In precision medicine, predicting the risk of an event during a specific period may help, for example, to identify patients that need early preventive treatment. Modern machine learning (ML) techniques are therefore ideal for building these predictions. However, medical datasets often suffer from right-censoring of the outcome of interest posing an obstacle to the direct applicability of ML algorithms. The aim of this thesis work is to develop and advance methods for prediction in settings of right-censoring, and in some settings also including competing risks. Specifically, in Project I, we developed an approach that combines inverse probability of censoring weighting (IPCW) with bagging as a pre-processing step to enable the applic...
Disease prognosis holds immense significance in healthcare due to its potential to greatly improve p...
Over recent years, multiple disease risk prediction models have been developed. These models use var...
International audienceTraditional statistical models allow population based inferences and compariso...
Prediction of occurrence of an event in a patients’ lifecourse is gradually becoming very important ...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
The existence of widespread COVID-19 infections has prompted worldwide efforts to control and manage...
Over the past decades, analytics have provided the promise of revolutionizing healthcare, providing ...
The Cox proportional hazard model may predict whether an individual belonging to a given group would...
Predicting an individual’s risk of experiencing a future clinical outcome is a statistical task with...
Machine learning techniques have recently received considerable attention, especially when used for ...
The role of Machine Learning (ML) in healthcare is based on the ability of a machine to analyse the ...
Machine learning (ML) is an artificial intelligence (AI) technique that facilitates the improvement ...
The field of customized and preventative medication is quickly utilizing profound learning and machi...
Abstract: Traditional healthcare systems have long struggled to meet the diverse needs of millions o...
Abstract Patients with severe COVID-19 have overwhelmed healthcare systems worldwide. We hypothesize...
Disease prognosis holds immense significance in healthcare due to its potential to greatly improve p...
Over recent years, multiple disease risk prediction models have been developed. These models use var...
International audienceTraditional statistical models allow population based inferences and compariso...
Prediction of occurrence of an event in a patients’ lifecourse is gradually becoming very important ...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
The existence of widespread COVID-19 infections has prompted worldwide efforts to control and manage...
Over the past decades, analytics have provided the promise of revolutionizing healthcare, providing ...
The Cox proportional hazard model may predict whether an individual belonging to a given group would...
Predicting an individual’s risk of experiencing a future clinical outcome is a statistical task with...
Machine learning techniques have recently received considerable attention, especially when used for ...
The role of Machine Learning (ML) in healthcare is based on the ability of a machine to analyse the ...
Machine learning (ML) is an artificial intelligence (AI) technique that facilitates the improvement ...
The field of customized and preventative medication is quickly utilizing profound learning and machi...
Abstract: Traditional healthcare systems have long struggled to meet the diverse needs of millions o...
Abstract Patients with severe COVID-19 have overwhelmed healthcare systems worldwide. We hypothesize...
Disease prognosis holds immense significance in healthcare due to its potential to greatly improve p...
Over recent years, multiple disease risk prediction models have been developed. These models use var...
International audienceTraditional statistical models allow population based inferences and compariso...