| Literature DB >> 35438130 |
Hannah C Moore1, Jeffrey W Cannon1,2, David C Kaslow3, Theresa Lamagni4, Asha C Bowen1,5, Kate M Miller1, Thomas Cherian6, Jonathan Carapetis1,5, Chris Van Beneden7.
Abstract
Vaccine development and implementation decisions need to be guided by accurate and robust burden of disease data. We developed an innovative systematic framework outlining the properties of such data that are needed to advance vaccine development and evaluation, and prioritize research and surveillance activities. We focus on 4 objectives-advocacy, regulatory oversight and licensure, policy and post-licensure evaluation, and post-licensure financing-and identify key stakeholders and specific requirements for burden of disease data aligned with each objective. We apply this framework to group A Streptococcus, a pathogen with an underrecognized global burden, and give specific examples pertinent to 8 clinical endpoints. This dynamic framework can be adapted for any disease with a vaccine in development and can be updated as vaccine candidates progress through clinical trials. This framework will also help with research and innovation priority setting of the Immunization Agenda 2030 (IA2030) and accelerate development of future vaccines.Entities:
Keywords: burden of disease; group A streptococcal diseases; vaccine development; vaccine policy
Mesh:
Substances:
Year: 2022 PMID: 35438130 PMCID: PMC9525082 DOI: 10.1093/cid/ciac291
Source DB: PubMed Journal: Clin Infect Dis ISSN: 1058-4838 Impact factor: 20.999
Framework for Prioritizing Burden of Disease Data for Vaccine Development and Evaluation Objectives
| Vaccine Objective | ||||
|---|---|---|---|---|
| Element | Advocacy | Regulatory/Licensure | Policy and Post-Licensure Evaluation | Financing |
| Stage of vaccine pipeline | All stages | Pre-licensure and licensure/pre-qualification stages, with some continuation for post-licensure commitments | Post-licensure, but early analyses needed pre-licensure period | Required for post-licensure decision making, but evidence needed pre-licensure for 5-year Vaccine Investment Strategy decision making by Gavi and others |
| Key audience/stakeholders |
Public and private donors and funding bodies Public figures (eg, politicians and specialist physicians) and advocacy groups, especially in countries with high disease burden Manufacturers/developers (pharmaceutical and biotech companies) Wider community/society (eg, CSOs) |
National government/regulators (NRAs) WHO vaccines pre-qualification Manufacturers/developers (pharmaceutical and biotech companies, public–private partnerships) Funders and donors |
Global, regional, and national policy makers and advisors (eg, WHO, SAGE, GNN, RITAGs, NITAGs) Public sector immunization programs (eg, EPI Managers) In-country champions (eg, specialist physicians) |
Multilateral funders (ie, Gavi and its Vaccine Investment Strategy) National government bodies (NITAGs, Ministries of Health and Finance) Industry/manufacturers Bilateral public and private funders Private medical insurance organizations |
| Data purpose |
Quantify overall preventable burden of disease that are comparable across countries/regions Focus on data most likely to influence decision making (including individual vaccinees [and their caregivers]), of greatest public health significance Contextualize in relation to global, regional. or national public health and development goals (eg, SDGs, IA2030) |
Provide foundation needed to design and plan clinical trials to measure vaccine efficacy and safety for key disease endpoints |
Measure effectiveness post-licensure (which includes knowledge of disease epidemiology prior to vaccine introduction) Model and predict potential impact pre-licensure Provide evidence to form recommendations |
Assess return on investment decisions |
| Overarching data requirements |
Full disease spectrum Specific and nonspecific disease endpoints |
Age-specific incidence of specific clinical endpoints as guided by WHO-preferred product characteristics in well-characterized populations |
Vaccine-preventable disease burden (population-based, where feasible) Specific and nonspecific disease endpoints |
Cost of vaccination to prevent disease (where feasible) Cost of illness Impact on quality of life (eg, QALYs or DALYs) Time-series data needed for economic modeling |
Abbreviations: CSO, civil society organization; DALY, disability-adjusted life-year; EPI, Expanded Programme of Immunisation; Gavi, Gavi, the Vaccine Alliance; GNN, Global NITAG Network; IA2030, Immunization Agenda 2030; NITAG, National Immunization Technical Advisory Group; NRA, National Regulator Agency; QALY, quality-adjusted life-year; RITAG, Regional Immunization Technical Advisory Group; SAGE, Strategic Advisory Group of Experts on Immunization; SDG, Sustainable Development Goal; WHO, World Health Organization.
