Abstract

Lung diseases can result in acute breathing problems and prevent the human body from acquiring enough oxygen. These diseases, such as pneumonia (P), pleural effusion (Ef), lung cancer, pneumothorax (Pt), pulmonary fibrosis (F), infiltration (In) and emphysema (E), adversely affect airways, alveoli, blood vessels, pleura and other parts of the respiratory system. The death rates of P and lung cancer are higher than those of other typical lung diseases. In visualization examination, chest radiography, such as anterior-posterior or lateral image viewing, is a straightforward approach used by clinicians/radiologists to diagnose and locate possible lung abnormalities rapidly. However, a chest X-ray image of patients may show multiple abnormalities associated with coexisting conditions, such as P, E, F, Pt, atelectasis, lung cancer or surgical interventions, which further complicate diagnosis. In addition, poor-quality X-ray images and manual inspection have limitations in digital image-automated classification. Hence, this study intends to propose a multilayer machine vision classifier to automatically identify the possible class of lung diseases within a bounding region of interest (ROI) on a chest X-ray image. For digital image texture analysis, a two-dimensional (2D) fractional-order convolution (FOC) operation with a fractional-order parameter, $v =0.3-0.5$ , is used to enhance the symptomatic feature and remove unwanted noises. Then, maximum pooling is performed to reduce the dimensions of feature patterns and accelerate complex computations. A multilayer machine vision classifier with radial Bayesian network and gray relational analysis is used to screen subjects with typical lung diseases. Anterior-posterior chest X-ray images from the NIH chest X-ray database (NIH Clinical Center) are enrolled. For digital chest X-ray images, with $K$ -fold cross-validation, the proposed multilayer machine vision classifier is applied to facilitate the diagnosis of typical lung diseases on specific bounding ROIs, as promising results with mean recall (%), mean precision (%), mean accuracy (%) and mean F1 score of 98.68%, 82.42%, 83.57% and 0.8981, respectively, for assessing the performance of proposed multilayer classifier for rapidly screening lung lesions on digital chest X-ray images.

Highlights

  • Lung diseases refer to several types of diseases or disorders, such as infections, pneumonia (P), tuberculosis, pulmonary edema and lung cancer, which severely affect pulmonaryThe associate editor coordinating the review of this manuscript and approving it for publication was Shiping Wen .functions in one or both sides of the lungs and can lead to breathing problems or acute respiratory failure

  • The subjects were classified into two groups: (1) 100 subjects in the female group and (2) 130 subjects in the male group; their related data are presented in Table 1 [35]

  • The application program was used with a graphics processing unit (GPU) on a tablet PC (Intel R Xeon R, CPU E5-2620, v4, 2.1 GHz and 64 GB of RAM; GPU: NVIDIA Quadro P620, 64-bit Windows 10.0 operating system), which enables faster digital image processing and disease screening

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Summary

Introduction

Lung diseases refer to several types of diseases or disorders, such as infections, pneumonia (P), tuberculosis, pulmonary edema and lung cancer, which severely affect pulmonary. Functions in one or both sides of the lungs and can lead to breathing problems or acute respiratory failure These diseases adversely affect airways, alveoli, blood vessels, pleura, interstitium and other parts of the respiratory system. P is a lung infection disease that causes inflammation in the alveoli; fluid or pus fills the alveoli, and their ability to hold air is reduced. Approximately 25% of lung cancers are not attributable to smoking, the incidence of lung cancer in nonsmokers has increased, and more than 50% of cases occur in nonsmoking females [6], [7]. The common causes of pleural effusion (Ef) are heart failure, P, pulmonary hypertension, pleuropulmonary malignancy and chest surgery; excessive amounts of fluid can affect breathing, which can be divided into three Ef sizes: small (1,000 mL) effusion [8]–[11]

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