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Frank Dondelinger supervises 4 postgraduate research students. If these students have produced research profiles, these are listed below:

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Dr Frank Dondelinger

Lecturer in Biostatistics

Lancaster University

Furness Building

LA1 4YG

Lancaster

Tel: +44 1524 594759

Research overview

I am a Lecturer in Biostatistics at Lancaster University in the CHICAS (Combining Health Information, Computation And Statistics) group of the Lancaster Medical School. My research interests include Bayesian models for drug and treatment response, information sharing, transfer learning and group mapping for transferring knowledge from in vitro to in vivo datasets, network reconstruction from time-series and interventional data, efficient inference in complex high-dimensional Bayesian models, and parameter inference in models of biological systems.

PhD supervision

Please contact me if you are interested in pursuing a PhD in machine learning or statistical modelling for molecular biomedicine. Potential PhD topics that I am currently offering are: 1) Multi-task regression for detecting global effects on the human microbiome. 2) Machine learning for drug selection in personalized cancer medicine. 3) Variational parameter inference in statistical models with intractable likelihoods.

Research Interests

My research focuses on applying machine learning techniques to practical problems in biological and biomedical research. I am particularly interested in problems involving molecular data, such as gene expression or genomic studies. While working at The Netherlands Cancer Research Institute, I learned about the biology of cancer and became interested in using hierarchical regression models for prediction on heterogeneous datasets, specifically in the context of drug response prediction.

Recently, I have been working on methods for dealing with high-dimensional outcomes in longitudinal datasets, with the goal of improving risk prediction and inference in these challenging models. I also work on multi-task regression methods for microbiome biology.

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