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Does Repeat Influenza Vaccination Constrain Influenza Immune Responses and Protection

The safety and scientific validity of this study is the responsibility of the study sponsor and investigators. Listing a study does not mean it has been evaluated by the U.S. Federal Government. Know the risks and potential benefits of clinical studies and talk to your health care provider before participating. Read our disclaimer for details.
 
ClinicalTrials.gov Identifier: NCT05110911
Recruitment Status : Recruiting
First Posted : November 8, 2021
Last Update Posted : November 14, 2022
Sponsor:
Collaborators:
The University of Queensland
Sydney Children's Hospitals Network
The Alfred
University of Adelaide
The University of Western Australia
London School of Hygiene and Tropical Medicine
University of Newcastle, Australia
Information provided by (Responsible Party):
University of Melbourne

Brief Summary:

The objectives of this study are to understand the long-term consequences of repeated annual influenza vaccination among healthcare workers (HCWs) and to use statistical and mathematical modelling to elucidate the immunological processes that underlie vaccination responses and their implications for vaccination effectiveness. These objectives will be achieved by pursuing three specific aims:

  1. To study the immunogenicity and effectiveness of influenza vaccination by prior vaccination experience
  2. To characterize immunological profiles associated with vaccination and infection
  3. To evaluate the impact of immunity on vaccination effectiveness.

Under Aim 1, a cohort of hospital workers will be recruited and followed for up to 4 years to assess their pre- and post-vaccination and post-season antibody responses, and their risk of influenza infection. These outcomes will be compared by vaccination experience, classified as frequently vaccinated (received ≥3 vaccines in the past 5 years), infrequently vaccinated (<3 vaccinations in past 5 years), vaccinated once, vaccine naïve and unvaccinated.

In Aim 2, intensive cellular and serological assessments will be conducted to dissect the influenza HA-reactive B cell and antibody response, and build antibody landscapes that typify the different vaccination groups.

In Aim 3, the data generated in Aims 1 and 2 will be used to develop a mathematical model that considers prior infection, vaccination history, antibody kinetics, and antigenic distance to understand the effects of repeated vaccination on vaccine effectiveness.

Completion of the proposed research will provide evidence to inform decisions about continued support for influenza vaccination programs among HCWs and general policies for annual influenza vaccination, as well as much needed clarity about the effects of repeated vaccination.

In March-April 2020 pursuant to the SARS-CoV-2 global pandemic an administrative supplement added a SARS-CoV-2 protocol addendum for follow-up of COVID-19 infections amongst our HCW participant cohort.

The following objectives were added:

  1. To estimate risk factors and correlates of protection for SARS-CoV-2 infection amongst HCW
  2. To characterize viral kinetics and within-host viral dynamics of SARS-CoV-2 infecting HCW
  3. To characterize immunological profiles following infection by SARS-CoV-2
  4. To characterize immunological profiles following vaccination for SARS-CoV-2.

Condition or disease Intervention/treatment
Influenza, Human SARS-CoV-2 Infection Biological: Influenza vaccination: Fluarix Tetra, Vaxigrip Tetra, Fluquadri, Fluad Quad, Afluia Quad, Flucelvax Quad Biological: SARS-CoV-2 vaccination: Comirnaty or Vaxzevria

Detailed Description:

Over 140 million Americans are among the more than 500 million people who receive influenza vaccines annually. An important subgroup are healthcare workers (HCWs) for whom vaccination is recommended, and sometimes mandated, to protect themselves and vulnerable patients from influenza infection. However, there have been no large, long term studies of HCWs to support the effectiveness of these policies. HCWs are now a highly vaccinated population, the effects of which are also poorly understood. Mounting evidence suggests antibody responses to vaccination can be attenuated with repeated vaccination, which is corroborated by reports of poor vaccine effectiveness among the repeatedly vaccinated. Thus, there is a compelling need to directly evaluate HCW vaccination programs. The long term goal is to improve the efficient and effective use of influenza vaccines.

