Difference between revisions of "Covid 19"

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3. [https://www.pnas.org/content/early/2020/06/09/2008176117 https://science.sciencemag.org/content/368/6496/1274/tab-pdf A noncompeting pair of human neutralizing antibodies block COVID-19 virus binding to its receptor ACE2];
 
3. [https://www.pnas.org/content/early/2020/06/09/2008176117 https://science.sciencemag.org/content/368/6496/1274/tab-pdf A noncompeting pair of human neutralizing antibodies block COVID-19 virus binding to its receptor ACE2];
  
4. [Genomic determinants of pathogenicity in SARS-CoV-2 and other human coronaviruses];
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4. [https://www.pnas.org/content/early/2020/06/09/2008176117.abstract?etoc Genomic determinants of pathogenicity in SARS-CoV-2 and other human coronaviruses];
  
 
5. [https://www.cell.com/cell/fulltext/S0092-8674(20)30610-3#.XtUNRAVlzFA.twitter Targets of T Cell Responses to SARS-CoV-2 Coronavirus in Humans with COVID-19 Disease and Unexposed Individuals];
 
5. [https://www.cell.com/cell/fulltext/S0092-8674(20)30610-3#.XtUNRAVlzFA.twitter Targets of T Cell Responses to SARS-CoV-2 Coronavirus in Humans with COVID-19 Disease and Unexposed Individuals];
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24. [https://science.sciencemag.org/content/early/2020/06/15/science.abd0831?utm_campaign=fr_sci_2020-06-15&et_rid=17151711&et_cid=3366486 Antibody cocktail to SARS-CoV-2 spike protein prevents rapid mutational escape seen with individual antibodies];
 
24. [https://science.sciencemag.org/content/early/2020/06/15/science.abd0831?utm_campaign=fr_sci_2020-06-15&et_rid=17151711&et_cid=3366486 Antibody cocktail to SARS-CoV-2 spike protein prevents rapid mutational escape seen with individual antibodies];
 
  
 
==Lectures and talks==
 
==Lectures and talks==

Revision as of 09:40, 17 June 2020

Contents

Epidemiological models

Authors Publication date Geographical region Type Description Predictions
Chen et al[1] 28.01.2020 Wuhan, China SEIR (several species) Model described virus transmission between bets (possible source), unknown host and human. For every species SEIR model is implemented. Simplified model with only human species is also considered. The value of R0 was estimated of 2.30 from reservoir to person and 3.58 from person to person which means that the expected number of secondary infections that result from introducing a single infected individual into an otherwise susceptible population was 3.58.
Wu et al.[2] 31.01.2020 Wuhan / China SEIR Model was created to reflect data obtained in Wuhan, then the model was extrapolated on China overall, taking into account cities connection with Wuhan and major routes of air and train transport R0 for 2019-nCoV is 2.68, 75 815 individuals have been infected in Wuhan as of Jan 25, 2020. The epidemic doubling time was 6.4 days. Chongqing, Beijing, Shanghai, Guangzhou, and Shenzhen had imported 461, 113, 98, 111, and 80 infections from Wuhan, respectively. Epidemics are already growing exponentially in multiple major cities of China with a lag time behind the Wuhan of about 1–2 weeks. On the present trajectory, 2019-nCoV could be about to become a global epidemic in the absence of mitigation.To possibly succeed, substantial, even draconian measures that limit population mobility should be seriously and immediately considered in affected areas.
Danon et al.[3] 14.02.2020 England and Whales SEIR+Spatial Authors used preexisted spatial metapopulation model to describe population movement between regions in England and Whales and standard SEIR model to describe Covid-19 spread in each particular region. CoVID-19 outbreak will peak 126 to 147 days (~4 months) after the start of person-to-person transmission in England and Wales in the absence of controls, epidemic peak is predicted in June.
Westerhoff and Kolodkin[4] 30.03.2020 Not specified modified SEIR Model distinguished between tested and non-testes subjects and takes into consideration adaptive government-induces social distancing policy Strategies aiming for herd immunity are unacceptable and that a much stronger lockdown is required. Results suggest that the measures taken by many policy makers will be insufficient to quench the epidemic. Some Western policy makers engage in an adaptive lock down strategy but one of insufficient strength: model results suggest that their slowly increasing lock down strategy will not be effective. What is necessary is a strong lock down, which may then be softened as the number of infected individuals begins to decrease with time.
Tutu.ru[5] 30.03.2020 Russian Federation SIR + Spatial Model uses dataset acquired by tutu.ru for movement statistics between nearly 170 000 Russian cities, villages and other inhabited localities. It investigates effects of restrictions on transition between cities on Covid19 spread. For each city simple SIR model is used. Due to highly uneven population density (high in the western part and low in the eastern) it is possible to change epidemic timing by restricting movement between main transport hubs which will probably be economically justified in the future.
Chang et al.[6] 02.04.2020 Australia Agent-based AceMod (The Australian Census-based Epidemic Model), containing 24 million agents, each of which represents individual with his own characteristics (gender, occupation, susceptibility) and social context. AceMod was previously developed and validated for simulations of pandemic influenza in Australia. Currently it was calibrated to describe covid-19 pandemic. Effectiveness of school closures is limited, producing a two-week delay in epidemic peak, without a significant impact on the magnitude of the peak, in terms of incidence or prevalence. The temporal benefit of the two-week delay may be offset not only by logistical complications, but also by some increases in the fractions of both children and older adults during the period around the incidence peak. Social distancing (SD) strategy showed no benefit for lower levels of compliance (at 70% or less). Increasing a compliance level just by 10%,from 70% to 80%, may effectively control the spread of COVID-19 in Australia (during the suppression period).


