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Segmentation of the knee tissues using U-Net neural network based on T1- and T2-weighted MR images

机译:基于T1-和T2加权MR图像的U-NET神经网络分割膝关节组织

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Objective: To automatically and precisely segment knee tissues for aiding diagnosis or constructing model, a segmentation method using a convolutional neural network which was based on the data set of T1- and T2-weighted MR (magnetic resonance) images was proposed in this paper. Materials and methods: The data set consisted of training set, validation set, and test set, and each of them had image sets of 14, 4, and 12 volunteers, respectively. Each knee image set integrated T1- and T2- weighted MR images in the sagittal plane from a low-field scanner. A fully convolutional network, U-Net, was used to segmented knee tissues, which was composed of cartilage, meniscus, effusion, bone, muscle, and fat. For U-net, convolution layer number was 13, kernel size was 7x7, and cross entropy function was used as the loss function. To eliminate isolated pixels, output images were processed using morphological filtering. This method was compared with those methods that only used T1- or T2-weighted images by several quantitative measures. The manual delineation results were used as the ground truth. Results: Good segmentation performance was demonstrated on the test set. The quantitative measures of most tissues of the proposed method were found to be superior to those of other methods mentioned above. Conclusions: The proposed method adopted an advanced neural network and implemented a comprehensive use of information contained in T1- and T2-weighted images. Therefore, it exhibited promising potential for automatic and precise segmentation of knee tissues.
机译:目的:自动且精确地分段膝关节组织用于辅助诊断或构建模型,本文提出了一种基于T1-和T2加权MR(磁共振MR(磁共振MR(磁共振MR(磁共振)图像的数据集的卷积神经网络的分段方法。材料和方法:数据集包括训练集,验证集和测试集,每个验证集和测试集分别具有14,4和12个志愿者的图像集。每个膝部图像在来自低场扫描仪的矢状平面中集成的T1和T2加权MR图像。完全卷积的网络U-Net用于分段膝关节组织,该组织由软骨,弯月面,积液,骨骼,肌肉和脂肪组成。对于U-Net,卷积层数为13,内核大小为7x7,并且跨熵功能用作损耗功能。为了消除隔离像素,使用形态过滤处理输出图像。将该方法与仅使用若干定量措施仅使用T1或T2加权图像的方法进行比较。手动描绘结果用作地面真理。结果:在测试集上证明了良好的分段性能。发现拟议方法大多数组织的定量测量优于上述其他方法的定量措施。结论:该方法采用了先进的神经网络,并实施了T1和T2加权图像中包含的信息的全面使用。因此,它表现出具有膝关节组织的自动和精确分割的有希望的潜力。

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