Concomitant prediction of environmental fate and toxicity of chemical compounds

Author:

Garcia-Martin Juan Antonio1,Chavarría Max23,de Lorenzo Victor4,Pazos Florencio4ORCID

Affiliation:

1. Bioinformatics for Genomics and Proteomics, National Centre for Biotechnology (CNB-CSIC), 28049 Madrid, Spain

2. Escuela de Química/CIPRONA Universidad de Costa Rica, 11501-2060 San José, Costa Rica

3. Centro Nacional de Innovaciones Biotecnológicas (CENIBiot), CeNAT-CONARE, 1174-1200 San José, Costa Rica

4. Department of Systems Biology, National Centre for Biotechnology (CNB-CSIC), 28049 Madrid, Spain

Abstract

Abstract The environmental fate of many functional molecules that are produced on a large scale as precursors or as additives to specialty goods (plastics, fibers, construction materials, etc.), let alone those synthesized by the pharmaceutical industry, is generally unknown. Assessing their environmental fate is crucial when taking decisions on the manufacturing, handling, usage, and release of these substances, as is the evaluation of their toxicity in humans and other higher organisms. While this data are often hard to come by, the experimental data already available on the biodegradability and toxicity of many unusual compounds (including genuinely xenobiotic molecules) make it possible to develop machine learning systems to predict these features. As such, we have created a predictor of the “risk” associated with the use and release of any chemical. This new system merges computational methods to predict biodegradability with others that assess biological toxicity. The combined platform, named BiodegPred (https://sysbiol.cnb.csic.es/BiodegPred/), provides an informed prognosis of the chance a given molecule can eventually be catabolized in the biosphere, as well as of its eventual toxicity, all available through a simple web interface. While the platform described does not give much information about specific degradation kinetics or particular biodegradation pathways, BiodegPred has been instrumental in anticipating the probable behavior of a large number of new molecules (e.g. antiviral compounds) for which no biodegradation data previously existed.

Funder

the Spanish Ministry of Economy and Competitiveness with European Regional Development Fund

the SETH

SyCoLiM

Projects of the Spanish Ministry of Science and Innovation, the MADONNA

BioRoboost

SynBio4Flav

MIX-UP

Contracts of the European Union, as well as the InGEMICS-CM

Publisher

Oxford University Press (OUP)

Subject

General Agricultural and Biological Sciences,General Biochemistry, Genetics and Molecular Biology

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