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CNN-based detection of distal tibial fractures in radiographic images in the setting of open growth plates

机译:在开放性生长板设置中,基于CNN的放射线照相图像中胫骨远端骨折的检测

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The goal of this study was to assess the performance of a deep convolutional neural network trained with a limited number of cases for the detection of distal tibial fractures in children.We identified 516 ankle and leg radiographic exams in children (6.4±4.4 (mean±s.d) years) containing 2118 individual images. Radiographs with implants, casts, advanced healing, and including other pathology such as intra-osseous bone lesions were excluded. After these exclusions, 490 positive distal tibial fracture radiographs were identified and a matching number of normal radiographs ware selected, creating a dataset of 980 radiographs. These were sequentially partitioned, in 10 permutations, into a training set (784 radiographs), validation set (98 radiographs) and a test set (98 radiographs), with equal numbers of fracture and normal radiographs in each set. A modified transfer learning network based on the Xception-V3 architecture with additional fully convoluted reasoning layers was trained against each of the subsets. The best performing trained network successfully recognized 47 of 49 fractures and 47 of 49 normal exams (95.9% accuracy). The best three performing networks were all very similar, with accuracy of 95.6 ± 0.6%. In no instances were normal physes or normal developmental epiphyseal or medial malleolus fragmentation misclassified as a fracture. Using a pre-trained deep convolutional neural network adapted to identifying or excluding distal tibial fractures in children using only a small number of radiographs is feasible and highly accurate without the need for the large training sets typically needed for network training.
机译:本研究的目标是评估培训的深度卷积神经网络的性能,该网络培训的患者有限,用于检测儿童远端胫骨骨折。我们在儿童中确定了516个踝关节和腿部射线照片检查(6.4±4.4(平均值± SD)岁月)包含2118个单个图像。除了植入物,铸造,高级愈合以及包括其他病理学的射线照相,排除了诸如骨内骨病变的其他病理学。在这些排除之后,鉴定了490个正远端胫骨骨折射线照片,并选择了匹配数的正常射线照相洁具,创建了980个X线片的数据集。将这些被顺序地分区为10个排列,进入训练集(784 Xdarthopls),验证集(98 Xadox照片)和测试集(98 Xadox照片),每个组中具有相同数量的裂缝和正常射线照片。基于Xcepion-V3架构的修改转移学习网络,其具有附加完全卷积的推理层对每个子集接受训练。最好的培训网络成功地认可47个裂缝47个,47个正常考试中的47名(精度为95.9%)。最佳三个执行网络都非常相似,精度为95.6±0.6%。在任何情况下,正常物理或正常发育骨骺或内侧乳房菌碎片被分类为骨折。使用预训练的深卷积神经网络,适于仅使用少量射线照相识别或排除在儿童中的远端胫骨骨折是可行的,并且在不需要网络训练所需的大型训练集的情况下是可行的并且高度准确。

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