Abstract

BackgroundTuberculosis (TB) is one of the most infectious diseases that can be fatal. Its early diagnosis and treatment can significantly reduce the mortality rate. In the literature, several computer-aided diagnosis (CAD) tools have been proposed for the efficient diagnosis of TB from chest radiograph (CXR) images. However, the majority of previous studies adopted conventional handcrafted feature-based algorithms. In addition, some recent CAD tools utilized the strength of deep learning methods to further enhance diagnostic performance. Nevertheless, all these existing methods can only classify a given CXR image into binary class (either TB positive or TB negative) without providing further descriptive information.ObjectiveThe main objective of this study is to propose a comprehensive CAD framework for the effective diagnosis of TB by providing visual as well as descriptive information from the previous patients’ database.MethodsTo accomplish our objective, first we propose a fusion-based deep classification network for the CAD decision that exhibits promising performance over the various state-of-the-art methods. Furthermore, a multilevel similarity measure algorithm is devised based on multiscale information fusion to retrieve the best-matched cases from the previous database.ResultsThe performance of the framework was evaluated based on 2 well-known CXR data sets made available by the US National Library of Medicine and the National Institutes of Health. Our classification model exhibited the best diagnostic performance (0.929, 0.937, 0.921, 0.928, and 0.965 for F1 score, average precision, average recall, accuracy, and area under the curve, respectively) and outperforms the performance of various state-of-the-art methods.ConclusionsThis paper presents a comprehensive CAD framework to diagnose TB from CXR images by retrieving the relevant cases and their clinical observations from the previous patients’ database. These retrieval results assist the radiologist in making an effective diagnostic decision related to the current medical condition of a patient. Moreover, the retrieval results can facilitate the radiologists in subjectively validating the CAD decision.

Highlights

  • According to a World Health Organization (WHO) report, tuberculosis (TB) is a major global health problem that causes severe medical conditions among millions of people annually

  • In our work, we proposed an ensemble of shallow convolutional neural networks (CNNs) (SCNN) and deep CNN (DCNN) models as shown in Figure 2 to extract low- and high-level features, respectively

  • The SZ data set is collected from the Shenzhen No 3 People’s Hospital in Shenzhen, Guangdong Providence, China. This data set includes a total of 326 normal and 336 abnormal CXR images, which include different types of abnormalities related to pulmonary TB

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Summary

Introduction

According to a World Health Organization (WHO) report, tuberculosis (TB) is a major global health problem that causes severe medical conditions among millions of people annually. It ranks along with the HIV as a leading cause of mortality worldwide [1]. It has become cheaper and easier to use with the advent of digital chest radiography [5] All these diagnostic tests are assessed by specialized radiologists, who must expend significant time and effort to make an accurate diagnostic decision. All these existing methods can only classify a given CXR image into binary class (either TB positive or TB negative) without providing further descriptive information

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