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Jessica Enright

Researcher at University of Glasgow

Publications -  62
Citations -  460

Jessica Enright is an academic researcher from University of Glasgow. The author has contributed to research in topics: Computer science & Medicine. The author has an hindex of 9, co-authored 46 publications receiving 256 citations. Previous affiliations of Jessica Enright include University of Alberta & University of Edinburgh.

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Epidemics on dynamic networks

TL;DR: Some essential nomenclature for infection processes is proposed, considering all of the methods used to record, measure and analyse them, and their implications for disease transmission.
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How might technology rise to the challenge of data sharing in agri-food?

TL;DR: The importance of utilising semantic web technologies, distributed ledger technologies, machine learning, and privacy preserving technologies to enable future transformative data sharing infrastructures in the agri-food sector is argued.
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Assigning times to minimise reachability in temporal graphs

TL;DR: In this article, the problem of determining an ordering of edges that minimises the maximum number of vertices reachable from any single starting vertex is investigated. But the problem is NP-hard.
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Genomic epidemiology of SARS-CoV-2 in a UK university identifies dynamics of transmission

Dinesh Aggarwal, +712 more
TL;DR: In this paper , the authors sequenced 482 SARS-CoV-2 isolates from the University of Cambridge from 5 October to 6 December 2020 and performed a detailed phylogenetic comparison with 972 isolate from the surrounding community, complemented with epidemiological and contact tracing data to determine transmission dynamics.
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Deleting Edges to Restrict the Size of an Epidemic: A New Application for Treewidth

TL;DR: An algorithm is described which solves the general problem of determining whether it is possible to delete at most k edges from a given input graph so that the resulting graph avoids a set of forbidden subgraphs, and which is implemented and tested on real datasets based on cattle movements.