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Assessment of optimal deep learning configuration for vertebrae segmentation from CT images

机译:从CT图像中椎骨分割的最佳深度学习配置评估

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Automated segmentation of vertebral bone from diagnostic Computed Tomography (CT) images has become an important part of clinical workflow today. There is an increasing need for computer aided diagnosis applications of various spine disorders including scoliosis, fracture detection and even automated reporting. While modelbased methods have been widely used, recent deep Learning methods have shown a great potential in this area. However, choice of optimal configuration of the network to get the best segmentation performance is challenging. In this work, we explore the impact of different training and inference options, including dimensions, activation function, batch normalization, kernel size, filters, patch size and patch selection strategy in U-Net architecture. 20 publicly available CT Spine datasets from Spineweb repository was used in this study divided into training/test datasets. Training with different DL configurations were repeated with these datasets. We used the best weights corresponding to each configuration for inference on the independent test dataset. These results on the test dataset with the best weights for each configurations were compared. 3D models performed consistently better than 2D approaches. Overlapped patch based inference had a big impact on enhancing performance accuracy. The selection of training patch size was also found to be crucial in improving the model performance. Moreover, the need for an effective balance of positive and negative training patches was found. The best performance in our study was obtained by using overlapped patch inference, training with RELU activation and batch normalization in a 3D U-Net architecture with training patch size of 128×128×32 that resulted in average values of precision= 97%, sensitivity= 96% and F1 (Dice)= 96% for the test dataset.
机译:来自诊断计算机断层扫描(CT)图像的椎骨骨的自动分割已成为当今临床工作流程的重要组成部分。越来越需要各种脊柱疾病的计算机辅助诊断应用,包括脊柱侧凸,断裂检测甚至自动报告。虽然型号的方法已被广泛使用,但最近的深度学习方法在这方面表现出很大的潜力。但是,网络选择网络的最佳配置,以获得最佳的分段性能是具有挑战性的。在这项工作中,我们探讨了不同培训和推理选项的影响,包括U-Net架构中的尺寸,激活功能,批量标准化,内核大小,滤波器,补丁大小和补丁选择策略。来自SpineWeb存储库的20个公开的CT脊柱数据集在本研究中使用了分为训练/测试数据集。使用这些数据集重复具有不同DL配置的培训。我们使用对应于每个配置的最佳重量,以便在独立的测试数据集上推断。这些结果在测试数据集上,比较了每个配置的最佳重量。 3D模型始终如一优于2D方法。重叠的贴片基础的推断对提高性能准确性产生了很大影响。还发现培训补丁大小的选择对于提高模型性能至关重要。此外,发现了对阳性和阴性训练贴片的有效平衡的需求。我们研究中的最佳性能是通过使用重叠的补丁推断,在3D U-Net架构中使用Relu激活和批量标准化进行培训,训练贴片尺寸为128×128×32,导致平均精度值= 97%,灵敏度测试数据集的96%和F1(骰子)= 96%。

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