1. Department of Chemical and Product Safety German Federal Institute for Risk Assessment (BfR) 10589 Berlin Germany

2. Department of Regulatory Toxicology National Institute of Pharmaceutical Education and Research (NIPER‐Raebareli) Raebareli 229001 India

3. Department of Microbiology Central University of Rajasthan NH‐8 Bandar Sindri, Dist‐Ajmer Rajasthan 305817 India

4. Faculty of Informatics Otto von Guericke University 39106 Magdeburg Germany

5. Rajiv Gandhi Institute of IT and Biotechnology Bharati Vidyapeeth (deemed to be) University Pune 411045 India

Abstract

The escalating use of novel chemicals and nanomaterials (NMs) across diverse sectors underscores the need for advanced risk assessment methods to safeguard human health and the environment. Traditional labor‐intensive approaches have given way to computational methods. This review integrates recent developments in chemical and nano‐quantitative structure‐activity relationship (QSAR) with machine learning and computational modeling, offering a comprehensive predictive assessment of NMs and chemicals. It explores nanodescriptors, their role in predicting toxicity, and the amalgamation of machine learning algorithms with chemical and nano‐QSAR for improved risk assessment accuracy. The article also investigates computational modeling techniques like molecular dynamics simulations, molecular docking, and molecular mechanics/quantum mechanics for predicting physical and chemical properties. By consolidating these approaches, the review advocates for a more accurate and efficient means of assessing risks associated with NMs/chemicals, promoting their safe utilization and minimizing adverse effects on human health and the environment. A valuable resource for researchers and practitioners, informed decision‐making, advancing our understanding of potential risks, is facilitated. Beyond studying systems at various scales, computational modeling integrates data from diverse sources, enhancing risk assessment accuracy and fostering the safe use of NMs/chemicals while minimizing their impact on human health and the environment.

Funder

Bundesinstitut für Risikobewertung

Publisher

Wiley

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