Prediction of bioconcentration factors in fish and invertebrates using machine learning

Thomas H. Miller, Matteo D. Gallidabino, James I. Macrae, Stewart F. Owen, Nicolas R. Bury, Leon P. Barron

Research output: Contribution to journalArticlepeer-review

21 Citations (Scopus)
8 Downloads (Pure)

Abstract

The application of machine learning has recently gained interest from ecotoxicological fields for its ability to model and predict chemical and/or biological processes, such as the prediction of bioconcentration. However, comparison of different models and the prediction of bioconcentration in invertebrates has not been previously evaluated. A comparison of 24 linear and machine learning models is presented herein for the prediction of bioconcentration in fish and important factors that influenced accumulation identified. R2 and rootmean square error (RMSE) for the test data (n=110 cases) ranged from 0.23–0.73 and 0.34–1.20, respectively. Model performance was critically assessed with neural networks and tree-based learners showing the best performance. An optimised 4-layer multi-layer perceptron (14 descriptors) was selected for further testing. The model was applied for cross-species prediction of bioconcentration in a freshwater invertebrate, Gammarus pulex. The model for G. pulex showed good performance with R2 of 0.99 and 0.93 for the verification and test data, respectively. Important molecular descriptors determined to influence bioconcentration were molecular mass (MW), octanol-water distribution coefficient (logD), topological polar surface area (TPSA) and number of nitrogen atoms (nN) among others. Modelling of hazard criteria such as PBT, showed potential to replace the need for animal testing. However, the use of machine learning models in the regulatory context has been minimal to date and is critically discussed herein. The movement away from experimental estimations of accumulation to in silico modelling would enable rapid prioritisation of contaminants that may pose a risk to environmental health and the food chain.
Original languageEnglish
Pages (from-to)80-89
Number of pages10
JournalScience of the Total Environment
Volume648
Early online date10 Aug 2018
DOIs
Publication statusPublished - 15 Jan 2019

Fingerprint

Dive into the research topics of 'Prediction of bioconcentration factors in fish and invertebrates using machine learning'. Together they form a unique fingerprint.

Cite this