| Literature DB >> 33273648 |
Abstract
For rebooting economic activities in the ongoing COVID-19 pandemic scenario, it is important to pay detailed attention to infection transfer mechanisms during interaction of people in enclosed environments. Utmost concern is the possibility of aerosol mediated infection transfer, which is largely governed by the size distributions of virus laden droplets, termed as virusols in this work, ejected from humans. We expand on the well-known theory of Poisson fluctuations which acts as statistical barrier against formation of virusols. Analysis suggests that for viral loads < 2 × 105 RNA copies/mL, often corresponding to mild-to-moderate cases of COVID-19, droplets of diameter < 20 µm at the time of emission (equivalent to ~ 10 µm desiccated residue diameter) are unlikely to be of consequence in carrying infections. Cut-off diameters below which droplets will be practically free of contamination, are presented as a function of viral loading. The median diameters of virus laden polydisperse droplet distributions will be 1.5 to 20 times higher depending upon the geometric standard deviation. The studies have implications to risk assessment as well as residence time estimates of airborne infections in indoor environments. Additionally, it will be also helpful for performance evaluation of sanitization and control technologies to mitigate infection risks in workplaces.Entities:
Year: 2020 PMID: 33273648 PMCID: PMC7713050 DOI: 10.1038/s41598-020-78110-x
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Virus load in various biological fluids among various categories.
| References | Number/Type of samples | Number of individuals and category | Median Concentration, copies/mL | Remarks |
|---|---|---|---|---|
| Hirose et al. (2016)[ | – | 22 | Sputum—2.4 × 107 (mean value) | Range—8.9 × 104–2.7 × 108 copies/mL |
| To et al. (2020)[ | 173 samples | 23 | Range—103–3.2 × 107 copies/mL Initial concentration of 3 patients were 10 copies/mL | |
| 13—mild | Initial—1.3 × 105 Peak—2.0 × 105 | |||
| 10—severe | Initial—1.5 × 106 Peak—8.1 × 106 | |||
| Pan et al. (2020)[ | 110 samples | 80 | Throat—7.6 × 104 Sputum-7.52 × 105 | Range—6.4 × 102–1.3 × 1011 copies/mL |
| Zheng et al. (2020)[ | 1846 respiratory samples (sputum & saliva) | 96 | Range—102–107 copies/mL | |
| 22—mild | 104 | |||
| 74—severe | 105 | |||
| Zou et al. (2020)[ | Nasal and throat samples | 18 1—asymptomatic 3—severe 14—mild-to-moderate | Peak—~ 108 | Asymptomatic case (Nasal—~ 105–107 copies/mL; Throat—~ 104 copies/mL) |
| Wolfel et al. (2020)[ | Sputum samples | 9 | 7 × 106 | Maximum–2.4 × 109 copies/mL |
Lognormal size distribution data.
| References | Remarks | Count median diameter (CMD)/geometric mean (GM), μm | Geometric standard deviation (GSD) | Total number/number concentration |
|---|---|---|---|---|
| Lindsley et al. (2012)[ | Unimodal fit | CMD—0.63 VMD—2.44 | 1.54–1.83 1.66–2.31 | 16.8–29.6 # cm−3 |
| Nicas et al. (2005)[ | Duguid’s cough data | GM—14 | 2.6 | 5 × 103 # |
| Duguid’s sneeze data | GM—8.1 | 2.3 | 1 × 106 # | |
| Loudon and Roberts’s cough data—unimodal fit | GM—24 | 8.4 | 4.7 × 102 # | |
| Loudon and Roberts’s cough data—bimodal fit | GM1—9.8 (71%) GM2—160 (29%) | GSD1—9 GSD2—1.7 | 4.7 × 102 # | |
| Johnson et al. (2011)[ | Trimodal distribution | CMD1–1.6; CMD2–1.7; CMD3–123 | GSD1—1.25; GSD2—1.68; GSD3—1.84 | Cn1–0.09 # cm−3; Cn2–0.12 # cm−3; Cn3–0.02 # cm−3; Total—0.22 # cm−3 |
Droplet size distribution data for different expiratory activities from Morawska et al. (2009)[37].
| Mid-point droplet diameter, μm | Droplet number concentration, # cm-3 | |||
|---|---|---|---|---|
| Speaking | Breathing | Whispered counting | Voice counting | |
| 0.8 | 0.751 | 0.084 | 0.236 | 0.110 |
| 1.8 | 0.139 | 0.009 | 0.068 | 0.014 |
| 3.5 | 0.139 | 0.003 | 0.007 | 0.004 |
| 5.5 | 0.059 | 0.002 | 0.011 | 0.002 |
Figure 1Fraction of virus-laden droplets formed from the ejected droplets, as a function of its size and viral load in the fluid.
Figure 2Smallest droplet diameter likely to be contaminated as a function of viral load in ejecta.
Figure 3Virusol fraction of lognormally distributed ejecta droplets as a function of viral load in patients.
Figure 4Virusol size-distribution for different propensity parameter, .
Figure 5Variation of median size of virus-laden droplets (Virusols) relative to the original droplets with respect to propensity parameter for different dispersity measure ( of droplets).