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Luisa Cutillo

Lecturer

University of Leeds

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United Kingdom

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Research Interests

Genetics

10%

Statistics

10%

Network Analysis

40%

Graphical Models

20%

Bioinformatic

20%

Validation Study

20%

Community Building

20%

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Recent Grants

Grant: Close

CONTESSA

Open Date: 2015-08-01

Close Date:

Grant: Close

Developing MCMC and variational Bayesian methods for multiple experiments identinfication of regulatory motifs

Open Date: 2006-06-01

Close Date: 2006-09-01

Positions1

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Luisa Cutillo

University Name
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University of Leeds

Machine Learning, Climate Impact Assessment, Biological Systems

This fully funded PhD opportunity at the University of Leeds (School of Mathematics) focuses on developing advanced machine learning and statistical techniques to quantify uncertainty in climate impact assessments on biological systems. Supervised by Associate Professor Luisa Cutillo and Professor David Westhead, the project leverages gene expression data from diverse organisms to model biological responses to climate stressors such as heatwaves and changing precipitation. Students will work with high-throughput datasets (e.g., RNA-seq) and apply probabilistic models, including Gaussian graphical models and Bayesian frameworks, to map gene and protein network changes under climate stress. The research aims to identify pathways of resilience or vulnerability in plants, animals, and marine life, supporting risk assessment and adaptive strategies for climate change. The project is ideal for candidates with strong backgrounds in mathematics, statistics, or computer science, and an interest in environmental or biological applications. Experience in statistical modeling, machine learning, or data science is preferred, and familiarity with probabilistic methods or network analysis is advantageous but not required. The UNRISK Centre for Doctoral Training provides full funding, including stipend and tuition, and offers collaborative opportunities within its interdisciplinary network. Applications open on 1st October 2025 for a 2026 start. For more information and to apply, visit the project link and the UNRISK CDT website.

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Collaborators4

Cleide Souza

University of Sheffield

UNITED KINGDOM

Nancy Papalopulu

Professor of Developmental Neuroscience

The University of Manchester

UNITED KINGDOM

Mirko Signorelli

Assistant professor

Leiden University

NETHERLANDS

Elli Marinopoulou

The University of Manchester

UNITED KINGDOM