Myocardial strain analysis from cinematic magnetic resonance imaging (cine-MRI) data provides a more thorough characterization of cardiac mechanics than volumetric parameters such as left-ventricular ejection fraction, but sources of variation including segmentation and motion estimation have limited its wider clinical use. We designed and validated a fast, fully-automatic deep learning (DL) workflow to generate both volumetric parameters and strain measures from cine-MRI data consisting of segmentation and motion estimation convolutional neural networks. The final motion network design, loss function, and associated hyperparameters are the result of a thorough ad hoc implementation that we carefully planned specific for strain quantificati...
Cardiac magnetic resonance (CMR) is the current gold standard imaging technique to assess myocardium...
How well the heart is functioning can be quantified through measurements of myocardial deformation v...
Cardiovascular disease is the leading cause of death in the United States. 30~50% of cardiovascular ...
PurposeTo assess the feasibility of a newly developed algorithm, called deep learning synthetic stra...
Purpose: To evaluate if a fully-automatic deep learning method for myocardial strain analysis based ...
BackgroundStrain analysis provides more thorough spatiotemporal signatures for myocardial contractio...
The use of deep learning (DL) segmentation in cardiac MRI has the potential to streamline the radiol...
Introduction4D cardiac CT (cineCT) is increasingly used to evaluate cardiac dynamics. While echocard...
Recent studies in the field of deep learning suggest that motion estimation can be treated as a lear...
Since its invention in the 1970s, magnetic resonance imaging (MRI) has contributed greatly to our un...
Deformation imaging in echocardiography has been shown to have better diagnostic and prognostic valu...
Although having been the subject of intense research over the years, cardiac function quantification...
Heart failure is typically diagnosed with a global function assessment, such as ejection fraction. H...
Machine learning with deep neural networks has demonstrated high performance for high dimensionality...
Deep learning has been widely applied for left ventricle (LV) analysis, obtaining state of the art r...
Cardiac magnetic resonance (CMR) is the current gold standard imaging technique to assess myocardium...
How well the heart is functioning can be quantified through measurements of myocardial deformation v...
Cardiovascular disease is the leading cause of death in the United States. 30~50% of cardiovascular ...
PurposeTo assess the feasibility of a newly developed algorithm, called deep learning synthetic stra...
Purpose: To evaluate if a fully-automatic deep learning method for myocardial strain analysis based ...
BackgroundStrain analysis provides more thorough spatiotemporal signatures for myocardial contractio...
The use of deep learning (DL) segmentation in cardiac MRI has the potential to streamline the radiol...
Introduction4D cardiac CT (cineCT) is increasingly used to evaluate cardiac dynamics. While echocard...
Recent studies in the field of deep learning suggest that motion estimation can be treated as a lear...
Since its invention in the 1970s, magnetic resonance imaging (MRI) has contributed greatly to our un...
Deformation imaging in echocardiography has been shown to have better diagnostic and prognostic valu...
Although having been the subject of intense research over the years, cardiac function quantification...
Heart failure is typically diagnosed with a global function assessment, such as ejection fraction. H...
Machine learning with deep neural networks has demonstrated high performance for high dimensionality...
Deep learning has been widely applied for left ventricle (LV) analysis, obtaining state of the art r...
Cardiac magnetic resonance (CMR) is the current gold standard imaging technique to assess myocardium...
How well the heart is functioning can be quantified through measurements of myocardial deformation v...
Cardiovascular disease is the leading cause of death in the United States. 30~50% of cardiovascular ...