Shavalieva, G., Papadokonstantakis, S., & Peters, G. (2022). Prior Knowledge for Predictive Modeling: The Case of Acute Aquatic Toxicity. Journal of Chemical Information and Modeling, 62(17), 4018–4031. https://doi.org/10.1021/acs.jcim.1c01079
E166 - Institut für Verfahrenstechnik, Umwelttechnik und technische Biowissenschaften E150 - Fakultät für Technische Chemie
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Journal:
Journal of Chemical Information and Modeling
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ISSN:
1549-9596
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Date (published):
12-Sep-2022
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Number of Pages:
14
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Publisher:
American Chemical Society (ACS)
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Peer reviewed:
Yes
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Keywords:
Machine learning; Data Mining; Hybrid Modelling; hazards
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Abstract:
Early assessment of the potential impact of chemicals on health and the environment requires toxicological properties of the molecules. Predictive modeling is often used to estimate the property values in silico from pre-existing experimental data, which is often scarce and uncertain. One of the ways to advance the predictive modeling procedure might be the use of knowledge existing in the field. Scientific publications contain a vast amount of knowledge. However, the amount of manual work required to process the enormous volumes of information gathered in scientific articles might hinder its utilization. This work explores the opportunity of semiautomated knowledge extraction from scientific papers and investigates a few potential ways of its use for predictive modeling. The knowledge extraction and predictive modeling are applied to the field of acute aquatic toxicity. Acute aquatic toxicity is an important parameter of the safety assessment of chemicals. The extensive amount of diverse information existing in the field makes acute aquatic toxicity an attractive area for investigation of knowledge use for predictive modeling. The work demonstrates that the knowledge collection and classification procedure could be useful in hybrid modeling studies concerning the model and predictor selection, addressing data gaps, and evaluation of models' performance.