Recent findings indicate a strong correlation between the risk of future heart disease and the volume of adipose tissue inside of the pericardium. So far, large-scale studies have been hindered by the fact that manual delineation of the pericardium is extremely time-consuming and that existing methods for automatic delineation lack accuracy. An efficient and fully automatic approach to pericardium segmentation and epicardial fat volume (EFV) estimation is presented, based on a variant of multi-atlas segmentation for spatial initialization and a random forest classifier for accurate pericardium detection. Experimental validation on a set of 30 manually delineated computer tomography angiography volumes shows a significant improvement on stat...
Epicardial adipose tissue is a type of adipose tissue located between the heart wall and a protectiv...
Multi-atlas segmentation is a widely used method that has proved to work well for the problem of seg...
To develop a fully automatic model capable of reliably quantifying epicardial adipose tissue (EAT) v...
Purpose: There is increasing evidence that epicardial fat (i.e., adipose tissue contained within the...
PURPOSE: There is increasing evidence that epicardial fat (i.e., adipose tissue contained within the...
PURPOSE: Epicardial fat is the adipose tissue between the serosal pericardial wall layer and the vis...
Many studies have shown that epicardial fat is associated with a higher risk of heart diseases. Accu...
Epicardial and pericardial adipose tissues (EAT and PAT), which are located around the heart, have b...
Epicardial fat is the adipose tissue surrounding the heart, located between the myocardium and the v...
This study evaluated the performance of a novel automated software tool for epicardial fat volume (E...
Pericardial fat volume (PFV) is emerging as an important parameter for cardiovas-cular risk stratifi...
Studies in clinical medicine often demand the quantitative analysis of medical images. These tasks n...
In this work we present a technique to automatically or semi-automatically quantify the epicardial f...
3D heart registration has become an important issue in cardio vascular diagnosis and treatment. This...
Epicardial fat, as other visceral fat localizations, is correlated with car- diovascular disease, ca...
Epicardial adipose tissue is a type of adipose tissue located between the heart wall and a protectiv...
Multi-atlas segmentation is a widely used method that has proved to work well for the problem of seg...
To develop a fully automatic model capable of reliably quantifying epicardial adipose tissue (EAT) v...
Purpose: There is increasing evidence that epicardial fat (i.e., adipose tissue contained within the...
PURPOSE: There is increasing evidence that epicardial fat (i.e., adipose tissue contained within the...
PURPOSE: Epicardial fat is the adipose tissue between the serosal pericardial wall layer and the vis...
Many studies have shown that epicardial fat is associated with a higher risk of heart diseases. Accu...
Epicardial and pericardial adipose tissues (EAT and PAT), which are located around the heart, have b...
Epicardial fat is the adipose tissue surrounding the heart, located between the myocardium and the v...
This study evaluated the performance of a novel automated software tool for epicardial fat volume (E...
Pericardial fat volume (PFV) is emerging as an important parameter for cardiovas-cular risk stratifi...
Studies in clinical medicine often demand the quantitative analysis of medical images. These tasks n...
In this work we present a technique to automatically or semi-automatically quantify the epicardial f...
3D heart registration has become an important issue in cardio vascular diagnosis and treatment. This...
Epicardial fat, as other visceral fat localizations, is correlated with car- diovascular disease, ca...
Epicardial adipose tissue is a type of adipose tissue located between the heart wall and a protectiv...
Multi-atlas segmentation is a widely used method that has proved to work well for the problem of seg...
To develop a fully automatic model capable of reliably quantifying epicardial adipose tissue (EAT) v...