4.1 Article

Automatically Diagnosing Skull Fractures Using an Object Detection Method and Deep Learning Algorithm in Plain Radiography Images

Journal

JOURNAL OF KOREAN NEUROSURGICAL SOCIETY
Volume 66, Issue 1, Pages 53-62

Publisher

KOREAN NEUROSURGICAL SOC
DOI: 10.3340/jkns.2022.0062

Keywords

Deep learning; Artificial intelligence; Radiography; Skull fractures; Traumatic brain injury

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This study analyzed and evaluated the diagnostic performance of a deep learning algorithm in identifying skull fractures in plain radiographic images. The results showed that the algorithm achieved high precision and recall rates for skull fracture diagnosis. Furthermore, significant differences were found between different views of the skull images, and the algorithm performed poorly in detecting certain types of fractures.
Objective : Deep learning is a machine learning approach based on artificial neural network training, and object detection algorithm using deep learning is used as the most powerful tool in image analysis. We analyzed and evaluated the diagnostic performance of a deep learning algorithm to identify skull fractures in plain radiographic images and investigated its clinical applicability. Methods : A total of 2026 plain radiographic images of the skull (fracture, 991; normal, 1035) were obtained from 741 patients. The RetinaNet architecture was used as a deep learning model. Precision, recall, and average precision were measured to evaluate the deep learning algorithm's diagnostic performance.Results : In ResNet-152, the average precision for intersection over union (IOU) 0.1, 0.3, and 0.5, were 0.7240, 0.6698, and 0.3687, respectively. When the intersection over union (IOU) and confidence threshold were 0.1, the precision was 0.7292, and the recall was 0.7650. When the IOU threshold was 0.1, and the confidence threshold was 0.6, the true and false rates were 82.9% and 17.1%, respectively. There were significant differences in the true/false and false-positive/false-negative ratios between the anterior posterior, towne, and both lateral views (p=0.032 and p=0.003). Objects detected in false positives had vascular grooves and suture lines. In false negatives, the detection performance of the diastatic fractures, fractures crossing the suture line, and fractures around the vascular grooves and orbit was poor.Conclusion : The object detection algorithm applied with deep learning is expected to be a valuable tool in diagnosing skull fractures.

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