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Automated Analysis of Chest Radiographs for Cystic Fibrosis Scoring

机译:胸片的囊性纤维化评分自动分析

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We present a framework to analyze chest radiographs for cystic fibrosis using machine learning methods. We compare the representational power of deep learning features with traditional texture features. Specifically, we respectively employ VGG-16 based deep learning features, Tamura and Gabor filter based textural features to represent the cystic fibrosis images. We demonstrate that VGG-16 features perform best, with a maximum agreement of 82%. In addition, due to limited dimensionality, Tamura features for unseg-mented images achieve no more than 50% agreement; however, after segmentation, the accuracy of Tamura can reach 78%. In combination with using the deep learning features, we also compare back propagation neural network and sparse coding classifiers to the typical SVM classifier with polynomial kernel function. The result shows that neural network and sparse coding classifiers outperform SVM in most cases. Only with insufficient training samples does SVM demonstrate higher accuracy.
机译:我们提出了使用机器学习方法来分析胸部X线片检查囊性纤维化的框架。我们将深度学习功能与传统纹理功能的代表性功能进行了比较。具体来说,我们分别采用基于VGG-16的深度学习功能,基于Tamura和Gabor过滤器的纹理特征来表示囊性纤维化图像。我们证明了VGG-16功能的性能最佳,最大一致性为82%。此外,由于尺寸的限制,用于未分割图像的Tamura功能实现的一致性不超过50%;但是,分割后,田村的准确性可以达到78%。结合使用深度学习功能,我们还将反向传播神经网络和稀疏编码分类器与具有多项式核函数的典型SVM分类器进行了比较。结果表明,在大多数情况下,神经网络和稀疏编码分类器的性能优于SVM。只有在训练样本不足的情况下,SVM才能显示出更高的准确性。

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