Web apps for Covid-19 simulations and data

1. Covid-19 statistics and forecast developed by Biouml.Ru;

2. COVID-19 Scenario Analysis Tool (MRC Centre for Global Infectious Disease Analysis, Imperial College London);

3. MIT simulator of Covid-19;

4. A web application serves as a planning tool for COVID-19 outbreaks in communities across the world;

5. Los Alamos National Lab prediction;

6. University of Melburn prediction;

7. REINA (Realistic Epidemic Interaction Network Agent Model);

8. German Covid simulator;

9. Open Source QSP model describing SARS-CoV-2 virus and host cell life cycles, immune response and therapeutic treatments;

10. Sberindex;

11. Moscow map for coronavirus;

12. Web-based viewer for 3D visualization and analysis of the SARS-CoV-2 protein structures with respect to the CoV-2 mutational patterns;


Covid-19 statistics

1. JH Institute data;

2. UniOxford statistics and research;

3. Worldmeter;

4. Статистика по России;


Useful articles

1. Coronavirus research updates ;

2. A Global Effort to Define the Human Genetics f Protective Immunity to SARS-CoV-2 Infection;

3. https://science.sciencemag.org/content/368/6496/1274/tab-pdf A noncompeting pair of human neutralizing antibodies block COVID-19 virus binding to its receptor ACE2;

4. Genomic determinants of pathogenicity in SARS-CoV-2 and other human coronaviruses;

5. Targets of T Cell Responses to SARS-CoV-2 Coronavirus in Humans with COVID-19 Disease and Unexposed Individuals;

6. A Novel Bat Coronavirus Closely Related to SARSCoV-2 Contains Natural Insertions at the S1/S2 Cleavage Site of the Spike Protein;

7. Temporal dynamics in viral shedding and transmissibility of COVID-19;

8. Seroprevalence of SARS-CoV-2 in Hong Kong and in residents evacuated from Hubei province, China: a multicohort study;

9. Cross-reactive Antibody Response between SARS-CoV-2 and SARS-CoV Infections;

10. These Scenarios Show What a Second Wave of COVID-19 Could Look Like;

11. Herd Immunity: Understanding COVID-19;

12. The race for coronavirus vaccines: a graphical guide;

13. SARS-CoV-2 Receptor ACE2 Is an Interferon-Stimulated Gene in Human Airway Epithelial Cells and Is Detected in Specific Cell Subsets across Tissues;

14. Imbalanced Host Response to SARS-CoV-2 Drives Development of COVID-19;

15. Reducing transmission of SARS-CoV-2;

16. Epidemiological and Clinical Characteristics of COVID-19 in Adolescents and Young Adults;

17. Positive COVID-19 Test Doesn't Automatically Equate to Virulence;

18. Why herd immunity to COVID-19 is reached much earlier than thought;

19. A study on infectivity of asymptomatic SARS-CoV-2 carriers;

20. Why do some COVID-19 patients infect many others, whereas most don’t spread the virus at all?;

21. Calibration of individual-based models to epidemiological data: A systematic review

22. Imbalanced Host Response to SARS-CoV-2 Drives Development of COVID-19.

23. Broad neutralization of SARS-related viruses by human monoclonal antibodies;

24. Antibody cocktail to SARS-CoV-2 spike protein prevents rapid mutational escape seen with individual antibodies;

Lectures and talks

1. Ancha Baranova’s channel;

2. Происхождение нового коронавируса. Сергей Нетёсов;

3. Коронавирус: Новые данные. Лекция Сергея Нетёсова;

4. Справилась ли Россия с пандемией коронавируса? С. Нетесов;

5. Маргарита Романенко"Тот самый вирус: все что вы хотели знать о COVID19, но стеснялись спросить";


References

  1. Chen T-M.,Rui J.,Wang Q-P.,Zhao Z., Cui J., Yin L. A mathematical model for simulating the phase-based transmissibility of a novel coronavirus // Infect Dis Poverty 9:24 (2020). doi:https://doi.org/10.1186/s40249-020-00640-3
  2. Wu J.T., Leung K., Leung G.M. Nowcasting and forecasting the potential domestic and international spread of the 2019-nCoV outbreak originating in Wuhan, China: a modelling study // Lancet. 2020. 395: 689–97.doi:https://doi.org/10.1016/S0140-6736(20)30260-9
  3. Danon L., Brooks-Pollock E., Bailey M., Keeling M. A spatial model of CoVID-19 transmission in England and Wales: early spread and peak timing // medRxiv preprint 2020. doi:https://doi.org/10.1101/2020.02.12.20022566
  4. Westerhoff H. V., Kolodkin A.N. Advice from a systems-biology model of the Corona epidemics// medRxiv preprint 2020. doi:https://doi.org/10.1101/2020.03.29.20045039
  5. ttps://github.com/ods-ai-ml4sg/covid19-tutu
  6. Chang S.L., Harding N., Zachreson C., Cliff O.M., Prokopenko M. Modelling transmission and control of the COVID-19 pandemic in Australia // arxiv preprint 2020. doi:arxiv-2003.10218
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