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Toward a Computational Ecotoxicity Assay.
J Chem Inf Model. 2020 Aug 24; 60(8):3792-3803.JC

Abstract

Thousands of anthropogenic chemicals are released into the environment each year, posing potential hazards to human and environmental health. Toxic chemicals may cause a variety of adverse health effects, triggering immediate symptoms or delayed effects over longer periods of time. It is thus crucial to develop methods that can rapidly screen and predict the toxicity of chemicals to limit the potential harmful impacts of chemical pollutants. Computational methods are being increasingly used in toxicity predictions. Here, the method of molecular docking is assessed for screening potential toxicity of a variety of xenobiotic compounds, including pesticides, pharmaceuticals, pollutants, and toxins derived from the chemical industry. The method predicts the binding energy of pollutants to a set of carefully selected receptors under the assumption that toxicity in many cases is related to interference with biochemical pathways. The strength of the applied method lies in its rapid generation of interaction maps between potential toxins and the targeted enzymes, which could quickly yield molecular-level information and insight into potential perturbation pathways, aiding in the prioritization of chemicals for further tests. Two scoring functions are compared: Autodock Vina and the machine-learning scoring function RF-Score-VS. The results are promising, although hampered by the accuracy of the scoring functions. The strengths and weaknesses of the docking protocol are discussed, as well as future directions for improving the accuracy for the purpose of toxicity predictions.

Authors+Show Affiliations

Science for Life Laboratory, Department of Cell and Molecular Biology, Uppsala University, Box 596, SE-751 24 Uppsala, Sweden.Department of Chemistry-Ångström Laboratory, Uppsala University, SE-75120 Uppsala, Sweden.Institute for Science and Technology, Fjordforsk A.S., Midtun, 6894 Vangsnes, Norway.Science for Life Laboratory, Department of Cell and Molecular Biology, Uppsala University, Box 596, SE-751 24 Uppsala, Sweden.

Pub Type(s)

Journal Article
Research Support, Non-U.S. Gov't

Language

eng

PubMed ID

32648756

Citation

Kamerlin, Natasha, et al. "Toward a Computational Ecotoxicity Assay." Journal of Chemical Information and Modeling, vol. 60, no. 8, 2020, pp. 3792-3803.
Kamerlin N, Delcey MG, Manzetti S, et al. Toward a Computational Ecotoxicity Assay. J Chem Inf Model. 2020;60(8):3792-3803.
Kamerlin, N., Delcey, M. G., Manzetti, S., & van der Spoel, D. (2020). Toward a Computational Ecotoxicity Assay. Journal of Chemical Information and Modeling, 60(8), 3792-3803. https://doi.org/10.1021/acs.jcim.0c00574
Kamerlin N, et al. Toward a Computational Ecotoxicity Assay. J Chem Inf Model. 2020 08 24;60(8):3792-3803. PubMed PMID: 32648756.
* Article titles in AMA citation format should be in sentence-case
TY - JOUR T1 - Toward a Computational Ecotoxicity Assay. AU - Kamerlin,Natasha, AU - Delcey,Mickaël G, AU - Manzetti,Sergio, AU - van der Spoel,David, Y1 - 2020/07/21/ PY - 2020/7/11/pubmed PY - 2021/6/22/medline PY - 2020/7/11/entrez SP - 3792 EP - 3803 JF - Journal of chemical information and modeling JO - J Chem Inf Model VL - 60 IS - 8 N2 - Thousands of anthropogenic chemicals are released into the environment each year, posing potential hazards to human and environmental health. Toxic chemicals may cause a variety of adverse health effects, triggering immediate symptoms or delayed effects over longer periods of time. It is thus crucial to develop methods that can rapidly screen and predict the toxicity of chemicals to limit the potential harmful impacts of chemical pollutants. Computational methods are being increasingly used in toxicity predictions. Here, the method of molecular docking is assessed for screening potential toxicity of a variety of xenobiotic compounds, including pesticides, pharmaceuticals, pollutants, and toxins derived from the chemical industry. The method predicts the binding energy of pollutants to a set of carefully selected receptors under the assumption that toxicity in many cases is related to interference with biochemical pathways. The strength of the applied method lies in its rapid generation of interaction maps between potential toxins and the targeted enzymes, which could quickly yield molecular-level information and insight into potential perturbation pathways, aiding in the prioritization of chemicals for further tests. Two scoring functions are compared: Autodock Vina and the machine-learning scoring function RF-Score-VS. The results are promising, although hampered by the accuracy of the scoring functions. The strengths and weaknesses of the docking protocol are discussed, as well as future directions for improving the accuracy for the purpose of toxicity predictions. SN - 1549-960X UR - https://www.unboundmedicine.com/medline/citation/32648756/Toward_a_Computational_Ecotoxicity_Assay. DB - PRIME DP - Unbound Medicine ER -