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An Original Neural Network for Pulmonary Tuberculosis Diagnosis in Radiographs

机译:X线片中诊断肺结核的原始神经网络

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Tuberculosis (TB) is a widespread and highly contagious disease that may lead serious harm to patient health. With the development of neural network, there is increasingly attention to apply deep learning on TB diagnosis. Former works validated the feasibility of neural networks in this task, but still suffer low accuracy problem due to lack of samples and complexity of radiograph information. In this work, we proposed an end-to-end neural network system for TB diagnosis, combining preprocessing, lung segmentation, feature extraction and classification. We achieved accuracy of 0.961 in our labeled dataset, 0.923 and 0.890 on Shenzhen and Montgomery Public Dataset respectively, demonstrating our work outperformed the state-of-the-art methods in this area.
机译:结核病(TB)是一种广泛传播且具有高度传染性的疾病,可能对患者的健康造成严重伤害。随着神经网络的发展,将深度学习应用于结核病诊断越来越受到关注。以前的工作验证了神经网络在此任务中的可行性,但由于缺少样本和射线照相信息的复杂性,仍然遭受精度低的问题。在这项工作中,我们提出了一种用于结核病诊断的端到端神经网络系统,该系统结合了预处理,肺分割,特征提取和分类。我们在标记数据集中的准确性达到0.961,在深圳和蒙哥马利公共数据集上分别达到0.923和0.890,表明我们的工作表现优于该领域的最新方法。

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