Background: Machine learning models have been developed for numerous medical prognostic purposes. These models are commonly developed using data from single centers or regional registries. Including data from multiple centers improves robustness and accuracy of prognostic models. However, data sharing between multiple centers is complex, mainly because of regulations and patient privacy issues.Objective: We aim to overcome data sharing impediments by using distributed ML and local learning followed by model integration. We applied these techniques to develop 1-year TAVI mortality estimation models with data from two centers without sharing any data.Methods: A distributed ML technique and local learning followed by model integration was used...
Background: Prognostic models that are accurate could help aid medical decision making. Large observ...
With advances in digital health technologies and proliferation of big biomedical data in recent year...
Abstract: Traditional healthcare systems have long struggled to meet the diverse needs of millions o...
Current prognostic risk scores for transcatheter aortic valve implantation (TAVI) do not benefit yet...
Current prognostic risk scores for transcatheter aortic valve implantation (TAVI) do not benefit yet...
PURPOSE\nOne of the major hurdles in enabling personalized medicine is obtaining sufficient patient ...
Current prognostic risk scores for transcatheter aortic valve implantation (TAVI) do not benefit yet...
AbstractPurposeOne of the major hurdles in enabling personalized medicine is obtaining sufficient pa...
Purpose: Tools for survival prediction for non-small cell lung cancer (NSCLC) patients treated with ...
OBJECTIVE: Applications of machine learning in healthcare are of high interest and have the potentia...
Background and objectives: We aim to verify the use of ML algorithms to predict patient outcome usin...
Background and purpose: Predicting outcomes is challenging in rare cancers. Single-institutional dat...
Disease progression manifests through a broad spectrum of statically and longitudinally linked clini...
Transcatheter aortic valve implantation (TAVI) is the routine treatment worldwide for aortic valve s...
The role of Machine Learning (ML) in healthcare is based on the ability of a machine to analyse the ...
Background: Prognostic models that are accurate could help aid medical decision making. Large observ...
With advances in digital health technologies and proliferation of big biomedical data in recent year...
Abstract: Traditional healthcare systems have long struggled to meet the diverse needs of millions o...
Current prognostic risk scores for transcatheter aortic valve implantation (TAVI) do not benefit yet...
Current prognostic risk scores for transcatheter aortic valve implantation (TAVI) do not benefit yet...
PURPOSE\nOne of the major hurdles in enabling personalized medicine is obtaining sufficient patient ...
Current prognostic risk scores for transcatheter aortic valve implantation (TAVI) do not benefit yet...
AbstractPurposeOne of the major hurdles in enabling personalized medicine is obtaining sufficient pa...
Purpose: Tools for survival prediction for non-small cell lung cancer (NSCLC) patients treated with ...
OBJECTIVE: Applications of machine learning in healthcare are of high interest and have the potentia...
Background and objectives: We aim to verify the use of ML algorithms to predict patient outcome usin...
Background and purpose: Predicting outcomes is challenging in rare cancers. Single-institutional dat...
Disease progression manifests through a broad spectrum of statically and longitudinally linked clini...
Transcatheter aortic valve implantation (TAVI) is the routine treatment worldwide for aortic valve s...
The role of Machine Learning (ML) in healthcare is based on the ability of a machine to analyse the ...
Background: Prognostic models that are accurate could help aid medical decision making. Large observ...
With advances in digital health technologies and proliferation of big biomedical data in recent year...
Abstract: Traditional healthcare systems have long struggled to meet the diverse needs of millions o...