Department of Radiology, Caen University Medical Center, 14033 Cedex 9, Caen, France.
GRAM 2.0 EA2656 UNICAEN Normandie, University Hospital, Caen, France.
Pediatr Radiol. 2023 Jul;53(8):1675-1684. doi: 10.1007/s00247-023-05621-w. Epub 2023 Mar 6.
Advances have been made in the use of artificial intelligence (AI) in the field of diagnostic imaging, particularly in the detection of fractures on conventional radiographs. Studies looking at the detection of fractures in the pediatric population are few. The anatomical variations and evolution according to the child's age require specific studies of this population. Failure to diagnose fractures early in children may lead to serious consequences for growth.
To evaluate the performance of an AI algorithm based on deep neural networks toward detecting traumatic appendicular fractures in a pediatric population. To compare sensitivity, specificity, positive predictive value and negative predictive value of different readers and the AI algorithm.
This retrospective study conducted on 878 patients younger than 18 years of age evaluated conventional radiographs obtained after recent non-life-threatening trauma. All radiographs of the shoulder, arm, elbow, forearm, wrist, hand, leg, knee, ankle and foot were evaluated. The diagnostic performance of a consensus of radiology experts in pediatric imaging (reference standard) was compared with those of pediatric radiologists, emergency physicians, senior residents and junior residents. The predictions made by the AI algorithm and the annotations made by the different physicians were compared.
The algorithm predicted 174 fractures out of 182, corresponding to a sensitivity of 95.6%, a specificity of 91.64% and a negative predictive value of 98.76%. The AI predictions were close to that of pediatric radiologists (sensitivity 98.35%) and that of senior residents (95.05%) and were above those of emergency physicians (81.87%) and junior residents (90.1%). The algorithm identified 3 (1.6%) fractures not initially seen by pediatric radiologists.
This study suggests that deep learning algorithms can be useful in improving the detection of fractures in children.
人工智能(AI)在诊断成像领域的应用取得了进展,特别是在常规 X 光片上骨折的检测方面。针对儿科人群进行的骨折检测研究较少。由于解剖学的变化和儿童年龄的发展,需要对该人群进行专门的研究。未能及早诊断儿童骨折可能会对其生长造成严重后果。
评估基于深度神经网络的 AI 算法在检测儿科人群外伤性四肢骨折方面的性能。比较不同读者和 AI 算法的灵敏度、特异性、阳性预测值和阴性预测值。
本回顾性研究纳入了 878 名年龄小于 18 岁的近期无生命威胁性创伤患者。评估了肩部、手臂、肘部、前臂、手腕、手、腿部、膝盖、脚踝和足部的常规 X 光片。比较了儿童影像专家共识(参考标准)、儿科放射科医生、急诊医生、高年住院医生和低年住院医生的诊断性能。比较了 AI 算法的预测结果和不同医生的标注结果。
该算法预测出 174 处骨折,其中 182 处为阳性,其灵敏度为 95.6%,特异性为 91.64%,阴性预测值为 98.76%。AI 预测结果接近儿科放射科医生(灵敏度 98.35%)和高年住院医生(95.05%),高于急诊医生(81.87%)和低年住院医生(90.1%)。该算法还发现了 3 处(1.6%)儿科放射科医生最初未发现的骨折。
本研究表明,深度学习算法在提高儿童骨折检测方面可能具有一定的应用价值。