Literature DB >> 35831042

Urban monitoring, evaluation and application of COVID-19 listed vaccine effectiveness: a health code blockchain study.

Tao Wang1, Chaoqun Li2, Hongyan Li3, Zheheng Li4.   

Abstract

OBJECTIVE: By using health code blockchain, cities can maximise the use of personal information while maximising the protection of personal privacy in the monitoring and evaluation of the effectiveness of listed vaccines.
DESIGN: This study constructs an urban COVID-19 listed vaccine effectiveness (VE) monitoring, evaluation and application system based on the health code blockchain. This study uses this system and statistical simulation to analyse three urban application scenarios, namely evaluating the vaccination rate (VR) and determining the optimal vaccination strategy, evaluating herd immunity and monitoring the VE on variant. MAIN OUTCOME MEASURES: The primary outcomes first establish an urban COVID-19 listed VE monitoring, evaluation and application system by using the health code blockchain, combined with the dynamic monitoring model of VE, the evaluation index system of VE and the monitoring and evaluation system of personal privacy information use, and then three measures are analysed in urban simulation: one is to take the index reflecting urban population mobility as the weight to calculate the comprehensive VR, the second is to calculate the comprehensive basic reproduction number (R) in the presence of asymptomatic persons, the third is to compare the difference between the observed effectiveness and the true effectiveness of listed vaccines under virus variation.
RESULTS: Combining this system and simulation, this study finds: (1) The comprehensive VR, which is weighted to reflect urban population mobility, is more accurate than the simple VR which does not take into account urban population mobility. Based on population mobility, the algorithm principle of urban optimal vaccination strategy is given. In the simulation of urban listed vaccination involving six regions, programmes 1 and 5 have the best protective effect among the eight vaccination programmes, and the optimal vaccination order is 3-5-2-4-6-1. (2) In the presence of asymptomatic conditions, the basic reproduction number, namely R0*(1-VR*VE), does not accurately reflect the effect of herd immunity, but the comprehensive basic reproduction number (R) should be used. The R is directly proportional to the proportion of asymptomatic people (aw) and the duration of the incubation period (ip), and inversely proportional to the VR, the VE and the number of days transmitted in the ip (k). In the simulation analysis, when symptomatic R0=3, even with aw=0.2, the R decreases to nearly 1 until the VR reaches 95%. When aw=0.8, even when the entire population is vaccinated, namely VR=1, the R is 1.688, and still significantly greater than 1. If the R is to be reduced to 1, the VE needs to be increased to 0.87. (3) This system can more comprehensively and accurately grasp the impact of the variant virus on urban VE. The traditional epidemiological investigation can lose the contacts of infected persons, which leads to the deviation between the observed effectiveness and the true effectiveness. Virus variation aggravates the loss, and then increases the deviation. Simulation case 1 assumes the unvaccinated rate of 0.8, the ongoing VR of 0.1, the completed VR of 0.1 and an average infection rate of 2% for the variant virus. If a vaccine is more than 90% effectiveness against the premutant virus, but only 80% effectiveness against the mutant virus, and because 80% of the unvaccinated people who are not infected are not observed, the observed effectiveness of the vaccine is 91.76%, it will lead to the wrong judgement that the VE against the variant virus is not decreased. Simulation case 2 assumes the unvaccinated rate of 0.8, the ongoing VR of 0.1, the completed VR of 0.1 and an average infection rate of 5% for the variant virus. Simulation finds that the higher the proportion of unvaccinated infected people who are not observed, the lower the estimate of observed effectiveness; and the lower the true effectiveness, the larger the gap between observed effectiveness and true effectiveness. Simulation case 3 assumes the unvaccinated rate of 0.2, the ongoing VR of 0.2, the completed VR of 0.6 and an average infection rate of 2% for the variant virus. Simulation finds that the higher the proportion of unobserved completed vaccination patients who are not infected, the lower the estimate of observed effectiveness; and the lower the true effectiveness, the larger the gap between observed effectiveness and true effectiveness. Simulation case 4 assumes the unvaccinated rate of 0.2, the ongoing VR of 0.2, the completed VR of 0.6 and an average infection rate of 5% for the variant virus. If a vaccine is more than 90% effectiveness against the premutant virus, but only 80% effectiveness against the mutant virus, and because 80% of the infected people with complete vaccination are not observed, the observed effectiveness of the vaccine is 91.95%, similar to case 1, it will lead to the wrong judgement that the VE against the variant virus is not decreased.
CONCLUSION: Compared with traditional epidemiological investigation, this system can meet the challenges of accelerating virus variation and a large number of asymptomatic people, dynamically monitor and accurately evaluate the effectiveness of listed vaccines and maximise personal privacy without locking down the relevant area or city. This system established in this study could serve as a universal template for monitoring and evaluating the effectiveness of COVID-19 listed vaccines in cities around the world. If this system can be promoted globally, it will promote countries to strengthen unity and cooperation and enhance the global ability to respond to COVID-19. © Author(s) (or their employer(s)) 2022. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  COVID-19; Epidemiology; Health policy

Mesh:

Substances:

Year:  2022        PMID: 35831042      PMCID: PMC9274021          DOI: 10.1136/bmjopen-2021-057281

Source DB:  PubMed          Journal:  BMJ Open        ISSN: 2044-6055            Impact factor:   3.006


  48 in total

1.  Quantifying the Importance of COVID-19 Vaccination to Our Future Outlook.

Authors:  Curtis B Storlie; Benjamin D Pollock; Ricardo L Rojas; Gabriel O Demuth; Patrick W Johnson; Patrick M Wilson; Ethan P Heinzen; Hongfang Liu; Rickey E Carter; Elizabeth B Habermann; Daryl J Kor; Matthew R Neville; Andrew H Limper; Katherine H Noe; Mohamad Bydon; Pablo Moreno Franco; Priya Sampathkumar; Nilay D Shah; Shannon M Dunlay; Sean C Dowdy
Journal:  Mayo Clin Proc       Date:  2021-04-27       Impact factor: 7.616

2.  Safety and efficacy of an rAd26 and rAd5 vector-based heterologous prime-boost COVID-19 vaccine: an interim analysis of a randomised controlled phase 3 trial in Russia.

