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Chest X-Ray Analysis of Tuberculosis by Deep Learning with Segmentation and Augmentation

机译:肺部疾病的X线胸透分析

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The results of chest X-ray (CXR) analysis of 2D images to get the statistically reliable predictions (availability of tuberculosis) by computer-aided diagnosis (CADx) on the basis of deep learning are presented. They demonstrate the efficiency of lung segmentation, lossless and lossy data augmentation for CADx of tuberculosis by deep convolutional neural network (CNN) applied to the small and not well-balanced dataset even. CNN demonstrates ability to train (despite overfitting) on the pre-processed dataset obtained after lung segmentation in contrast to the original not-segmented dataset. Lossless data augmentation of the segmented dataset leads to the lowest validation loss (without overfitting) and nearly the same accuracy (within the limits of standard deviation) in comparison to the original and other pre-processed datasets after lossy data augmentation. The additional limited lossy data augmentation results in the lower validation loss, but with a decrease of the validation accuracy. In conclusion, besides the more complex deep CNNs and bigger datasets, the better progress of CADx for the small and not well-balanced datasets even could be obtained by better segmentation, data augmentation, dataset stratification, and exclusion of non-evident outliers.
机译:提出了在深度学习的基础上通过计算机辅助诊断(CADx)对2D图像进行胸部X射线(CXR)分析以得到统计上可靠的预测(结核病的可用性)的结果。他们证明了通过深度卷积神经网络(CNN)将肺部分割,无损和无损数据增强用于肺结核CADx的效率,甚至适用于较小且不均衡的数据集。与原始的非分段数据集相比,CNN证明了在肺分割后获得的预处理数据集上进行训练(尽管过拟合)的能力。与有损数据扩充后的原始数据集和其他预处理数据集相比,分段数据集的无损数据扩充导致最低的验证损失(无过度拟合)和几乎相同的准确性(在标准差的范围内)。额外的有限的有损数据增加会导致较低的验证损失,但会降低验证准确性。总之,除了更复杂的深CNN和更大的数据集外,对于较小且不均衡的数据集,甚至可以通过更好的分割,数据扩充,数据集分层以及排除明显的异常值来获得CADx的更好进展。

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