Last data update: Dec 02, 2024. (Total: 48272 publications since 2009)
Records 1-3 (of 3 Records) |
Query Trace: Sikare E[original query] |
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Building data triangulation capacity for routine immunization and vaccine preventable disease surveillance programs to identify immunization coverage inequities
Rachlin A , Adegoke OJ , Bohara R , Rwagasore E , Sibomana H , Kabeja A , Itanga I , Rwunganira S , Mafende Mario B , Rosette NM , Usman Obansa R , Abah AU , Adeoye OB , Sikare E , Lam E , Murrill CS , Montesanti Porter A . Vaccines (Basel) 2024 12 (6) The Expanded Programme on Immunization (EPI) and Vaccine Preventable Disease (VPD) Surveillance (VPDS) programs generate multiple data sources (e.g., routine administrative data, VPD case data, and coverage surveys). However, there are challenges with the use of these siloed data for programmatic decision-making, including poor data accessibility and lack of timely analysis, contributing to missed vaccinations, immunity gaps, and, consequently, VPD outbreaks in populations with limited access to immunization and basic healthcare services. Data triangulation, or the integration of multiple data sources, can be used to improve the availability of key indicators for identifying immunization coverage gaps, under-immunized (UI) and un-immunized (zero-dose (ZD)) children, and for assessing program performance at all levels of the healthcare system. Here, we describe the data triangulation processes, prioritization of indicators, and capacity building efforts in Bangladesh, Nigeria, and Rwanda. We also describe the analyses used to generate meaningful data, key indicators used to identify immunization coverage inequities and performance gaps, and key lessons learned. Triangulation processes and lessons learned may be leveraged by other countries, potentially leading to programmatic changes that promote improved access and utilization of vaccination services through the identification of UI and ZD children. |
Lessons learned from early implementation of the Growing Expertise in E-health Knowledge and Skills (GEEKS) program in Nigeria, 2019 - 2021
Rachlin A , Adegoke OJ , Sikare E , Adeoye OB , Dagoe E , Adeyelu A , Tolentino H , MacGregor J , Obasi S , Adah G , Garba AB , Abah AU , Friday J , Oyiri F , Porter AM , Olajide L , Wilson I , Usman R , Usifoh N , Fasogbon O , Franka R , Ghiselli M , Nguku P , Waziri N , Lam E , Bolu O . Pan Afr Med J 2023 46 81 INTRODUCTION: the Growing Expertise in E-health Knowledge and Skills (GEEKS) program is an applied apprenticeship program that aims to improve informatics capacity at various levels of the national health system and create a sustainable informatics workforce. Nigeria adapted the GEEKS model in 2019 as a mechanism to strengthen data quality and use of routine immunization (RI) and vaccine-preventable disease (VPD) surveillance data among Expanded Programme on Immunization (EPI) staff. Since the start of the GEEKS-EPI program, there has not been a formal assessment conducted to measure the extent to which GEEKS-EPI has been able to build local informatics workforce capacity and strengthen RI and VPD surveillance (VPDS) data quality and use in Nigeria. METHODS: we conducted a qualitative assessment to inform the extent to which GEEKS-EPI has been able to build informatics skillsets to enhance local workforce capacity, foster collaboration across government agencies, and create a sustainable informatics workforce in Nigeria. In-Depth Interviews (IDIs) and Focus Group Discussions (FGDs) were held with GEEKS-EPI supervisors, mentors, and mentees from previous GEEKS-EPI cohorts. RESULTS: while there were challenges reported during early implementation of the GEEKS-EPI program in Nigeria, particularly early on in the COVID-19 pandemic, participants and supervisors reported that the fellowship provided a framework for building a sustainable RI and VPDS informatics workforce through regular mentorship, peer-to-peer exchanges and Subject Matter Expert (SME)-led trainings. CONCLUSION: lessons learned from early implementation of GEEKS-EPI in Nigeria will help to inform its implementation in other countries, where strengthened national RI and VPDS informatics capacity is the primary objective. |
CDC's COVID-19 international vaccine implementation and evaluation program and lessons from earlier vaccine introductions
Soeters HM , Doshi RH , Fleming M , Adegoke OJ , Ajene U , Aksnes BN , Bennett S , Blau EF , Carlton JG , Clements S , Conklin L , Dahlke M , Duca LM , Feldstein LR , Gidudu JF , Grant G , Hercules M , Igboh LS , Ishizumi A , Jacenko S , Kerr Y , Konne NM , Kulkarni S , Kumar A , Lafond KE , Lam E , Longley AT , McCarron M , Namageyo-Funa A , Ortiz N , Patel JC , Perry RT , Prybylski D , Reddi P , Salman O , Sciarratta CN , Shragai T , Siddula A , Sikare E , Tchoualeu DD , Traicoff D , Tuttle A , Victory KR , Wallace A , Ward K , Wong MKA , Zhou W , Schluter WW , Fitter DL , Mounts A , Bresee JS , Hyde TB . Emerg Infect Dis 2022 28 (13) S208-s216 The US Centers for Disease Control and Prevention (CDC) supports international partners in introducing vaccines, including those against SARS-CoV-2 virus. CDC contributes to the development of global technical tools, guidance, and policy for COVID-19 vaccination and has established its COVID-19 International Vaccine Implementation and Evaluation (CIVIE) program. CIVIE supports ministries of health and their partner organizations in developing or strengthening their national capacities for the planning, implementation, and evaluation of COVID-19 vaccination programs. CIVIE's 7 priority areas for country-specific technical assistance are vaccine policy development, program planning, vaccine confidence and demand, data management and use, workforce development, vaccine safety, and evaluation. We discuss CDC's work on global COVID-19 vaccine implementation, including priorities, challenges, opportunities, and applicable lessons learned from prior experiences with Ebola, influenza, and meningococcal serogroup A conjugate vaccine introductions. |
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