-
)) models are used at all stages of pre-clinical and clinical development, but they are based on mathematical and statistical principles dating from the 1970s. Developing these pharmacometric models remains a
-
analysis in biomedical data, in affiliation to the Artificial Intelligence Research Centre . The successful candidate will develop statistical and machine learning techniques to analyse biomedical data. High
-
they are based on mathematical and statistical principles dating from the 1970s. Developing these pharmacometric models remains a laborious task where highly qualified staff spend large amounts of time. Aims
-
will be to: Research statistical methods and industrial production theory to develop a generic approach to the problem. Compile a comprehensive list of manufacturing parameters, material properties and
-
Attend UCL courses and training (e.g. in research study design, good clinical practice, medical statistics, time management, paper writing). Literature research Manuscript writing for submission to peer
-
costs of their project. We will support two students, one in the area of health data science/epidemiology/statistics and the other specialising in applied machine learning and informatics. The closing
-
health (3) Support and training The doctoral student will be supported by a team with expertise in plant biology, soil health, next generation sequencing and statistics and they will work within an active
-
distinction is desirable, but not essential. Strong statistical skills, and experience with designing and implementing experiments with human participants, are useful. Applicants will need to submit a CV, a
-
, good clinical practice, medical statistics, time management, paper writing). Literature research Manuscript writing for submission to peer-reviewed journals) Attend weekly research meetings Other
-
, brain imaging techniques, and advanced statistical analyses. The selected candidate will receive comprehensive supervision from a team of expert researchers and clinicians with diverse backgrounds