Figure 1.Key group A Streptococcus disease syndromes. Colonization of upper respiratory infection and skin is not included. Note this is a simplified figure of the diseases associated with group A Streptococcus. Locally invasive disease and invasive disease can also include bacteremia, meningitis, puerperal sepsis, and necrotizing fasciitis. Toxin-mediated diseases can also include streptococcal toxic shock syndrome. Direct sequelae can also include chronic kidney disease. Figure adapted with permission by Cannon et al [20].
Priorities for Data Requirements Describing Burden of Disease Across Vaccine Development and Evaluation Objectives for Acute Group A Streptococcus Diseases
| Clinical Endpoint | Vaccine Objective | |||
|---|---|---|---|---|
| Advocacy | Regulatory/Licensure | Policy and Post-Licensure Evaluation | Financing | |
| Pharyngitis (children) |
Passive or active surveillance data measuring age-specific disease incidence and strain (eg, Data on population transmission Vaccine acceptance Markers of immune response to differentiate asymptomatic carriage vs acute infection Syndromic surveillance data to establish need for subnational vs regional estimates for countries lacking capacity; Strep A–specific pharyngitis data where feasible |
Prospective, active surveillance with laboratory-confirmed clinical endpoints Strain-specific disease incidence where possible Establish infrastructure and data mechanisms for phase II/III vaccine clinical trials Monitor adverse events/safety from vaccine candidates Markers of immune response to assess asymptomatic carriage vs acute infection Correlate with pre-existing syndromic surveillance sites |
Prospective and retrospective data measuring age-specific (or reporting age-standardized) incidence rates (pre- and post-vaccine introduction) Trends in antibiotic use (and AMR in Strep A and bystander pathogens) over time Economic value of vaccine Estimates of herd immunity Correlate with pre-existing syndromic surveillance sites Strep A–specific in limited sentinel sites |
Retrospective economic (cost of illness) data from all available levels of health service indicators, but primarily general practice Level and cost of antibiotic use plus trends in AMR Economic value of vaccine |
| Impetigo (children) |
Passive or active surveillance data measuring age-specific disease incidence and prevalence Vaccine acceptance Strep A–specific (laboratory-confirmed) where possible Data from a limited number of sentinel settings are adequate (as impetigo unlikely to be major driver in HICs) Syndromic surveillance data with laboratory confirmation from selected high-performing sites |
Prospective active surveillance with laboratory-confirmed clinical endpoints Only required in a small number of sentinel sites Phase II/III vaccine clinical trials unlikely to be feasible (given low disease prevalence) Measure disease incidence/prevalence from selected regional sites Identify sites with adequate resources for future vaccine trials |
Prospective and retrospective data measuring age-specific or age-standardized incidence/prevalence rates (pre- and post-vaccine introduction) Does not need to be Strep A–specific Potential basis for later vaccine effectiveness evaluation Strep A–specific in a subset of sentinel sites |
Retrospective economic (cost of illness) data from all available levels of health service indicators |
| Cellulitis |
Prospective and retrospective passive and active surveillance data measuring age-specific disease incidence and prevalence Measure disease outcomes Strep A–specific data from limited sites if feasible |
Not critical as initial efficacy needs to be demonstrated for pharyngitis and impetigo Consider phase III trials in targeted populations (eg, recurrent cellulitis in diabetics or elderly) |
Incidence/prevalence rates, focusing on adults Does not need to be Strep A–specific Syndromic surveillance data may be useful to monitor temporal trends |
Retrospective economic (cost of illness) data from all available levels of health service indicators Lost productivity data Measure severe disease outcomes Unlikely to be a priority |
