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Characterizing cartilage microarchitecture on phase-contrast x-ray computed tomography using deep learning with convolutional neural networks

机译:用深度学习与卷积神经网络对相位对比X射线计算断层扫描的特征

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The effectiveness of phase contrast X-ray computed tomography (PCI-CT) in visualizing human patellar cartilage matrix has been demonstrated due to its ability to capture soft tissue contrast on a micrometer resolution scale. Recent studies have shown that off-the-shelf Convolutional Neural Network (CNN) features learned from a non-medical data set can be used for medical image classification. In this paper, we investigate the ability of features extracted from two different CNNs for characterizing chondrocyte patterns in the cartilage matrix. We obtained features from 842 regions of interest annotated on PCI-CT images of human patellar cartilage using CaffeNet and Inception-v3 Network, which were then used in a machine learning task involving support vector machines with radial basis function kernel to classify the ROIs as healthy or osteoarthritic. Classification performance was evaluated using the area (AUC) under the Receiver Operating Characteristic (ROC) curve. The best classification performance was observed with features from Inception-v3 network (AUC = 0.95), which outperforms features extracted from CaffeNet (AUC = 0.91). These results suggest that such characterization of chondrocyte patterns using features from internal layers of CNNs can be used to distinguish between healthy and osteoarthritic tissue with high accuracy.
机译:由于其能够在微米分辨率尺度上捕获软组织对比度,已经证明了相位对比X射线计算机断层扫描(PCI-CT)在可视化人髌骨软骨基质中的有效性。最近的研究表明,从非医疗数据集中学习的现成的卷积神经网络(CNN)特征可用于医学图像分类。在本文中,我们研究了从两种不同CNN中提取的特征的能力,用于表征软骨矩阵中的软骨细胞图案。我们使用Caffeenet和Inception-V3网络在人髌骨软骨的PCI-CT图像上注释了来自842个兴趣区域的特征,然后在涉及支持向量机的机器学习任务中使用径向基函数内核将ROI分类为健康或骨关节炎。使用接收器操作特征(ROC)曲线下的区域(AUC)评估分类性能。从Incepion-V3网络(AUC = 0.95)的功能,观察到最佳分类性能,从Caffeenet(AUC = 0.91)中提取的特征优于优异的特征。这些结果表明,使用来自CNN的内层的特征的软骨细胞模式的表征可用于区分高精度的健康和骨关节组织。

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