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Analysis of Tuberculosis in Chest Radiographs for Computerized Diagnosis using Bag of Keypoint Features

机译:用keypoint特征分析胸部射线照相的胸瘤表现

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摘要

Chest radiography is the most preferred non-invasive imaging technique for early diagnosis of Tuberculosis (TB). However, lack of radiological expertise in TB detection leads to indiscriminate chest radiograph (CXR) screening. A modest classification approach based on the local image description to detect subtle characteristics of TB using CXRs is highly recommended. In this work, an attempt has been made to classify normal and TB CXR images using Bag of Features (BoF) approach with Speeded-Up Robust Feature (SURF) descriptor. The images are obtained from a public database. Lung fields segmentation is performed using Distance Regularized Level Set (DRLS) formulation. The results of segmentation are validated against the ground truth images using similarity, overlap and area correlation measures. BoF approach with SURF keypoint descriptors is implemented to categorize the images using Multilayer Perceptron (MLP) classifier. The obtained results demonstrate that the DRLS method is able to delineate lung fields from CXR images. The BoF with SURF keypoint descriptor is able to characterize local attributes of normal and TB images. The segmentation results are found to be in high correlation with ground truth. MLP classifier is found to provide high Recall, Specificity (Spec), Accuracy, F-score and Area Under the Curve (AUC) values of 87.7%, 85.9%, 87.8%, 87.6% and 94% respectively between normal and abnormal images. The proposed computer aided diagnostic approach is found to perform better as compared to the existing methods. Thus, the study can be of significant assistance to physicians at the point of care in resource constrained regions.
机译:胸部射线照相是最优选的结核病(TB)的早期诊断的非侵入性成像技术。然而,TB检测中缺乏放射专业知识导致胸部射线照片(CXR)筛选。强烈建议使用基于本地图像描述以检测使用CXRS的TB的微妙特性的适度分类方法。在这项工作中,已经尝试使用具有加速强大功能(SURD)描述符的特征(BOF)方法来分类正常和TB CXR图像。图像是从公共数据库获得的。使用距离正规化水平集(DRL)制剂进行肺部分割。使用相似性,重叠和面积相关措施对地面真理图像进行验证的分割结果。通过多层Perceptron(MLP)分类器来实现具有SURF Keypoint描述符的BOF方法以对图像进行分类。所得结果表明DRLS方法能够从CXR图像描绘肺部。具有SURF KeyPoint描述符的BOF能够表征正常和TB图像的本地属性。发现分割结果与地面真理相关。发现MLP分类器分别在正常和异常图像之间提供87.7%,85.9%,87.8%,87.6%和94%的曲线(AUC)值下的高召回,特异性(规格),精度,F分和面积。找到所提出的计算机辅助诊断方法与现有方法相比,执行更好。因此,该研究对于资源受限区域的护理点可能对医生具有重要援助。

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