The specific objectives of this study are to understand the long-term consequences of repeated annual influenza vaccination among HCWs and to use statistical and mathematical modeling to elucidate the immunological processes that underlie vaccination responses and their implications for vaccination effectiveness. These objectives will be achieved by pursuing three specific aims:

  1. To study the immunogenicity and effectiveness of influenza vaccination by prior vaccination experience
  2. To characterize immunological profiles associated with vaccination and infection
  3. To evaluate the impact of immunity on vaccination effectiveness.

Under Aim 1, a cohort of hospital workers will be recruited and followed for up to 4 years to assess their pre- and post-vaccination and post-season antibody responses, and their risk of influenza infection. These outcomes will be compared by vaccination experience, classified as frequently vaccinated (received ≥3 vaccines in the past 5 years), infrequently vaccinated (<3 vaccinations in past 5 years), vaccinated once, vaccine naïve and unvaccinated.

In Aim 2, intensive cellular and serological assessments will be conducted to dissect the influenza HA-reactive B cell and antibody response, and build antibody landscapes that typify the different vaccination groups.

In Aim 3, the data generated in Aims 1 and 2 will be used to develop a mathematical model that considers prior infection, vaccination history, antibody kinetics, and antigenic distance to understand the effects of repeated vaccination on vaccine effectiveness. This approach is innovative because it will provide insights into the effect of complex immunological dynamics on infection outcomes, thereby representing a novel departure from previous studies, which have ignored these difficult-to-measure processes. Completion of the proposed research will provide evidence to inform decisions about continued support for influenza vaccination programs among HCWs and general policies for annual influenza vaccination, as well as much needed clarity about the effects of repeated vaccination.

In March-April 2020 pursuant to the SARS-CoV-2 global pandemic an administrative supplement added a SARS-CoV-2 protocol addendum for follow-up of COVID-19 infections amongst our HCW participant cohort.

The following objectives were added under the supplement IRB application:

  1. To estimate risk factors and correlates of protection for SARS-CoV-2 infection amongst HCW
  2. To characterize viral kinetics and within-host viral dynamics of SARS-CoV-2 infecting HCW
  3. To characterize immunological profiles following infection by SARS-CoV-2
  4. To characterize immunological profiles following vaccination for SARS-CoV-2.

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Study Type : Observational
Estimated Enrollment : 1500 participants
Observational Model: Cohort
Time Perspective: Prospective
Official Title: Does Repeat Influenza Vaccination Constrain Influenza Immune Responses and Protection
Actual Study Start Date : April 2, 2020
Estimated Primary Completion Date : November 1, 2023
Estimated Study Completion Date : November 1, 2023

Resource links provided by the National Library of Medicine

MedlinePlus related topics: Flu Flu Shot Vaccines

Group/Cohort Intervention/treatment
Healthcare Workers

Eligible participants will be recruited from 1 of 6 participating hospitals in Australia and will meet the following criteria: personnel (including staff, honorary staff, students and volunteers) located at a participating hospital or healthcare service at the time of recruitment who would be eligible for the hospital's free vaccination programme; be aged ≥18 years old and ≤60 years old; have a mobile phone that can receive and send SMS messages; willing and able to provide blood samples; available for follow-up over the next 7 months; able and willing to complete the informed consent process.

There are no restrictions on the type of healthcare worker (HCW) that can be recruited into the study in terms of their job role. HCW will be any hospital staff, including clinical, research, administrative and support staff.

Biological: Influenza vaccination: Fluarix Tetra, Vaxigrip Tetra, Fluquadri, Fluad Quad, Afluia Quad, Flucelvax Quad
Influenza vaccine made available to healthcare workers at the participating healthcare sites, as part of their free vaccination campaigns for healthcare workers.

Biological: SARS-CoV-2 vaccination: Comirnaty or Vaxzevria
SARS-CoV-2 vaccine made available to healthcare workers at the participating healthcare sites, as part of their free vaccination campaigns for healthcare workers.




