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Ensemble learning based automatic detection of tuberculosis in chest X-ray images using hybrid feature descriptors

机译:整体学习基础的自动检测使用混合肺结核在胸部x光图像特征描述符

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摘要

Tuberculosis (TB) remains one of the major health problems in modern times with a high mortality rate. While efforts are being made to make early diagnosis accessible and more reliable in high burden TB countries, digital chest radiography has become a popular source for this purpose. However, the screening process requires expert radiologists which may be a potential barrier in developing countries. A fully automatic computer-aided diagnosis system can reduce the need of trained personnel for early diagnosis of TB using chest X-ray images. In this paper, we have proposed a novel TB detection technique that combines hand-crafted features with deep features (convolutional neural network-based) through Ensemble Learning. Handcrafted features were extracted via Gabor Filter and deep features were extracted via pre-trained deep learning models. Two publicly available datasets namely (i) Montgomery and (ii) Shenzhen were used to evaluate the proposed system. The proposed methodology was validated with a k-fold cross-validation scheme. The area under receiver operating characteristics curves of 0.99 and 0.97 were achieved for Shenzhen and Montgomery datasets respectively which shows the superiority of the proposed scheme.
机译:结核病仍然是主要的健康问题问题在现代高死亡率率。诊断可访问和更可靠的高结核病负担国家,数字胸片已经成为一个受欢迎的来源。然而,筛选过程需要专家放射科医生可能是一个潜在的障碍发展中国家。计算机辅助诊断系统可以减少为早期诊断需要训练有素的人员结核病使用胸部x光图像。提出了一种新型结核病检测技术结合手工特性与深度特性(卷积神经网络)整体学习。通过伽柏过滤和深度特征提取通过提取pre-trained深度学习模型。两个公开数据集即(我)蒙哥马利和(2)深圳评估拟议的系统。k-fold方法验证交叉验证方案。0.99和0.97的操作特征曲线是深圳和蒙哥马利吗数据集分别显示了优越性提议的方案。

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