| Invasive Strep A |
Prospective and retrospective passive and active surveillance data measuring age-specific disease incidence and outcomes, including mortality Societal/economic burden Serotype (eg, High-risk populations (eg, First Nations) as likely to influence decision making Establish sentinel site surveillance in geographically representative areas |
Not critical as initial efficacy needs to be demonstrated for pharyngitis and impetigo but need to plan for post-licensure evaluation Strain-specific endpoints useful for post-licensure evaluations in some countries |
Prospective and retrospective data measuring age-specific or age-standardized incidence/prevalence rates (age group will depend on clinical focus) Laboratory-confirmed infections Assess some key foci separately (eg, puerperal sepsis) Impact on AMR of group A strep Strain-specific data from several select, high-performing sites |
Retrospective economic (cost of illness) data focusing on hospitalizations and mortality Data on imputations and other sequelae, including DALYs where possible |
| Scarlet fever |
Prospective and retrospective passive and active surveillance data measuring age-specific disease incidence |
Not critical as initial efficacy needs to be demonstrated for pharyngitis and impetigo but may be observable in some settings |
Prospective and retrospective data measuring age-specific or age-standardized incidence rates Serotype data important Trends in antibiotic use (and AMR) over time |
Retrospective economic (cost of illness) data from, primarily, general practice Level and cost of antibiotic use plus trends in AMR |
Abbreviations: AMR, antimicrobial resistance; DALY, disability-adjusted life-year; HIC, high-income country; LMIC, low- and middle-income country; Strep A, group A Streptococcus.
Priorities for Data Requirements Describing Burden of Disease Across Vaccine Development and Evaluation Objectives for Immune-Mediated Sequalae of Group A Streptococcus
| Objective | ||||
|---|---|---|---|---|
| Clinical Endpoint | Advocacy | Regulatory/Licensure | Policy and Post-Licensure Evaluation | Financing |
| ARF |
Age-specific incidence and changes over time Unlikely to be a driver except in First Nation sub-populations |
Not critical as initial efficacy needs to be demonstrated for pharyngitis and impetigo but need to plan for post-licensure evaluation Relevant for First Nation sub-populations Determination of pathway for evaluating impact on severe disease outcomes from early acute infection |
Age-specific incidence and changes over time. Attack rates from acute diseases to ARF (difficult to obtain) Relevant for First Nation sub-populations Data on socioeconomic indicators Progression from acute infection |
Retrospective economic (cost of illness) data targeted to hospitalizations and treatment Relevant for First Nation sub-populations |
| RHD |
Prevalence in certain at-risk groups Relevant for First Nation sub-populations Severity of RHD |
Not critical as initial efficacy needs to be demonstrated for pharyngitis and impetigo but need to plan for post-licensure evaluation Determination of pathway for evaluating impact on severe disease outcomes from early acute infection |
Age-specific prevalence and temporal changes Need to understand progression from acute infection (pharyngitis) to estimate long-term reduction from pharyngitis prevention Relevant for First Nation sub-populations Data on socioeconomic indicators Progression from acute infection |
Retrospective economic (cost of illness) data targeted to hospitalizations, treatment, and mortality Relevant for First Nation sub-populations |
| APSGN |
Not a critical driver for advocacy |
Not required as efficacy needs to be demonstrated for pharyngitis |
Plan for post-licensure evaluation of impact |
Retrospective economic (cost of illness) data targeted to hospitalizations and treatment Potential impact on long-term chronic renal disease |
Abbreviations: APSGN, acute post-streptococcal glomerulonephritis; ARF, acute rheumatic fever; HIC, high-income country; LMIC, low- and middle-income country; RHD, rheumatic heart disease.