Rib Fractures are one of the most common bone injuries that can occur. Over 3 million cases are diagnosed in the United States alone yearly making it a very common fracture. Causes are usually from chest trauma such as falls and sports accidents. The detection of Rib Fractures is a common task in clinics and a labor-intensive such that a specialist radiologist is required to detect rib fractures. The proposed solution looks at processing CT Scans containing rib fractures with an Attention U-Net CNN Architecture. The system achieved a segmentation dice of 77.46% and an IoU of 63.21% with an improvement of 5.96% and 7.61% respectively from the currently published paper
Objective: Skull fractures caused by head trauma can lead to life-threatening complications. Hence, ...
RibFrac dataset is a benchmark for developping algorithms on rib fracture detection, segmentation an...
Convolutional neural networks (CNNs) have gained significant popularity in orthopedic imaging in rec...
International audiencePURPOSE: Clinical rib fracture diagnosis via computed tomography (CT) screenin...
This is the challenge design document for the "Rib Fracture Detection and Classification Challenge",...
IntroductionRib fractures are a prevalent injury among trauma patients, and accurate and timely diag...
International audienceRib fracture is a common disease that requires prompt treatment. This study fo...
Imaging techniques are widely used for medical diagnostics. In some cases, a lack of medical practit...
This data set is part of the public development data for the 2023 Automated Universal Classification...
Most of the existing object detection works are based on the bounding box annotation: each object ha...
Classification of skull fracture is a challenging task for both radiologists and researchers. Skull ...
Automatic bone segmentation from a chest radiograph is an important and challenging task in medical ...
BackgroundIdentification of vertebral fractures (VFs) is critical for effective secondary fracture p...
RibFrac dataset is a benchmark for developping algorithms on rib fracture detection, segmentation an...
Convolutional neural networks (CNNs) have gained significant popularity in orthopedic imaging in rec...
Objective: Skull fractures caused by head trauma can lead to life-threatening complications. Hence, ...
RibFrac dataset is a benchmark for developping algorithms on rib fracture detection, segmentation an...
Convolutional neural networks (CNNs) have gained significant popularity in orthopedic imaging in rec...
International audiencePURPOSE: Clinical rib fracture diagnosis via computed tomography (CT) screenin...
This is the challenge design document for the "Rib Fracture Detection and Classification Challenge",...
IntroductionRib fractures are a prevalent injury among trauma patients, and accurate and timely diag...
International audienceRib fracture is a common disease that requires prompt treatment. This study fo...
Imaging techniques are widely used for medical diagnostics. In some cases, a lack of medical practit...
This data set is part of the public development data for the 2023 Automated Universal Classification...
Most of the existing object detection works are based on the bounding box annotation: each object ha...
Classification of skull fracture is a challenging task for both radiologists and researchers. Skull ...
Automatic bone segmentation from a chest radiograph is an important and challenging task in medical ...
BackgroundIdentification of vertebral fractures (VFs) is critical for effective secondary fracture p...
RibFrac dataset is a benchmark for developping algorithms on rib fracture detection, segmentation an...
Convolutional neural networks (CNNs) have gained significant popularity in orthopedic imaging in rec...
Objective: Skull fractures caused by head trauma can lead to life-threatening complications. Hence, ...
RibFrac dataset is a benchmark for developping algorithms on rib fracture detection, segmentation an...
Convolutional neural networks (CNNs) have gained significant popularity in orthopedic imaging in rec...