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Automatic detection of tuberculosis related abnormalities in Chest X-ray images using hierarchical feature extraction scheme

机译:使用等级特征提取方案自动检测胸X射线图像中结核相关异常

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Machine learning techniques have been widely used for abnormality detection in medical images. Chest X-ray images (CXR) are among the non-invasive diagnostic tools used to detect various disease pathologies. The ambiguous anatomical structure of soft tissues is one of the major challenges for segregating normal and abnormal images. The main objective of this study is to mimic the expert radiologist's interpretation procedure in computer-aided diagnosis (CAD) systems. We propose an automatic technique for detection of abnormal CXR images containing one or more pathologies like pleural effusion, infiltration, fibrosis, hila enlargement, dense consolidation, etc. due to tuberculosis (TB). The proposed abnormality detection technique is based on the hierarchical feature extraction scheme in which the features are used in two-level of hierarchy to categorize healthy and unhealthy groups. In level one the handcrafted geometrical features like shape, size, eccentricity, perimeter, etc. and in level 2 traditional first order statistical feature along with texture features like energy, entropy, contrast, correlation, etc. are extracted from segmented lung-fields. Further, a supervised classification approach is employed on the extracted features to detect normal and abnormal CXR images. The performance of the algorithm is validated on a total of 800 CXR images from two public datasets, namely the Montgomery set and Shenzhen set. The obtained results (accuracy = 95.60 +/- 5.07% and area under curve (AUC) = 0.95 +/- 0.06 for Montgomery collection, and accuracy = 99.40 +/- 1.05% and AUC = 0.99 +/- 0.01 for Shenzhen collection) shows the promising performance of the proposed technique for TB detection compared to the existing state of the art approaches. Further, the obtained results are statistically validated using Friedman post-hoc multiple comparison methods, which confirms the significance of the proposed method. (c) 2020 Elsevier Ltd. All rights reserved.
机译:机器学习技术已广泛用于医学图像中的异常检测。胸部X射线图像(CXR)是用于检测各种疾病病理的非侵入性诊断工具中。软组织的含糊不清的解剖结构是对正常和异常图像进行分离的主要挑战之一。本研究的主要目标是模仿计算机辅助诊断(CAD)系统中的专家放射科医师的解释程序。我们提出了一种自动检测含有一种或多种病理的异常CXR图像的技术,含有一种或多种病理,如胸膜积液,浸润,纤维化,HILA扩大,致密固结等。由于结核病(TB)。所提出的异常检测技术基于分层特征提取方案,其中该特征用于两级层次结构以分类健康和不健康的群体。在一级中,手工制造的几何特征,如形状,大小,偏心,周长等,以及2级传统的一阶统计特征以及能量,熵,对比度,相关等的纹理特征,从分段肺场提取。此外,在提取的特征上采用监督分类方法以检测正常和异常的CXR图像。算法的性能总共验证了来自两个公共数据集的800个CXR图像,即蒙哥马利集合和深圳套装。获得的结果(精确率= 95.60 +/- 5.07%,曲线(AUC)= 0.95 +/- 0.06,精度= 99.40 +/- 1.05%,AUC = 0.99 +/- 0.01为深圳收集)显示与现有技术的现有状态相比,所提出的TB检测技术的有希望的性能。此外,使用的结果使用弗里德曼后的多种比较方法进行统计验证,这证实了该方法的重要性。 (c)2020 elestvier有限公司保留所有权利。

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