PhD Studentship: Machine Learning Models for Zoonotic Disease Surveillance

Updated: 4 months ago
Location: Guildford, ENGLAND
Job Type: FullTime
Deadline: 24 Jan 2024

In this PhD project you will join a team of scientists from the University of Surrey and the UK Animal and Plant Health Agency (APHA) to develop novel bioinformatic approaches to detect and predict a type of infectious diseases termed zoonotic disease that can be transmitted between species, from animals to humans (and vice-versa).

The aim of the project is to integrate DNA sequence from samples routinely collected by the APHA with laboratory experimental data to detect with high accuracy the pathogen strain and predict their preferred animal host(s), and as such help the government to delineate strategies to prevent and control infectious disease outbreaks.

Together with our team of collaborators, you will develop novel computational methods to identify genetic signatures that predict phenotypic characteristics of pathogens such as strain, host reservoir, and host preferences. You will harness the power of the large APHA data bank of DNA sequences matched to pathogen phenotypes and outbreak characteristics to map at single nucleotide resolution the genetic makeup of pathogen outbreaks.

Our challenge is to develop novel predictive genetic models of infectious disease outbreak from whole genome sequencing and spatially resolved outbreak data. You will explore high dimensional machine learning methods for prediction, as well as Bayesian statistical approaches for variable selection, phylogenetic clustering and spatially resolved models.

New technologies for whole genome sequencing are being actively developed, and the volume of sequencing data available is increasing exponentially. One of the challenges in this area is how to harness the high-dimensionality and sequential nature of DNA to build models that consider gene-by-gene interactions and other genetic phenomena to predict pathogen behaviour. Our project aims at addressing these challenges by developing methods that model complex nonlinear interactions between genes to accelerate the process of extracting key genetic features to identify pathogens and characterise outbreaks, and with these outcomes, help APHA inform UK government.

INTERVIEW DATE: 30 January 2024, 9am-12noon

Supervisors: Dr Alexessander Couto Alves,  Dr Jennifer Ritchie , Dr Mark Arnold and Dr Liljana Petrovska

Entry requirements

Open to candidates who pay UK/home rate fees. See UKCISA for further information . Starting in April 2024.

You will need to meet the minimum entry requirements for our PhD programme .

Applicants should hold or expect to gain a minimum of a 2:1 Bachelor Degree, Masters Degree with Merit, or equivalent, in bioinformatics, data science, statistics, machine learning, artificial intelligence, computer science, mathematics, physics, biology, or a closely related life, environmental or physical science. The project will involve analysis of large data sets and some familiarity with programming, especially R or Python would be required. We will also consider candidates with different academic paths but with experience acquired from a research position, or equivalent, that is relevant to the topic of the PhD project. 

How to apply

Applications should be submitted via the Biosciences and Medicine PhD programme page.

In place of a research proposal, you should upload a document stating the title of the project that you wish to apply for and the name of the relevant supervisor.

Funding

Fully and directly funded for this project only. The studentship covers tuition fees, and a generous UKRI-level stipend for 3.5 years and conference/training expenses.

Enquiries: Contact Dr Alexessander Couto Alves