Primary Outcome Measures :
  1. Seropositivity post-vaccination (influenza vaccine) [ Time Frame: Post-vaccination blood draws are at 14-21 days post vaccination. Collected each year 2020-2023 post annual influenza vaccination. ]
    Seropositivity among vaccination groups will be calculated and compared using logistic regression, with seropositivity coded as 1 if the titre ≥40, and 0 if the titre is <40. We will test for trend among vaccination groups, assuming seropositivity will be lowest in the most highly vaccinated.

  2. Seropositivity post-season (influenza vaccine) [ Time Frame: End of the season blood draws are in October or November each year, at the conclusion of Australia's annual influenza season. Vaccination usually occurs in April or May. Collected each year 2020-2023 post annual influenza season. ]
    Seropositivity among vaccination groups will be calculated and compared using logistic regression, with seropositivity coded as 1 if the titre ≥40, and 0 if the titre is <40. We will test for trend among vaccination groups, assuming seropositivity will be lowest in the most highly vaccinated.

  3. Fold-rise in geometric mean antibody titre (GMT) pre- to post-vaccination [ Time Frame: Changes from day 0 to day 14-21 post influenza vaccination. Collected each year 2020-2023 pre and post annual influenza vaccination. ]
    The changes in GMT from pre- to post-vaccination. Seroconversion is defined as samples with 4-fold increases in hemagglutination inhibition (HI) titre.

  4. Fold-change in geometric mean antibody titre (GMT) post-vaccination to post-season [ Time Frame: Changes from day 14-21 to post-season. Influenza season in Australia is approximately May to November. Pre-vaccination to post-season is approximately April or May to October or November each year. Collected each year 2020-2023. ]
    The changes in GMT from post-vaccination to post-season.

  5. Seroconversion fraction post-vaccination [ Time Frame: Changes from day 0 to day 14-21 post influenza vaccination. Collected each year 2020-2023 pre and post annual influenza vaccination. ]
    The proportion of samples with 4-fold increases in hemagglutination inhibition (HI) titre. Seroconversion post-vaccination will be calculated and compared among vaccination groups by logistic regression, with seroconversion coded as 1 if the fold-rise in titre is ≥4 and 0 if the fold-rise in titre is <4. We will test for trend, assuming seroconversion will be lowest in the most highly vaccinated.


Secondary Outcome Measures :
  1. Healthcare workers (HCWs) PCR-positive for influenza at the end of each season [ Time Frame: Influenza season in Australia is approximately May to November. Follow up for PCR-positives from approximately April/May to October/November each year from 2020-2023. ]
    Proportion of HCWs that are PCR-positive for influenza at the end of each season.

  2. Influenza attack rate at the end of each season [ Time Frame: Person-time at risk, during influenza season. Influenza season in Australia is approximately May to November. Follow up for PCR-positives from approximately April/May to October/November each year from 2020-2023. ]
    Evidence of influenza infection will be based on RT-PCR-confirmed infection, only, as serological evidence may be biased in vaccinees who elicit a good antibody response to vaccination. Attack rates will be calculated for each vaccination group as the number of cases during the person-time at risk.

  3. Vaccine efficacy (VE) [ Time Frame: Person-time at risk, during influenza season. Influenza season in Australia is approximately May to November. Follow up for PCR-positives from approximately April/May to October/November each year from 2020-2023. ]
    VE will be estimated using a Cox proportional hazards regression model comparing the risk of influenza infection (coded as 1 for infected or 0 for uninfected) among healthcare workers (HCWs) by vaccination status: VE = (1-HRadj) × 100%. If there are sufficient cases, the model will be adjusted for potential confounders (e.g. age group), and factors that may modify the risk of infection. Using virus characterization data, we will assess if failures are associated with antigenic mismatch.

