Costa da Silva Raniere Gaia, Mishra Ambika Prasad, Riggs Christopher Michael, Doube Michael
Department of Infectious Diseases and Public Health City University of Hong Kong Hong Kong SAR China.
Department of Veterinary Clinical Services Hong Kong Jockey Club Hong Kong SAR China.
Vet Rec Open. 2023 Jan 29;10(1):e55. doi: 10.1002/vro2.55. eCollection 2023 Jun.
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.
Radiographs ( = 9504) of horse limbs from image sets made for veterinary inspections by 10 independent veterinary clinics were used to train, validate and test (116, 40 and 42 radiographs, respectively) six deep learning architectures available as part of the open source machine learning framework PyTorch. The deep learning architectures with the best top-1 accuracy had the batch size further investigated.
Top-1 accuracy of six deep learning architectures ranged from 0.737 to 0.841. Top-1 accuracy of the best deep learning architecture (ResNet-34) ranged from 0.809 to 0.878, depending on batch size. ResNet-34 (batch size = 8) achieved the highest top-1 accuracy (0.878) and the majority (91.8%) of misclassification was due to laterality error. Class activation maps indicated that joint morphology, not side markers or other non-anatomical image regions, drove the model decision.
Deep convolutional neural networks can classify equine pre-import radiographs into the 48 standard views including moderate discrimination of laterality, independent of side marker presence.
评估深度卷积神经网络对一系列48张赛马肢体标准视图进行解剖位置和投影分类的能力。
使用由10家独立兽医诊所为兽医检查制作的图像集中的马肢体X线片(=9504张)来训练、验证和测试(分别为116张、40张和42张X线片)作为开源机器学习框架PyTorch一部分的六种深度学习架构。对具有最佳top-1准确率的深度学习架构的批量大小进行了进一步研究。
六种深度学习架构的top-1准确率在0.737至0.841之间。最佳深度学习架构(ResNet-34)的top-1准确率在0.809至0.878之间,具体取决于批量大小。ResNet-34(批量大小=8)实现了最高的top-1准确率(0.878),并且大多数(91.8%)误分类是由于左右侧误差。类激活映射表明,驱动模型决策的是关节形态,而非侧标记或其他非解剖图像区域。
深度卷积神经网络可以将马的进口前X线片分类为48种标准视图,包括对左右侧的适度区分,且与侧标记的存在无关。