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Papers/Enhancing Wrist Fracture Detection with YOLO

Enhancing Wrist Fracture Detection with YOLO

Ammar Ahmed, Ali Shariq Imran, Abdul Manaf, Zenun Kastrati, Sher Muhammad Daudpota

2024-07-17Medical Object DetectionFracture detectionAnomaly Detectionmedical image detectionobject-detectionObject Detection
PaperPDFCode(official)

Abstract

Diagnosing and treating abnormalities in the wrist, specifically distal radius, and ulna fractures, is a crucial concern among children, adolescents, and young adults, with a higher incidence rate during puberty. However, the scarcity of radiologists and the lack of specialized training among medical professionals pose a significant risk to patient care. This problem is further exacerbated by the rising number of imaging studies and limited access to specialist reporting in certain regions. This highlights the need for innovative solutions to improve the diagnosis and treatment of wrist abnormalities. Automated wrist fracture detection using object detection has shown potential, but current studies mainly use two-stage detection methods with limited evidence for single-stage effectiveness. This study employs state-of-the-art single-stage deep neural network-based detection models YOLOv5, YOLOv6, YOLOv7, and YOLOv8 to detect wrist abnormalities. Through extensive experimentation, we found that these YOLO models outperform the commonly used two-stage detection algorithm, Faster R-CNN, in fracture detection. Additionally, compound-scaled variants of each YOLO model were compared, with YOLOv8m demonstrating a highest fracture detection sensitivity of 0.92 and mean average precision (mAP) of 0.95. On the other hand, YOLOv6m achieved the highest sensitivity across all classes at 0.83. Meanwhile, YOLOv8x recorded the highest mAP of 0.77 for all classes on the GRAZPEDWRI-DX pediatric wrist dataset, highlighting the potential of single-stage models for enhancing pediatric wrist imaging.

Results

TaskDatasetMetricValueModel
Object DetectionGRAZPEDWRI-DXmAP77YOLOv8x
Object DetectionGRAZPEDWRI-DXmAP69YOLOv5x
Object DetectionGRAZPEDWRI-DXmAP64YOLOv6m
Object DetectionGRAZPEDWRI-DXmAP61YOLOv7
Object DetectionGRAZPEDWRI-DXmAP77YOLOv8x
Object DetectionGRAZPEDWRI-DXFracture Sensitivity92YOLOv8m
Object DetectionGRAZPEDWRI-DXFracture Sensitivity91YOLOv7
3DGRAZPEDWRI-DXmAP77YOLOv8x
3DGRAZPEDWRI-DXmAP69YOLOv5x
3DGRAZPEDWRI-DXmAP64YOLOv6m
3DGRAZPEDWRI-DXmAP61YOLOv7
3DGRAZPEDWRI-DXmAP77YOLOv8x
3DGRAZPEDWRI-DXFracture Sensitivity92YOLOv8m
3DGRAZPEDWRI-DXFracture Sensitivity91YOLOv7
2D ClassificationGRAZPEDWRI-DXmAP77YOLOv8x
2D ClassificationGRAZPEDWRI-DXmAP69YOLOv5x
2D ClassificationGRAZPEDWRI-DXmAP64YOLOv6m
2D ClassificationGRAZPEDWRI-DXmAP61YOLOv7
2D ClassificationGRAZPEDWRI-DXmAP77YOLOv8x
2D ClassificationGRAZPEDWRI-DXFracture Sensitivity92YOLOv8m
2D ClassificationGRAZPEDWRI-DXFracture Sensitivity91YOLOv7
2D Object DetectionGRAZPEDWRI-DXmAP77YOLOv8x
2D Object DetectionGRAZPEDWRI-DXmAP69YOLOv5x
2D Object DetectionGRAZPEDWRI-DXmAP64YOLOv6m
2D Object DetectionGRAZPEDWRI-DXmAP61YOLOv7
2D Object DetectionGRAZPEDWRI-DXmAP77YOLOv8x
2D Object DetectionGRAZPEDWRI-DXFracture Sensitivity92YOLOv8m
2D Object DetectionGRAZPEDWRI-DXFracture Sensitivity91YOLOv7
2D Object DetectionGRAZPEDWRI-DXmAP77YOLOv8x
16kGRAZPEDWRI-DXmAP77YOLOv8x
16kGRAZPEDWRI-DXmAP69YOLOv5x
16kGRAZPEDWRI-DXmAP64YOLOv6m
16kGRAZPEDWRI-DXmAP61YOLOv7
16kGRAZPEDWRI-DXmAP77YOLOv8x
16kGRAZPEDWRI-DXFracture Sensitivity92YOLOv8m
16kGRAZPEDWRI-DXFracture Sensitivity91YOLOv7

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