  4. Duration of illness (influenza) [ Time Frame: Days ill, during influenza season. Influenza season in Australia is approximately May to November. Follow up for PCR-positives from approximately April/May to October/November each year from 2020-2023. ]
    The number of days ill with influenza (count) will be compared among vaccination groups, adjusted for age. Because of the excess of 0 counts (people who never get infected), zero-inflated negative binomial regression will be used.

  5. Haemagglutinin (HA) antibody landscapes for vaccine-naïve and highly-vaccinated healthcare workers (HCWs) [ Time Frame: Bloods on day 0, day 7, day 14-21 post influenza vaccination and end of season. Collected each year 2020-2023 pre and post annual influenza vaccination and end of influenza season. ]
    By collating the results of many antibody assays to historical influenza strains, it is possible to visualize the landscape of an individual's responses to vaccination and infection. We are using strains going back to 1968 when A(H3N2) emerged in humans.

  6. Haemagglutinin (HA) antibody landscapes for infected versus uninfected healthcare workers (HCWs) [ Time Frame: Bloods on day 7 and day 14-21 post influenza infection. Collected each year 2020-2023 along with pre and post annual influenza vaccination and end of influenza season bloods. ]
    By collating the results of many antibody assays to historical influenza strains, it is possible to visualize the landscape of an individual's responses to vaccination and infection. We are using strains going back to 1968 when A(H3N2) emerged in humans.

  7. Enumeration of cells [ Time Frame: Bloods on day 0 and day 14-21 post influenza vaccination and post infection. The key indicator is the frequency of these B cells on day 14 post-vaccination relative to pre-vaccination frequencies. Collected each year 2020-2023. ]
    Enumeration of influenza haemagglutinin (HA)-reactive B cells, and of subsets with phenotypic markers indicative of activation, and of memory versus naïve status, for vaccine-naïve, highly vaccinated and infected healthcare workers (HCWs) (i.e. we are comparing frequency fold-change/ratio between groups highly vaccinated and infrequently vaccinated).

  8. B cells [ Time Frame: Blood draws on day 7 post influenza vaccination and post infection. Collected each year 2020-2023. ]
    B cell receptor gene usage by influenza haemagglutinin (HA)-reactive B cells recovered post vaccination and post infection from selected vaccine naïve, highly vaccinated and infected healthcare workers (HCWs) with distinct antibody response profiles. In depth characterization of HA antigenic sites recognized by serum antibodies from selected HCW including vaccine non-responders who lack seroprotection, and vaccine serological responders who fail to be protected. This analysis will largely be performed on B cells detected on day 7 post vaccination, when there is the greatest potential to differentiate between vaccine reactive B cells that have come from naïve versus memory pools.

  9. Quantify biological mechanisms that shape the antibody response [ Time Frame: Bloods on day 0, day 7, day 14-21 post influenza vaccination, day 7, day 14-21 post infection and end of season. Collected each year 2020-2023. ]
    Models of antibody dynamics and individual-level exposures will be develop to quantify the different aspects of the antibody response that generated observed immunological profiles.

  10. Estimate protective titres [ Time Frame: Bloods on day 0, day 7, day 14-21 post influenza vaccination, day 7, day 14-21 post infection and end of season. Collected each year 2020-2023. ]
    As the model is refined we will identify a minimum set of titres against past or forward strains that capture the underlying 'smooth' antibody landscape and provide a reliable correlate of protection.

  11. Optimal influenza vaccination strategy for healthcare workers (HCWs) under different vaccine availability [ Time Frame: Bloods on day 0, day 7, day 14-21 post influenza vaccination, day 7, day 14-21 post infection and end of season. Collected each year 2020-2023. ]
    With our model in place, we will compare the performance of current vaccination programs with simulated alternatives to predict the impact of repeated vaccination and circulating virus on vaccine efficacy (VE) under different scenarios. In particular, we will examine the potential impact of: highly-valent vaccines, which include more than a single strain for each subtype; universal vaccines that generate a broadly cross-reactive response against conserved influenza epitopes; and near-universal vaccines that produce a broader response, but still have potential to generate effects such as antibody focusing or seniority, which could reduce effectiveness.

