Evaluation and diagnosis of diseases of the muscles within the rotator cuff can be done using different modalities, being the Magnetic Resonance the method more widely used. There are criteria to evaluate the degree of fat infiltration and muscle atrophy, but these have low accuracy and show great variability inter and intra observer. In this paper, an analysis of the texture features of the rotator cuff muscles is performed to classify them and other tissues. A general supervised classification approach was used, combining forward-search as feature selection method with kNN as classification rule. Sections of Magnetic Resonance Images of the tissues of interest were selected by specialist doctors and they were considered as Gold Standard. ...
Objective. To evaluate the supraspinatus muscle radiodensity on the outlet view as an indication of ...
ABSTRACT Objective: To evaluate the fatty infiltration and atrophy of the supraespinatus in the pre-...
This study aimed at developing a convolutional neural network (CNN) able to automatically quantify a...
Abstract Occupation ratio and fatty infiltration are important parameters for evaluating patients wi...
Rationale and objectivesPresurgical assessment of fatty degeneration is important in the management ...
OBJECTIVES To evaluate quantification of early fatty infiltration in supraspinatus muscles with magn...
BACKGROUND Quantitative MRI allows assessment of shoulder rotator cuff (RC) muscles by Dixon MR seq...
Fat fraction of the rotator cuff muscles has been shown to be a predictor of rotator cuff repair fai...
RATIONALE AND OBJECTIVES: To assess the usefulness of T2*-corrected fat fraction (FF) map from volum...
PURPOSE:Quantitative imaging methods could improve diagnosis of rotator cuff degeneration, but the c...
Magnetic resonance imaging (MRI) is the gold-standard technique for evaluating muscle fatty infiltra...
MR imaging is the optimal method for evaluating suspected rotator cuff pathology. Current techniques...
The purpose of this study was to evaluate the diagnostic performance of magnetic resonance imaging...
We examined the intensity of the supraspinetus muscles of patients with a rotator cuff tear in Magne...
Shoulder pain is a common clinical presentation. Though the spectrum of disorders affecting the shou...
Objective. To evaluate the supraspinatus muscle radiodensity on the outlet view as an indication of ...
ABSTRACT Objective: To evaluate the fatty infiltration and atrophy of the supraespinatus in the pre-...
This study aimed at developing a convolutional neural network (CNN) able to automatically quantify a...
Abstract Occupation ratio and fatty infiltration are important parameters for evaluating patients wi...
Rationale and objectivesPresurgical assessment of fatty degeneration is important in the management ...
OBJECTIVES To evaluate quantification of early fatty infiltration in supraspinatus muscles with magn...
BACKGROUND Quantitative MRI allows assessment of shoulder rotator cuff (RC) muscles by Dixon MR seq...
Fat fraction of the rotator cuff muscles has been shown to be a predictor of rotator cuff repair fai...
RATIONALE AND OBJECTIVES: To assess the usefulness of T2*-corrected fat fraction (FF) map from volum...
PURPOSE:Quantitative imaging methods could improve diagnosis of rotator cuff degeneration, but the c...
Magnetic resonance imaging (MRI) is the gold-standard technique for evaluating muscle fatty infiltra...
MR imaging is the optimal method for evaluating suspected rotator cuff pathology. Current techniques...
The purpose of this study was to evaluate the diagnostic performance of magnetic resonance imaging...
We examined the intensity of the supraspinetus muscles of patients with a rotator cuff tear in Magne...
Shoulder pain is a common clinical presentation. Though the spectrum of disorders affecting the shou...
Objective. To evaluate the supraspinatus muscle radiodensity on the outlet view as an indication of ...
ABSTRACT Objective: To evaluate the fatty infiltration and atrophy of the supraespinatus in the pre-...
This study aimed at developing a convolutional neural network (CNN) able to automatically quantify a...