Radiography is an essential basis for the diagnosis of fractures. For the pediatric elbow joint diagnosis, the doctor needs to diagnose abnormalities based on the location and shape of each bone, which is a great challenge for AI algorithms when interpreting radiographs. Bone instance segmentation is an effective upstream task for automatic radiograph interpretation. Pediatric elbow bone instance segmentation is a process by which each bone is extracted separately from radiography. However, the arbitrary directions and the overlapping of bones pose issues for bone instance segmentation. In this paper, we design a detection-segmentation pipeline to tackle these problems by using rotational bounding boxes to detect bones and proposing a robus...
Automatic segmentation of ulna and radius (UR) in forearm radiographs is a necessary step for single...
Background: Bone Age Assessment (BAA) refers to a clinical procedure that aims to identify a discrep...
In medical imaging, segmentation using deep learning enables an automatic generation of anatomical m...
BACKGROUND:Detection of ossification areas of hand bones in X-ray images is an important task, e.g. ...
Background and purpose — Artificial intelligence has rapidly become a powerful method in image analy...
International audienceClinical diagnosis of the pediatric musculoskeletal system relies on the analy...
Background and purpose — Recent advances in artificial intelligence (deep learning) have shown remar...
Purpose The Radiological Society of North America (RSNA) Pediatric Bone Age Machine Learning Challen...
Bone age assessment can be useful in a variety of ways. It can help pediatricians predict growth, pu...
International audienceMorphological and diagnostic evaluation of pediatric musculoskeletal system is...
This thesis proposes a deep learning approach to bone segmentation in abdominal CNN+PG. Segmentation...
Fast and accurate diagnosis of a fractured bone from radiographic images is very important in time-d...
The practice of Deep Convolution neural networks in the field of medicine has congregated immense su...
Purpose: Convolutional neural networks (CNNs) are increasingly being developed for automated fractur...
Background Radial head fractures are often evaluated in emergency departments and can easily be miss...
Automatic segmentation of ulna and radius (UR) in forearm radiographs is a necessary step for single...
Background: Bone Age Assessment (BAA) refers to a clinical procedure that aims to identify a discrep...
In medical imaging, segmentation using deep learning enables an automatic generation of anatomical m...
BACKGROUND:Detection of ossification areas of hand bones in X-ray images is an important task, e.g. ...
Background and purpose — Artificial intelligence has rapidly become a powerful method in image analy...
International audienceClinical diagnosis of the pediatric musculoskeletal system relies on the analy...
Background and purpose — Recent advances in artificial intelligence (deep learning) have shown remar...
Purpose The Radiological Society of North America (RSNA) Pediatric Bone Age Machine Learning Challen...
Bone age assessment can be useful in a variety of ways. It can help pediatricians predict growth, pu...
International audienceMorphological and diagnostic evaluation of pediatric musculoskeletal system is...
This thesis proposes a deep learning approach to bone segmentation in abdominal CNN+PG. Segmentation...
Fast and accurate diagnosis of a fractured bone from radiographic images is very important in time-d...
The practice of Deep Convolution neural networks in the field of medicine has congregated immense su...
Purpose: Convolutional neural networks (CNNs) are increasingly being developed for automated fractur...
Background Radial head fractures are often evaluated in emergency departments and can easily be miss...
Automatic segmentation of ulna and radius (UR) in forearm radiographs is a necessary step for single...
Background: Bone Age Assessment (BAA) refers to a clinical procedure that aims to identify a discrep...
In medical imaging, segmentation using deep learning enables an automatic generation of anatomical m...