  12. Estimated SARS-CoV-2 attack rates among symptomatic and asymptomatic healthcare workers (HCWs) [ Time Frame: Follow-up period 2020-2023. ]
    Symptomatic attack (incidence) rates will be calculated as the number of cases testing positive by RT-PCR during the person-time at risk. The asymptomatic incidence proportion will be calculated as the number of HCWs with evidence of sero-conversion and no acute respiratory infection reported among all HCWs followed during the same period.

  13. Case-hospitalization risk [ Time Frame: Follow-up period 2020-2023. ]
    The hospitalization risk (or incidence proportion) will be calculated as the number of healthcare workers (HCWs) hospitalized due to COVID-19 among all HCW with either asymptomatic or symptomatic evidence of infection during the same period.

  14. Risk factors for asymptomatic, mild and severe SARS-CoV-2 infection [ Time Frame: Follow-up period 2020-2023. ]
    The predictors of severe infection will be estimated using a Cox proportional hazards regression model comparing the risk of COVID-19 illness (coded as 1 for hospitalised or 0 for infected but not hospitalised) among HCWs. If there are sufficient cases, various predictors of severity will be explored in either univariate or multivariate analysis. Predictors may include age, presence of comorbidities, and viral load.

  15. Estimated SARS-CoV-2 antibody titre associated with protection [ Time Frame: Follow-up period 2020-2023. ]
    We will compare post-season geometric mean titres between those with asymptomatic and symptomatic infections. We will attempt to establish serological correlates of protection for SARS-CoV-2, using a Bayesian implementation of logistic regression that we have used for influenza cohort studies.

  16. Estimated SARS-CoV-2 antibody kinetics over time [ Time Frame: Bloods on day 3, day 7, day 14-21, day 30 post infection and end of season. Daily swabs during symptomatic infection to two days post resolution of symptoms. Follow-up period 2020-2023. ]

    Sera collected more frequently will be assessed for antibody titre and the titres compared over time. Geometric mean titres will be calculated and plotted to allow visual inspection of the antibody kinetics, overall and within groups (e.g. age groups, severity of infection). The mean rate of decay will be calculated using linear regression. Because little is known about the decay kinetics, various models will be explored to identify the model with best fit, based on visual inspection of the data and model fitting diagnostics.

    Viral load will be included in analyses comparing asymptomatic, mild and severe infections. If possible we will explore the interactions of viral load with demographic (e.g. age) or medical (e.g. heart disease) characteristics.


  17. Identification of key behavioural drivers of transmission [ Time Frame: Follow-up period 2020-2023. ]
    Using social contacts data, we will attempt to infer the transmission dynamics for our healthcare worker (HCW) participants between each round of sample collection. We will use mathematical models social mixing data with infection risk to untangle specific behaviours/contact scaling that may be driving transmission. These models may be extended to include genetic sequencing data, which has been previously used to reconstruct transmission clusters.

  18. Estimated duration of viral shedding and viral load in SARS-CoV-2 infection over time [ Time Frame: During symptomatic infection to two days post resolution of symptoms. Follow-up period 2020-2023. ]
    We will estimate the average duration of viral shedding and viral load over time and correlation with severity.

  19. Enumeration of SARS-CoV-2-reactive B and T cells and identification of dominant epitopes [ Time Frame: Bloods on day 3, day 7, day 14-21, day 30 post infection and end of season. Follow-up period 2020-2023. ]
    Mean antibody concentration will be calculated in innate immune responses.

  20. Gene expression [ Time Frame: Changes from day 0 to day 7 post vaccination. Follow-up period 2020-2023. ]
    Identification of genes that are differentially expressed on day 7 compared to day 0 for each vaccine formulation, focusing on innate immune associated genes.

