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Pilot study: Application of artificial intelligence for detecting left atrial enlargement on canine thoracic radiographs

机译:试点研究:人工智能在犬胸射脊片上检测左心房扩大的应用

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Although deep learning has been explored extensively for computer-aided medical imaging diagnosis in human medicine, very little has been done in veterinary medicine. The goal of this retrospective, pilot project was to apply the deep learning artificial intelligence technique using thoracic radiographs for detection of canine left atrial enlargement and compare results with those of veterinary radiologist interpretations. Seven hundred ninety-two right lateral radiographs from canine patients with thoracic radiographs and contemporaneous echocardiograms were used to train, validate, and test a convolutional neural network algorithm. The accuracy, sensitivity, and specificity for determination of left atrial enlargement were then compared with those of board-certified veterinary radiologists as recorded on radiology reports. The accuracy, sensitivity, and specificity were 82.71%, 68.42%, and 87.09%, respectively, using an accuracy driven variant of the convolutional neural network algorithm and 79.01%, 73.68%, and 80.64%, respectively, using a sensitivity driven variant. By comparison, accuracy, sensitivity, and specificity achieved by board-certified veterinary radiologists was 82.71%, 68.42%, and 87.09%, respectively. Although overall accuracy of the accuracy driven convolutional neural network algorithm and veterinary radiologists was identical, concordance between the two approaches was 85.19%. This study documents proof-of-concept for application of deep learning techniques for computer-aided diagnosis in veterinary medicine.
机译:尽管在人类医学中,计算机辅助医学影像诊断的深入学习已经得到了广泛的探索,但在兽医学方面却做得很少。这一回顾性试点项目的目标是应用深度学习人工智能技术,利用胸片检测犬左心房扩大,并将结果与兽医放射科医生的解释进行比较。792张右位胸片和同期超声心动图用于训练、验证和测试卷积神经网络算法。然后将测定左心房扩大的准确性、敏感性和特异性与放射报告中记录的委员会认证兽医放射科医生的准确性、敏感性和特异性进行比较。使用卷积神经网络算法的精度驱动变量,准确度、敏感性和特异性分别为82.71%、68.42%和87.09%,使用灵敏度驱动变量,准确度、敏感性和特异性分别为79.01%、73.68%和80.64%。相比之下,由委员会认证的兽医放射科医生获得的准确性、敏感性和特异性分别为82.71%、68.42%和87.09%。虽然精度驱动的卷积神经网络算法和兽医放射科医生的总体准确率相同,但两种方法之间的一致性为85.19%。本研究记录了在兽医学中应用计算机辅助诊断的深度学习技术的概念证明。

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