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Automated detection and classification of the proximal humerus fracture by using deep learning algorithm

机译:深度学习算法自动检测和识别肱骨近端骨折

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摘要

Background and purpose — We aimed to evaluate the ability of artificial intelligence (a deep learning algorithm) to detect and classify proximal humerus fractures using plain anteroposterior shoulder radiographs.Patients and methods — 1,891 images (1 image per person) of normal shoulders (n = 515) and 4 proximal humerus fracture types (greater tuberosity, 346; surgical neck, 514; 3-part, 269; 4-part, 247) classified by 3 specialists were evaluated. We trained a deep convolutional neural network (CNN) after augmentation of a training dataset. The ability of the CNN, as measured by top-1 accuracy, area under receiver operating characteristics curve (AUC), sensitivity/specificity, and Youden index, in comparison with humans (28 general physicians, 11 general orthopedists, and 19 orthopedists specialized in the shoulder) to detect and classify proximal humerus fractures was evaluated.Results — The CNN showed a high performance of 96% top-1 accuracy, 1.00 AUC, 0.99/0.97 sensitivity/specificity, and 0.97 Youden index for distinguishing normal shoulders from proximal humerus fractures. In addition, the CNN showed promising results with 65–86% top-1 accuracy, 0.90–0.98 AUC, 0.88/0.83–0.97/0.94 sensitivity/specificity, and 0.71–0.90 Youden index for classifying fracture type. When compared with the human groups, the CNN showed superior performance to that of general physicians and orthopedists, similar performance to orthopedists specialized in the shoulder, and the superior performance of the CNN was more marked in complex 3- and 4-part fractures.Interpretation — The use of artificial intelligence can accurately detect and classify proximal humerus fractures on plain shoulder AP radiographs. Further studies are necessary to determine the feasibility of applying artificial intelligence in the clinic and whether its use could improve care and outcomes compared with current orthopedic assessments.
机译:背景与目的—我们旨在评估人工智能(一种深度学习算法)使用普通的前后肩部X光片对肱骨近端骨折进行检测和分类的能力。患者和方法—正常肩膀的1,891张图像(每人1张图像)(n =评估了515位患者)和4位由3位专家分类的肱骨近端骨折类型(更大结节346个;手术颈514个; 3个部位269个; 4个部位247个)。扩充训练数据集后,我们训练了一个深度卷积神经网络(CNN)。与人类相比,CNN的能力(通过前1个准确性,接收器工作特征曲线下的面积(AUC),灵敏度/特异性和尤登指数来衡量)与人类相比(28名普通医师,11名普通骨科医生和19名专职于骨科的骨科医生)结果— CNN表现出96%的top-1准确度,1.00 AUC,0.99 / 0.97敏感性/特异性和0.97的尤登指数,可区分正常的肩部和肱骨近端骨折,并对其进行分类。骨折。此外,CNN表现出令人鼓舞的结果,top-1准确性为65–86%,AUC为0.90–0.98,敏感性/特异性为0.88 / 0.83–0.97 / 0.94,以及对骨折类型进行分类的Youden指数为0.71-0.90。与人类人群相比,CNN的表现优于普通医师和骨科医生,其表现与专精于肩部的骨科医生相似,而CNN的优越表现在复杂的3部分和4部分骨折中更为明显。 —使用人工智能可以在平肩AP射线照相上准确地检测和分类肱骨近端骨折。与目前的骨科评估相比,有必要进行进一步的研究来确定在临床上应用人工智能的可行性以及使用人工智能是否可以改善护理和治疗效果。

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