  21. Enumeration of SARS-CoV-2-reactive B and T cells induced by each vaccine formulation [ Time Frame: Specific B and T cells detected at day 14-21 post vaccine schedule completion versus day 0. Follow-up period 2020-2023. ]
    Mean antibody concentration will be calculated and compared for vaccine groups (Comirnaty vs Vaxzevria vaccine).

  22. Seroconversion of SARS-CoV-2 serum antibody titres induced by each vaccine formulation [ Time Frame: At day 14-21 post vaccine schedule completion. Follow-up period 2020-2023. ]
    Seroconversion post-vaccination will be calculated and compared between vaccine groups by logistic regression (Comirnaty vs Vaxzevria vaccine).

  23. Fold changes in innate immune cells and in vaccine specific B and T cells [ Time Frame: Vaccine specific B and T cells detected at day 14-21 post vaccine schedule completion versus day 0. Follow-up period 2020-2023. ]
    Antibody levels will be correlated with fold changes in innate immune cells and in vaccine specific B and T cells in each vaccine formulation (Comirnaty vs Vaxzevria vaccine).

  24. Comparison of antibody (and B and T cell) responses induced against COVID-19 and influenza vaccines among participants who received COVID-19 versus influenza vaccine first or who were co-administered both vaccines. [ Time Frame: Antibody levels will be correlated with fold changes in innate immune cells and in vaccine specific B and T cells detected at day 14-21 post vaccine schedule completion versus day 0. Follow-up period 2020-2023. ]
    Mean antibody concentration will be calculated and compared for vaccine groups (CoVax vs influenza vaccine). Seroconversion post-vaccination will be calculated and compared between vaccine groups by logistic regression.


Biospecimen Retention:   Samples Without DNA
This study will not generate human genomic data. However, all virus sequencing data generated will be uploaded to the Global Initiative on Sharing All Influenza Data (GISAID) website, as part of standard surveillance practices of the WHO Collaborating Centre for Reference and Research on Influenza.


Information from the National Library of Medicine

Choosing to participate in a study is an important personal decision. Talk with your doctor and family members or friends about deciding to join a study. To learn more about this study, you or your doctor may contact the study research staff using the contacts provided below. For general information, Learn About Clinical Studies.


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Ages Eligible for Study:   18 Years to 60 Years   (Adult)
Sexes Eligible for Study:   All
Accepts Healthy Volunteers:   Yes
Sampling Method:   Probability Sample
Study Population
Healthcare workers (including staff, honorary staff, students and volunteers) from six participating hospitals (or healthcare services) who are eligible for the hospitals' free vaccination programmes, at the time of recruitment.
Criteria

Inclusion Criteria:

Eligible participants will be recruited from 1 of 6 participating hospitals and will meet the following criteria:

  • Personnel (including staff, honorary staff, students and volunteers) located at a participating hospital or healthcare service at the time of recruitment who would be eligible for the hospital's free vaccination programme
  • Be aged ≥18 years old and ≤60 years old;
  • Have a mobile phone that can receive and send SMS messages;
  • Willing and able to provide blood samples;
  • Available for follow-up over the next 7 months;
  • Able and willing to complete the informed consent process.

There are no restrictions on the type of healthcare worker (HCW) that can be recruited into the study in terms of their job role. HCWs can be any hospital staff, including clinical, research, administrative and support staff.

Exclusion Criteria:

  • Immunosuppressive treatment (including systemic corticosteroids) within the past 6 months;
  • Personnel for whom vaccination is contraindicated at the time of recruitment.

Information from the National Library of Medicine

To learn more about this study, you or your doctor may contact the study research staff using the contact information provided by the sponsor.

