Abstract

Chronic obstructive pulmonary disease (COPD) is associated with morphologic abnormalities of airways with various patterns and severities. However, the way of effectively representing these abnormalities is lacking and whether these abnormalities enable to distinguish COPD from healthy controls is unknown. We propose to use deep convolutional neural network (CNN) to assess 3D lung airway tree from the perspective of computer vision, thereby constructing models of identifying COPD. After extracting airway trees from CT images, snapshots of their 3D visualizations are obtained from ventral, dorsal and isometric views. Using snapshots of each view, one deep CNN model is constructed and further optimized by Bayesian optimization algorithm to indentify COPD. The majority voting of three views presents the final prediction. Finally, the class-discriminative localization maps have been drawn to visually explain the CNNs’ decisions. The models trained with single view (ventral, dorsal and isometric) of colorful snapshots present the similar accuracy (ACC) (86.8%, 87.5% and 86.7%) and the model after voting achieves the ACC of 88.2%. The ACC of the final voting model using gray and binary snapshots achieves 88.6% and 86.4%, respectively. Our specially designed CNNs outperform the typical off-the-shelf CNNs and the pre-trained CNNs with fine tuning. The class-discriminative regions of COPD are mainly located at central airways; however, regions in HC are scattering and located at peripheral airways. It is feasible to identify COPD using snapshots of 3D lung airway tree extracted from CT images via deep CNN. The CNNs can represent the abnormalities of airway tree in COPD and make accurate CT-based diagnosis of COPD.

Highlights

  • Chronic obstructive pulmonary disease (COPD) is a common respiratory disease with a trend of growing prevalence globally [1]

  • This study has demonstrated that the convolutional neural network (CNN) can represent the abnormalities of airway tree in COPD and make accurate computed tomography (CT)-based diagnosis of COPD

  • It is feasible to identify COPD using snapshots of 3D lung airway tree extracted from CT images via deep CNN

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Summary

Introduction

Chronic obstructive pulmonary disease (COPD) is a common respiratory disease with a trend of growing prevalence globally [1]. The estimated global prevalence of COPD in 2015 is about 174 million [2]. The associate editor coordinating the review of this manuscript and approving it for publication was Chao Zuo. leading cause of death (3 million every year) and a major cause of disability [3]. Extensive researches are urgently demanded to improve COPD outcomes through early identification and exploration of biomarkers for phenotype diagnosis and personalized therapy [4], [5]. COPD is characterized by persistent and incompletely reversible airflow limitation and gas trapping caused by multiple pathological alternations including emphysematous.

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