I’m professor of Statistical methods in Bioinformatics at the Section of Biostatistics, Department of Public Health, University of Copenhagen.
My main research focuses on
Generally, I explore the possibilities of synergistic collaborative research between various fields in order to provide inspiration and creativity for statistical developments as well as novel analyses in applied fields.

Inferring the underlying causal
structure from observational data with temporal or external information,
and measure the impact of misrepresenting DAGs.
Bayesian trend analysis based on
Gaussian processes to infer the probability that a change in trend has
occurred.
Communicating statistics and interpreting
results from statistical results in research papers.
Using machine learning for latent class
trajectory analysis in epidemiology for unsupervised hierarchical
subclassification of eating disorders.
Analysis of data related to sports
performance, such as team stats and game outcomes. Techniques involve
the study of trends and patterns in the data to make predictions about
future performance, player injuries or coaching decisions.
Artificial intelligence in veterinary
diagnostic imaging to classify fragments in joints. Measuring the added
benefit of augmented decision-making and quality control.
Developing new statistical tools for
integrative data analysis to simultaneously analyze multi-platform
biological data.