Please refer to this study by its ClinicalTrials.gov identifier (NCT number): NCT05110911


Contacts
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Contact: Sheena Sullivan, MPH, PhD +61 3 9342 9317 sheena.sullivan@influenzacentre.org
Contact: Annette Fox, PhD +61 3 9342 9300 annette.fox@unimelb.edu.au

Locations
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Australia, New South Wales
John Hunter Hospital Recruiting
New Lambton Heights, New South Wales, Australia, 2305
Contact    +61 428 510 786    catherine.delahunty@newcastle.edu.au   
The Children's Hospital at Westmead Recruiting
Westmead, New South Wales, Australia, 2145
Contact    +61 429 849 440    SCHN-NCIRS-Research@health.nsw.gov.au   
Australia, Queensland
Queensland Children's Hospital Recruiting
Brisbane, Queensland, Australia, 4101
Contact    +61 429 206 919    chq_idhcwflu@health.qld.gov.au   
Australia, South Australia
Women's and Children's Hospital Recruiting
Adelaide, South Australia, Australia, 5006
Contact    +61 8 8161 6328    virtu@adelaide.edu.au   
Australia, Victoria
The Alfred Recruiting
Melbourne, Victoria, Australia, 3004
Contact    +61 3 9076 6908    clinresearch@alfred.org.au   
Australia, Western Australia
Perth Children's Hospital Recruiting
Nedlands, Western Australia, Australia, 6009
Contact    +61 481 060 927    HCW.FluStudy@telethonkids.org.au   
Sponsors and Collaborators
University of Melbourne
The University of Queensland
Sydney Children's Hospitals Network
The Alfred
University of Adelaide
The University of Western Australia
London School of Hygiene and Tropical Medicine
University of Newcastle, Australia
Investigators
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Principal Investigator: Sheena Sullivan, MPH, PhD University of Melbourne
Principal Investigator: Annette Fox, PhD University of Melbourne
Principal Investigator: Adam Kucharski, MMath, PhD London School of Hygiene and Tropical Medicine
  Study Documents (Full-Text)
Additional Information:
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Responsible Party: University of Melbourne
ClinicalTrials.gov Identifier: NCT05110911    
Other Study ID Numbers: 1R01AI41534
First Posted: November 8, 2021    Key Record Dates
Last Update Posted: November 14, 2022
Last Verified: November 2022
Individual Participant Data (IPD) Sharing Statement:
Plan to Share IPD: Yes
Plan Description: Sharing original data: The proposed study will collect demographic and clinical information, as well as blood and respiratory specimens from participants. Because we will be conducting longitudinal follow-up, we will be collecting identifiable information. Any data shared will be stripped of identifiers prior to release for sharing. However, there remains the possibility of deductive disclosure of participants with unusual characteristics. Thus, data will only be shared with new collaborators under a data-sharing agreement that provides for: (1) a commitment to using the data only for research purposes and not to identify any individual participant; (2) a commitment to securing the data using appropriate computer technology; and (3) a commitment to destroying or returning the data after analyses are completed.
Supporting Materials: Study Protocol
Statistical Analysis Plan (SAP)
Informed Consent Form (ICF)
Analytic Code
Time Frame: Data will be available after publication of results, likely in late-2024.
Access Criteria: Data will only be shared with new collaborators under a data-sharing agreement that provides for: (1) a commitment to using the data only for research purposes and not to identify any individual participant; (2) a commitment to securing the data using appropriate computer technology; and (3) a commitment to destroying or returning the data after analyses are completed.
URL: https://hcwflustudy.com/home

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Studies a U.S. FDA-regulated Drug Product: No
Studies a U.S. FDA-regulated Device Product: No
Keywords provided by University of Melbourne:
Vaccine Response Impaired
Influenza, Human
Health Personnel
Influenza Vaccines
SARS-CoV-2 Infection
Immunologic Memory
Vaccination
Additional relevant MeSH terms:
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Influenza, Human
COVID-19
Infections
Respiratory Tract Infections
Orthomyxoviridae Infections
RNA Virus Infections
Virus Diseases
Respiratory Tract Diseases
Pneumonia, Viral
Pneumonia
Coronavirus Infections
Coronaviridae Infections
Nidovirales Infections
Lung Diseases