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将快速综述嵌入卫生政策和体系决策中:来自四个中低收入国家的影响和经验教训。

Embedding rapid reviews in health policy and systems decision-making: Impacts and lessons learned from four low- and middle-income countries.

机构信息

Knowledge Translation Program, Li Ka Shing Knowledge Institute, St. Michael's Hospital, Unity Health Toronto, 209 Victoria Street, 7th Floor, East Building, Toronto, ON, M5B 1T8, Canada.

Partnership for Maternal, Newborn and Child Health (PMNCH), World Health Organization, Geneva, Switzerland.

出版信息

Health Res Policy Syst. 2023 Jun 6;21(1):45. doi: 10.1186/s12961-023-00992-w.

Abstract

BACKGROUND

Demand for rapid evidence-based syntheses to inform health policy and systems decision-making has increased worldwide, including in low- and middle-income countries (LMICs). To promote use of rapid syntheses in LMICs, the WHO's Alliance for Health Policy and Systems Research (AHPSR) created the Embedding Rapid Reviews in Health Systems Decision-Making (ERA) Initiative. Following a call for proposals, four LMICs were selected (Georgia, India, Malaysia and Zimbabwe) and supported for 1 year to embed rapid response platforms within a public institution with a health policy or systems decision-making mandate.

METHODS

While the selected platforms had experience in health policy and systems research and evidence syntheses, platforms were less confident conducting rapid evidence syntheses. A technical assistance centre (TAC) was created from the outset to develop and lead a capacity-strengthening program for rapid syntheses, tailored to the platforms based on their original proposals and needs as assessed in a baseline questionnaire. The program included training in rapid synthesis methods, as well as generating synthesis demand, engaging knowledge users and ensuring knowledge uptake. Modalities included live training webinars, in-country workshops and support through phone, email and an online platform. LMICs provided regular updates on policy-makers' requests and the rapid products provided, as well as barriers, facilitators and impacts. Post-initiative, platforms were surveyed.

RESULTS

Platforms provided rapid syntheses across a range of AHPSR themes, and successfully engaged national- and state-level policy-makers. Examples of substantial policy impact were observed, including for COVID-19. Although the post-initiative survey response rate was low, three quarters of those responding felt confident in their ability to conduct a rapid evidence synthesis. Lessons learned coalesced around three themes - the importance of context-specific expertise in conducting reviews, facilitating cross-platform learning, and planning for platform sustainability.

CONCLUSIONS

The ERA initiative successfully established rapid response platforms in four LMICs. The short timeframe limited the number of rapid products produced, but there were examples of substantial impact and growing demand. We emphasize that LMICs can and should be involved not only in identifying and articulating needs but as co-designers in their own capacity-strengthening programs. More time is required to assess whether these platforms will be sustained for the long-term.

摘要

背景

全球范围内,包括在低收入和中等收入国家(LMICs)中,对快速循证综合研究以支持卫生政策和系统决策的需求不断增加。为了促进在 LMICs 中使用快速综合研究,世界卫生组织的卫生政策和系统研究联盟(AHPSR)创建了“将快速综述纳入卫生系统决策(ERA)倡议”。在提出建议后,选择了四个 LMIC(格鲁吉亚、印度、马来西亚和津巴布韦)并支持它们开展为期 1 年的工作,以便在具有卫生政策或系统决策授权的公共机构中嵌入快速响应平台。

方法

虽然选定的平台在卫生政策和系统研究以及证据综合方面具有经验,但在进行快速证据综合方面的信心不足。从一开始就创建了一个技术援助中心(TAC),以根据平台的原始提案和基线调查问卷中评估的需求,为快速综合制定和领导一项能力建设计划。该计划包括快速综合方法培训,以及生成综合需求、让知识使用者参与并确保知识采用。模式包括现场培训网络研讨会、国内讲习班以及通过电话、电子邮件和在线平台提供支持。LMIC 定期提供关于决策者请求和提供的快速产品的更新,以及障碍、促进因素和影响的信息。倡议结束后,对平台进行了调查。

结果

平台提供了涵盖 AHPSR 主题范围的快速综合研究,并成功地与国家和州级政策制定者接触。观察到了一些重大政策影响的例子,包括 COVID-19。尽管倡议结束后的调查答复率很低,但四分之三的答复者对自己进行快速证据综合的能力有信心。经验教训集中在三个主题上——在进行审查方面具有特定于上下文的专业知识的重要性、促进跨平台学习以及规划平台可持续性。

结论

ERA 倡议成功地在四个 LMIC 中建立了快速响应平台。时间框架较短限制了快速产品的数量,但有一些例子表明产生了重大影响和不断增长的需求。我们强调,LMIC 不仅可以而且应该参与确定和表达需求,而且还可以作为自己能力建设计划的共同设计者。需要更多的时间来评估这些平台是否能够长期维持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2b67/10245645/6e7a5be72059/12961_2023_992_Fig1_HTML.jpg

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