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Knee Bone Segmentation on Three-Dimensional MRI

机译:三维MRI上的膝盖骨细分

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Three-dimensional (3D) images are widely used in the medical field (e.g., CT, MRI). In osteoarthritis research, 3D magnetic resonance imaging (MRI) provides a noninvasive way to study soft-tissue structures including hyaline cartilage, meniscus, muscle, bone marrow lesion, etc. The measurement of those structures can be greatly improved by accurately locating the bone structure. U-net is a convolutional neural network developed for biological image segmentation using limited training data. The original U-net takes a single 2D image as input and generates a binary 2D image as output. In this paper, we modified the U-net model to identify the bone structure on 3D knee MRI, which is a sequence of multiple 2D slices. Instead of taking a single image as input, the modified U-net takes multiple adjacent slices as input. The output is still a single binary image which is the segmentation result of the center slice in the input sequence. By using 99 knee MRI cases, where each knee case includes 160 2D slices, the proposed model was trained, validated, and tested. The dice coefficient, similarity, and area error metrics rate were tallied to assess the performance and the quality of the testing sets. Without any post-processing of the images, the model achieved promising segmentation performance with the Dice coefficient (DICE) 97.22% on the testing dataset. To achieve the best performance, diverse models were trained using different strategies including different numbers of input channels and different input image sizes. The experiment results indicate that the incorporation of neighboring slices generated better segmentation performance than using the single slice. We also found that a larger image size (uncompressed) corresponds to better performance. In summary, our best segmentation performance was achieved using five adjacent neighbor slices (two left neighbors + two right neighbors + the center slice) with the original image size of 352 × 352 pixels.
机译:三维(3D)图像广泛用于医疗领域(例如,CT,MRI)。在骨关节炎的研究中,3D磁共振成像(MRI)提供了一种在透明软骨,弯月面,肌肉,骨髓病变等中研究软组织结构的非侵入性方式,可以通过精确定位骨结构来大大提高这些结构的测量。 U-Net是一种用于使用有限训练数据的生物学图像分割开发的卷积神经网络。原始U-Net将单个2D图像作为输入,并为输出生成二进制2D图像。在本文中,我们修改了U-Net模型以识别3D膝部MRI上的骨骼结构,这是一系列多个2D片。改进的U-Net将多个相邻的切片作为输入,而不是将单个图像拍摄。输出仍然是单个二进制图像,其是输入序列中的中心切片的分割结果。通过使用99个膝盖MRI案例,其中每个膝关型包括160个2D切片,所提出的模型受过培训,验证和测试。骰子系数,相似性和区域误差度量率被概率评估了测试集的性能和质量。如果没有图像的任何后处理,则该模型实现了在测试数据集上的骰子系数(骰子)97.22%的有前途的分割性能。为实现最佳性能,使用不同策略的不同策略培训不同的模型,包括不同数量的输入通道和不同的输入图像尺寸。实验结果表明,邻近切片的融合而不是使用单个切片产生更好的分割性能。我们还发现,更大的图像尺寸(未压缩)对应于更好的性能。总之,我们使用五个相邻邻居切片(两个左邻居+两个右邻居+中心切片)实现了我们的最佳分割性能,其原始图像大小为352×352像素。

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