Prediction of bioavailability and toxicity of complex chemical mixtures through machine learning models

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dc.contributor.author Cipullo, Sabrina
dc.contributor.author Snapir, Boris
dc.contributor.author Prpich, George
dc.contributor.author Campo Moreno, Pablo
dc.contributor.author Coulon, Frederic
dc.date.accessioned 2018-10-22T10:42:26Z
dc.date.available 2018-10-22T10:42:26Z
dc.date.issued 2018-09-11
dc.identifier.citation Cipullo S, Snapir B, Prpich G, et al., (2019) Prediction of bioavailability and toxicity of complex chemical mixtures through machine learning models. Chemosphere, Volume 215, January 2019, pp. 388-395 en_UK
dc.identifier.issn 0045-6535
dc.identifier.uri https://doi.org/10.1016/j.chemosphere.2018.10.056
dc.identifier.uri http://dspace.lib.cranfield.ac.uk/handle/1826/13556
dc.description.abstract Empirical data from a 6-month mesocosms experiment were used to assess the ability and performance of two machine learning (ML) models, including artificial neural network (NN) and random forest (RF), to predict temporal bioavailability changes of complex chemical mixtures in contaminated soils amended with compost or biochar. From the predicted bioavailability data, toxicity response for relevant ecological receptors was then forecasted to establish environmental risk implications and determine acceptable end-point remediation. The dataset corresponds to replicate samples collected over 180 days and analysed for total and bioavailable petroleum hydrocarbons and heavy metals/metalloids content. Further to this, a range of biological indicators including bacteria count, soil respiration, microbial community fingerprint, seeds germination, earthworm's lethality, and bioluminescent bacteria were evaluated to inform the environmental risk assessment. Parameters such as soil type, amendment (biochar and compost), initial concentration of individual compounds, and incubation time were used as inputs of the ML models. The relative importance of the input variables was also analysed to better understand the drivers of temporal changes in bioavailability and toxicity. It showed that toxicity changes can be driven by multiple factors (combined effects), which may not be accounted for in classical linear regression analysis (correlation). The use of ML models could improve our understanding of rate-limiting processes affecting the freely available fraction (bioavailable) of contaminants in soil, therefore contributing to mitigate potential risks and to inform appropriate response and recovery methods. en_UK
dc.language.iso en en_UK
dc.publisher Elsevier en_UK
dc.rights Attribution-NonCommercial-NoDerivatives 4.0 International *
dc.rights.uri http://creativecommons.org/licenses/by-nc-nd/4.0/ *
dc.subject Risk assessment en_UK
dc.subject Machine learning en_UK
dc.subject Bioavailability en_UK
dc.subject Complex chemical mixtures en_UK
dc.subject Compost en_UK
dc.subject Biochar en_UK
dc.title Prediction of bioavailability and toxicity of complex chemical mixtures through machine learning models en_UK
dc.type Article en_UK
dc.identifier.cris 21801894


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