Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysiology. Creating muscle-specific labels manually is time consuming and requires an experienced examiner. Semi-automatic and fully automatic methods reduce segmentation time significantly. Current machine learning solutions are commonly trained on data from healthy subjects using homogeneous databases with the same image contrast. While yielding high Dice scores (DS), those solutions are not applicable to different image contrasts and acquisitions. Therefore, the aim of our study was to evaluate the feasibility of automatic segmentation of a heterogeneous database. To create a heterogeneous dataset, we pooled lower leg muscle images from differ...
Segmentation of thigh tissues (muscle, fat, inter-muscular adipose tissue (IMAT), bone, and bone mar...
Ultrasound imaging is a patient-friendly and robust technique for studying physiological and patholo...
By leveraging the recent development of artificial intelligence algorithms, several medical sectors ...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
Background Deep learning methods have been shown to be useful for segmentation of lower limb muscle ...
Cerebral palsy is a neurological condition that is known to affect muscle growth. Detailed investiga...
The size, shape, and composition of paraspinal muscles have been widely reported in disorders of the...
Purpose: A deep learning technique was used to analyze the triceps surae muscle. The devised interpo...
Hirschsprung's disease is a motility disorder that requires the assessment of the Auerbach's (myente...
Purpose: Infiltration of fat into lower limb muscles is one of the key markers for the severity of m...
Background: Muscle wasting (Sarcopenia) is associated with poor outcomes in cancer patients. Early i...
Background: Muscle anatomical cross-sectional area (ACSA) is an important parameter characterizing m...
International audienceNeuromuscular disorders are rare diseases for which few therapeutic strategies...
International audiencePurpose: To propose a novel segmentation framework that is dedicated to the fo...
Segmentation of thigh tissues (muscle, fat, inter-muscular adipose tissue (IMAT), bone, and bone mar...
Ultrasound imaging is a patient-friendly and robust technique for studying physiological and patholo...
By leveraging the recent development of artificial intelligence algorithms, several medical sectors ...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
Quantitative MRI combines non-invasive imaging techniques to reveal alterations in muscle pathophysi...
Background Deep learning methods have been shown to be useful for segmentation of lower limb muscle ...
Cerebral palsy is a neurological condition that is known to affect muscle growth. Detailed investiga...
The size, shape, and composition of paraspinal muscles have been widely reported in disorders of the...
Purpose: A deep learning technique was used to analyze the triceps surae muscle. The devised interpo...
Hirschsprung's disease is a motility disorder that requires the assessment of the Auerbach's (myente...
Purpose: Infiltration of fat into lower limb muscles is one of the key markers for the severity of m...
Background: Muscle wasting (Sarcopenia) is associated with poor outcomes in cancer patients. Early i...
Background: Muscle anatomical cross-sectional area (ACSA) is an important parameter characterizing m...
International audienceNeuromuscular disorders are rare diseases for which few therapeutic strategies...
International audiencePurpose: To propose a novel segmentation framework that is dedicated to the fo...
Segmentation of thigh tissues (muscle, fat, inter-muscular adipose tissue (IMAT), bone, and bone mar...
Ultrasound imaging is a patient-friendly and robust technique for studying physiological and patholo...
By leveraging the recent development of artificial intelligence algorithms, several medical sectors ...