Prognostic modelling is important in clinical practice and epidemiology for patient management and research. Electronic health records (EHR) provide large quantities of data for such models, but conventional epidemiological approaches require significant researcher time to implement. Expert selection of variables, fine-tuning of variable transformations and interactions, and imputing missing values are time-consuming and could bias subsequent analysis, particularly given that missingness in EHR is both high, and may carry meaning. Using a cohort of 80,000 patients from the CALIBER programme, we compared traditional modelling and machine-learning approaches in EHR. First, we used Cox models and random survival forests with and without imputa...
Background: Machine learning algorithms hold potential for improved prediction of all-cause mortalit...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisors: Chad Myer...
Atherosclerotic cardiovascular disease (ASCVD) and subsequent adverse cardiovascular events remain h...
Prognostic modelling is important in clinical practice and epidemiology for patient management and r...
OBJECTIVE: The objective of the study was to compare the performance of logistic regression and boos...
The rising complexity in healthcare, exacerbated by an ageing population, results in ineffective dec...
Electronic Health Record (EHR) data can be a key resource for decision-making support in clinical pr...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Abstract Machine learning (ML) has been suggested to improve the performance of prediction models. N...
Predicting health outcomes such as a disease onset, recovery or mortality is an important part of me...
Clinical decision-making in healthcare is already being influenced by predictions or recommendations...
In the field of healthcare, individual survival prediction is important for personalized treatment p...
As global demographics change, ageing is a global phenomenon which is increasingly of interest in ou...
Cardiovascular Disease (CVD) is a leading cause of death worldwide, with the potential to cause seri...
Information in Electronic Medical Records (EMRs) can be used to generate accurate predictions for th...
Background: Machine learning algorithms hold potential for improved prediction of all-cause mortalit...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisors: Chad Myer...
Atherosclerotic cardiovascular disease (ASCVD) and subsequent adverse cardiovascular events remain h...
Prognostic modelling is important in clinical practice and epidemiology for patient management and r...
OBJECTIVE: The objective of the study was to compare the performance of logistic regression and boos...
The rising complexity in healthcare, exacerbated by an ageing population, results in ineffective dec...
Electronic Health Record (EHR) data can be a key resource for decision-making support in clinical pr...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Abstract Machine learning (ML) has been suggested to improve the performance of prediction models. N...
Predicting health outcomes such as a disease onset, recovery or mortality is an important part of me...
Clinical decision-making in healthcare is already being influenced by predictions or recommendations...
In the field of healthcare, individual survival prediction is important for personalized treatment p...
As global demographics change, ageing is a global phenomenon which is increasingly of interest in ou...
Cardiovascular Disease (CVD) is a leading cause of death worldwide, with the potential to cause seri...
Information in Electronic Medical Records (EMRs) can be used to generate accurate predictions for th...
Background: Machine learning algorithms hold potential for improved prediction of all-cause mortalit...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisors: Chad Myer...
Atherosclerotic cardiovascular disease (ASCVD) and subsequent adverse cardiovascular events remain h...