论文标题

从印度胸部X射线进行结核病自动筛查的深度学习:分析和更新

Deep Learning for Automated Screening of Tuberculosis from Indian Chest X-rays: Analysis and Update

论文作者

Singh, Anushikha, Lall, Brejesh, Panigrahi, B. K., Agrawal, Anjali, Agrawal, Anurag, Thangakunam, Balamugesh, Christopher, DJ

论文摘要

背景和目标:结核病(TB)是一个重大的公共卫生问题,是全球死亡的主要原因。可以通过早期诊断和成功治疗结核病患者来避免数百万人的死亡。对结核病的自动诊断具有巨大的潜力,可以帮助医学专家加快诊断和改善其诊断,尤其是在像印度这样的发展中国家,那里的医学专家和放射科医生缺乏。迄今为止,已经提出了几种基于深度学习的方法来自动检测胸部X光片TB。但是,在印度胸部X光片数据集上,其中一些方法的性能是次优的,这可能是由于与其他国家相比,印度受试者胸部X光片的肺质地不同。因此,在印度数据集上进行准确和自动诊断的深度学习仍然是研究的重要主题。方法:拟议的工作探讨了在印度胸部X射线图像中诊断结核病的卷积神经网络(CNN)的性能。三种不同的预训练的神经网络模型Alexnet,Googlenet和Resnet用于将胸部X射线图像分类为健康或结核病感染。提出的方法不需要任何预处理技术。此外,其他作品使用预训练的NN作为制作功能的工具,然后应用标准分类技术。但是,我们尝试从胸部X射线对TB进行基于NN模型的端到端诊断。放射科医生也可以在大型数据集筛选中使用所提出的可视化工具。结果:拟议的方法达到了93.40%的精度,对印度人群的诊断结核病的敏感性为98.60%。结论:还针对文献中描述的技术进行了测试。所提出的方法的表现优于印度和深圳数据集的最先进状态。

Background and Objective: Tuberculosis (TB) is a significant public health issue and a leading cause of death worldwide. Millions of deaths can be averted by early diagnosis and successful treatment of TB patients. Automated diagnosis of TB holds vast potential to assist medical experts in expediting and improving its diagnosis, especially in developing countries like India, where there is a shortage of trained medical experts and radiologists. To date, several deep learning based methods for automated detection of TB from chest radiographs have been proposed. However, the performance of a few of these methods on the Indian chest radiograph data set has been suboptimal, possibly due to different texture of the lungs on chest radiographs of Indian subjects compared to other countries. Thus deep learning for accurate and automated diagnosis of TB on Indian datasets remains an important subject of research. Methods: The proposed work explores the performance of convolutional neural networks (CNNs) for the diagnosis of TB in Indian chest x-ray images. Three different pre-trained neural network models, AlexNet, GoogLenet, and ResNet are used to classify chest x-ray images into healthy or TB infected. The proposed approach does not require any pre-processing technique. Also, other works use pre-trained NNs as a tool for crafting features and then apply standard classification techniques. However, we attempt an end to end NN model based diagnosis of TB from chest x-rays. The proposed visualization tool can also be used by radiologists in the screening of large datasets. Results: The proposed method achieved 93.40% accuracy with 98.60% sensitivity to diagnose TB for the Indian population. Conclusions: The performance of the proposed method is also tested against techniques described in the literature. The proposed method outperforms the state of art on Indian and Shenzhen datasets.

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