Abstract

Respiratory diseases often show no apparent symptoms at their early stages and are usually diagnosed when permanent damages have been made to the lungs. A major site of lung pathogenesis is the small airways, which make it highly challenging to detect using current techniques due to the diseases’ location (inaccessibility to biopsy) and size (below normal CT/MRI resolution). In this review, we present a new method for lung disease detection and treatment in small airways based on exhaled aerosols, whose patterns are uniquely related to the health of the lungs. Proof-of-concept studies are first presented in idealized lung geometries. We subsequently describe the recent developments in feature extraction and classification of the exhaled aerosol images to establish the relationship between the images and the underlying airway remodeling. Different feature extraction algorithms (aerosol density, fractal dimension, principal mode analysis, and dynamic mode decomposition) and machine learning approaches (support vector machine, random forest, and convolutional neural network) are elaborated upon. Finally, future studies and frequent questions related to clinical applications of the proposed aerosol breath testing are discussed from the authors’ perspective. The proposed breath testing has clinical advantages over conventional approaches, such as easy-to-perform, non-invasive, providing real-time feedback, and is promising in detecting symptomless lung diseases at early stages.

Highlights

  • Exposure to environmental and occupational toxins can lead to various respiratory disorders [1,2], such as pneumoconiosis [3], chronic obstructive pulmonary diseases (COPD) [4], and lung cancer [5]

  • We review the recent developments in feature extraction and classification of the exhaled aerosol images to establish the relationship between the images and the underlying airway remodeling

  • We demonstrated that the Dynamic Mode Decomposition (DMD)-random forest (RF) method was sensitive enough to detect structural variations in small airways of 2 mm diameter or less in aerosol fingerprint (AFP) images

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Summary

Introduction

Exposure to environmental and occupational toxins can lead to various respiratory disorders [1,2], such as pneumoconiosis [3], chronic obstructive pulmonary diseases (COPD) [4], and lung cancer [5]. Small airways in deep lungs can be significantly involved in the early course of the pathogenesis before the onset of symptoms [6,7]. Current techniques to detect lung cancer and respiratory diseases include spirometer for pulmonary function tests, X-ray for screening, SPET/PET/CT to identify airway remodeling, and biopsy to evaluate the disease type and extent [14]. These diagnostic tools are reliable in general but are expensive and require professional operations. Some have radiological risks (CT/PET/SPET) and can be invasive (biopsy)

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