颗粒沉积
剂量学
呼吸道
粒子(生态学)
沉积(地质)
呼吸系统
肺
纳米颗粒
化学
材料科学
生物医学工程
病理
纳米技术
气溶胶
医学
核医学
生物
内科学
生态学
古生物学
有机化学
沉积物
作者
Bahman Asgharian,Owen Price,Michael J. Oldham,Lung‐Chi Chen,Eric L. Saunders,Terry Gordon,Vladimir B. Mikheev,Kevin R. Minard,Justin Teeguarden
标识
DOI:10.3109/08958378.2014.935535
摘要
Comparing effects of inhaled particles across rodent test systems and between rodent test systems and humans is a key obstacle to the interpretation of common toxicological test systems for human risk assessment. These comparisons, correlation with effects and prediction of effects, are best conducted using measures of tissue dose in the respiratory tract. Differences in lung geometry, physiology and the characteristics of ventilation can give rise to differences in the regional deposition of particles in the lung in these species. Differences in regional lung tissue doses cannot currently be measured experimentally. Regional lung tissue dosimetry can however be predicted using models developed for rats, monkeys, and humans. A computational model of particle respiratory tract deposition and clearance was developed for BALB/c and B6C3F1 mice, creating a cross-species suite of available models for particle dosimetry in the lung. Airflow and particle transport equations were solved throughout the respiratory tract of these mice strains to obtain temporal and spatial concentration of inhaled particles from which deposition fractions were determined. Particle inhalability (Inhalable fraction, IF) and upper respiratory tract (URT) deposition were directly related to particle diffusive and inertial properties. Measurements of the retained mass at several post-exposure times following exposure to iron oxide nanoparticles, micro- and nanoscale C60 fullerene, and nanoscale silver particles were used to calibrate and verify model predictions of total lung dose. Interstrain (mice) and interspecies (mouse, rat and human) differences in particle inhalability, fractional deposition and tissue dosimetry are described for ultrafine, fine and coarse particles.
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