Open Access
Open access
Atmosphere, volume 11, issue 2, pages 137

Prediction of Aerosol Deposition in the Human Respiratory Tract via Computational Models: A Review with Recent Updates

Publication typeJournal Article
Publication date2020-01-26
Journal: Atmosphere
scimago Q2
SJR0.627
CiteScore4.6
Impact factor0.9
ISSN20734433, 15983560, 00046973
Atmospheric Science
Environmental Science (miscellaneous)
Abstract

The measurement of deposited aerosol particles in the respiratory tract via in vivo and in vitro approaches is difficult due to those approaches’ many limitations. In order to overcome these obstacles, different computational models have been developed to predict the deposition of aerosol particles inside the lung. Recently, some remarkable models have been developed based on conventional semi-empirical models, one-dimensional whole-lung models, three-dimensional computational fluid dynamics models, and artificial neural networks for the prediction of aerosol-particle deposition with a high accuracy relative to experimental data. However, these models still have some disadvantages that should be overcome shortly. In this paper, we take a closer look at the current research trends as well as the future directions of this research area.

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