Purpose: To assess the capability of deep convolutional neural networks to classify anatomical location and projection from a series of 48 standard views of racehorse limbs. Materials and Methods: 9504 equine pre-import radiographs were used to train, validate, and test six deep learning architectures available as part of the open source machine learning framework PyTorch. Results: ResNet-34 achieved a top-1 accuracy of 0.8408 and the majority (88%) of misclassification was because of wrong laterality. Class activation maps indicated that joint morphology drove the model decision. Conclusion: Deep convolutional neural networks are capable of classifying equine pre-import radiographs into the 48 standard views including moderate discrimination of laterality independent of side marker presence.
翻译:目的:评估深层进化神经网络对解剖位置进行分类的能力,以及从一系列48种关于赛马肢体的标准观点中所作的预测。材料和方法:使用9504 equine前射电图培训、验证和测试作为开放源代码机器学习框架PyTorch一部分的六种深层学习结构。结果:ResNet-34达到了0.8408的上一级精确度,错误分类的多数(88%)是由于横向偏差造成的。动画图显示,联合形态驱动了示范决定。结论:深层进化神经网络能够将精度前射电图分为48种标准观点,包括中度区分侧标志存在的横向特征。