Using comparative genomics to develop 'digital twins' to support SMART ecotoxicological predictions

Lead Research Organisation: CARDIFF UNIVERSITY
Department Name: School of Biosciences

Abstract

Our rapidly changing world is placing critical ecosystems under unprecedented
environmental pressures, pressure that includes exposure to a wide-range of chemical
toxicants. The overarching aim of this PhD is to harness genomic and other trait
resources to deliver mechanistically informed estimates of toxicant species sensitivity.
The efficient protection of ecosystems requires knowledge of chemical toxicity. However,
such information has to be obtained within the context of the 3Rs goal, i.e. the effort to
Reduce, Refine and Replace the use of animals. Accurate prediction of species sensitivity
to toxicants without chemical exposure experiments would represent a major step toward
fulfilling this ambition. However, realising this aim requires a deep mechanistic
understanding of relevant biological pathways, their conservation across species, and a
framework to facilitate easy comparison and assessment. Fortunately, such objectives
are now achievable, as rapidly increasing genomic resources contain a treasure trove of
comparative data on the molecular components governing pollutant sensitivity. This PhD
research will make an invaluable contribution to understanding chemical effects on
ecosystems without performing animal exposures.
The PhD student will obtain the skills and understanding necessary to generate in silico
representations of organisms (termed 'digital twins') that will inform comparative
ecotoxicological assessment. To generate such 'digital twins', the PhD student will
investigate and design a system to integrate molecular information, species trait data and
modelling tools within a modular framework. This will be done with the aim of producing
an automated data infrastructure containing varied data types (e.g. genomic data,
energetic and phenotypic traits), that can be used to rapidly retrieve cross-species
information relevant to toxicant sensitivity predictions. Once the infrastructure is
established, the PhDstudent will endeavor to develop approaches (e.g. using artificial
intelligence) to help better predict the complex and multi-variate contributions made by
various species characteristics to sensitivity. The output of such artificial intelligence
approaches will be combined with established ecotoxicological data to validate links
between species characteristics and observed sensitivity. Both the automated data
infrastructure and the mechanistic insight it produces will increase the capacity of
ecotoxicologists and environmental regulators to predict sensitivity in untested species

Publications

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Studentship Projects

Project Reference Relationship Related To Start End Student Name
BB/X511468/1 01/04/2023 31/03/2027
2874184 Studentship BB/X511468/1 01/04/2023 31/03/2027