Treball de fi de grau en BiomèdicaTutors: Bart Bijnens, Sergio Sánchez-Martínez, Scott D. SolomonHeart Failure with preserved Ejection Fraction has proven to be a suitable syndrome to be studied with machine learning approaches, as its complexity is not fully captured in clinical guidelines. For this reason, in this work we present a pipeline to characterize patients from Heart Failure with Preserved Ejection Fraction cohorts. This comprises from the creation of the databases to the development of a computational platform in Python to process the images and extract the descriptors. Lastly, we implemented machine learning and dimensionality reduction techniques to explore the data and clustering and kernel regression to obtain physio...
Background: The authors used cluster analysis of data from cardiovascular domains associated with ex...
Aims: The lack of effective therapies for patients with heart failure with preserved ejection fracti...
Data de publicació electrònica: 6 de novembre de 2019Alternative stress echocardiography protocols s...
Treball fi de màster de: Master in Computational Biomedical EngineeringTutors: Bart Bijnens, Sergio ...
We propose an independent objective method to characterize different patterns of functional response...
We propose an independent objective method to characterize different patterns of functional response...
In pressInternational audiencePurpose: Current diagnosis of heart failure with preserved ejection fr...
International audienceThe present study aims at improving the characterization of myocardial velocit...
This thesis focuses on the development of machine learning tools to better characterize the cardiac ...
In this thesis, we attempt to investigate how well various clustering algorithms (hierarchical clust...
A model-based approach was developed to elucidate etiological differences between and within patient...
Heart failure (HF) is associated with poor patient outcomes and burdens healthcare systems and clini...
International audienceAims: We tested the hypothesis that a machine learning (ML) algorithm utilizin...
Current diagnosis of heart failure with preserved ejection fraction (HFpEF) is suboptimal. We tested...
Abstract Background Heart failure with preserved ejection fraction (HFpEF) is thought to be highly p...
Background: The authors used cluster analysis of data from cardiovascular domains associated with ex...
Aims: The lack of effective therapies for patients with heart failure with preserved ejection fracti...
Data de publicació electrònica: 6 de novembre de 2019Alternative stress echocardiography protocols s...
Treball fi de màster de: Master in Computational Biomedical EngineeringTutors: Bart Bijnens, Sergio ...
We propose an independent objective method to characterize different patterns of functional response...
We propose an independent objective method to characterize different patterns of functional response...
In pressInternational audiencePurpose: Current diagnosis of heart failure with preserved ejection fr...
International audienceThe present study aims at improving the characterization of myocardial velocit...
This thesis focuses on the development of machine learning tools to better characterize the cardiac ...
In this thesis, we attempt to investigate how well various clustering algorithms (hierarchical clust...
A model-based approach was developed to elucidate etiological differences between and within patient...
Heart failure (HF) is associated with poor patient outcomes and burdens healthcare systems and clini...
International audienceAims: We tested the hypothesis that a machine learning (ML) algorithm utilizin...
Current diagnosis of heart failure with preserved ejection fraction (HFpEF) is suboptimal. We tested...
Abstract Background Heart failure with preserved ejection fraction (HFpEF) is thought to be highly p...
Background: The authors used cluster analysis of data from cardiovascular domains associated with ex...
Aims: The lack of effective therapies for patients with heart failure with preserved ejection fracti...
Data de publicació electrònica: 6 de novembre de 2019Alternative stress echocardiography protocols s...