Needs and feasibility of living systematic reviews (LSRs): Experience from LSRs on COVID-19 vaccine effectiveness

Zeitschrift für Evidenz, Fortbildung und Qualität im Gesundheitswesen(2024)

引用 0|浏览3
暂无评分
摘要
During 2021 and 2023, a team of researchers at the Robert Koch Institute (RKI) and partnering institutions conducted two living systematic reviews (LSRs) on the effectiveness of COVID-19 vaccines in different age groups to inform recommendations of the Standing Committee on Vaccination in Germany (Ständige Impfkommission, STIKO). Based on our experience from the realization of these LSRs, we developed certain criteria to assess the needs and feasibility of conducting LSRs. Combining these with previously established criteria, we developed the following set to inform future planning of LSRs for STIKO: Needs criterion (N)1: Relevance of the research question, N2: Certainty of evidence (CoE) at baseline; N3: Expected need for Population-Intervention-Comparator-Outcome (PICO) adaptations; N4: Expected new evidence over time; N5: Expected impact of new evidence on CoE; Feasibility criterion (F)1: Availability of sufficient human resources; F2: Feasibility of timely dissemination of the results to inform decision-making. For each criterion we suggest rating options which may support the decision to conduct an LSR or other forms of evidence synthesis when following the provided flowchart.The suggested criteria were developed on the basis of the experiences from exemplary reviews in a specific research field (i.e., COVID-19 vaccination), and did not follow a formal development or validation process. However, these criteria might also be useful to assess whether questions from other research fields can and should be answered using the LSR approach, or assist in determining whether the use of an LSR is sensible and feasible for specific questions in health policy and practice.
更多
查看译文
关键词
Living systematic review,Decision criteria,Vaccination,Recommendation,COVID-19,Living Systematic Review,Entscheidungskriterien,Impfung,Impfempfehlung,COVID-19
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要