Authors:  Denis Y Logunov; Inna V Dolzhikova; Dmitry V Shcheblyakov; Amir I Tukhvatulin; Olga V Zubkova; Alina S Dzharullaeva; Anna V Kovyrshina; Nadezhda L Lubenets; Daria M Grousova; Alina S Erokhova; Andrei G Botikov; Fatima M Izhaeva; Olga Popova; Tatiana A Ozharovskaya; Ilias B Esmagambetov; Irina A Favorskaya; Denis I Zrelkin; Daria V Voronina; Dmitry N Shcherbinin; Alexander S Semikhin; Yana V Simakova; Elizaveta A Tokarskaya; Daria A Egorova; Maksim M Shmarov; Natalia A Nikitenko; Vladimir A Gushchin; Elena A Smolyarchuk; Sergey K Zyryanov; Sergei V Borisevich; Boris S Naroditsky; Alexander L Gintsburg
Journal:  Lancet       Date:  2021-02-02       Impact factor: 79.321

3.  Prior COVID-19 Infection and Antibody Response to Single Versus Double Dose mRNA SARS-CoV-2 Vaccination.

Authors:  Joseph E Ebinger; Justyna Fert-Bober; Ignat Printsev; Min Wu; Nancy Sun; Jane C Figueiredo; Jennifer E Van Eyk; Jonathan G Braun; Susan Cheng; Kimia Sobhani
Journal:  medRxiv       Date:  2021-02-26

4.  A Novel Structure of Blockchain Applied in Vaccine Quality Control: Double-Chain Structured Blockchain System for Vaccine Anticounterfeiting and Traceability.

Authors:  Zehuan Qiu; Yifan Zhu
Journal:  J Healthc Eng       Date:  2021-03-19       Impact factor: 2.682

5.  Vaccine-breakthrough infection by the SARS-CoV-2 omicron variant elicits broadly cross-reactive immune responses.

Authors:  Runhong Zhou; Kelvin Kai-Wang To; Qiaoli Peng; Jacky Man-Chun Chan; Haode Huang; Dawei Yang; Bosco Hoi-Shiu Lam; Vivien Wai-Man Chuang; Jian-Piao Cai; Na Liu; Ka-Kit Au; Owen Tak-Yin Tsang; Kwok-Yung Yuen; Zhiwei Chen
Journal:  Clin Transl Med       Date:  2022-01

6.  Effectiveness of BNT162b2 Vaccine against Omicron Variant in South Africa.

Authors:  Shirley Collie; Jared Champion; Harry Moultrie; Linda-Gail Bekker; Glenda Gray
Journal:  N Engl J Med       Date:  2021-12-29       Impact factor: 91.245

7.  BNT162b2 and ChAdOx1 nCoV-19 Vaccine Effectiveness against Death from the Delta Variant.

Authors:  Aziz Sheikh; Chris Robertson; Bob Taylor
Journal:  N Engl J Med       Date:  2021-10-20       Impact factor: 91.245

8.  Community transmission and viral load kinetics of the SARS-CoV-2 delta (B.1.617.2) variant in vaccinated and unvaccinated individuals in the UK: a prospective, longitudinal, cohort study.

Authors:  Anika Singanayagam; Seran Hakki; Jake Dunning; Kieran J Madon; Michael A Crone; Aleksandra Koycheva; Nieves Derqui-Fernandez; Jack L Barnett; Michael G Whitfield; Robert Varro; Andre Charlett; Rhia Kundu; Joe Fenn; Jessica Cutajar; Valerie Quinn; Emily Conibear; Wendy Barclay; Paul S Freemont; Graham P Taylor; Shazaad Ahmad; Maria Zambon; Neil M Ferguson; Ajit Lalvani
Journal:  Lancet Infect Dis       Date:  2021-10-29       Impact factor: 25.071

9.  Immunogenicity and safety of a third dose of CoronaVac, and immune persistence of a two-dose schedule, in healthy adults: interim results from two single-centre, double-blind, randomised, placebo-controlled phase 2 clinical trials.

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Journal:  Lancet Infect Dis       Date:  2021-12-08       Impact factor: 71.421

10.  Safety and immunogenicity of SARS-CoV-2 variant mRNA vaccine boosters in healthy adults: an interim analysis.

Authors:  Angela Choi; Matthew Koch; Kai Wu; Laurence Chu; LingZhi Ma; Anna Hill; Naveen Nunna; Wenmei Huang; Judy Oestreicher; Tonya Colpitts; Hamilton Bennett; Holly Legault; Yamuna Paila; Biliana Nestorova; Baoyu Ding; David Montefiori; Rolando Pajon; Jacqueline M Miller; Brett Leav; Andrea Carfi; Roderick McPhee; Darin K Edwards
Journal:  Nat Med       Date:  2021-09-15       Impact factor: 53.440

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