检查表
公共卫生
大流行
数据收集
医疗保健
心理学
2019年冠状病毒病(COVID-19)
医学教育
医学
家庭医学
业务
环境卫生
护理部
政治学
社会学
认知心理学
法学
病理
传染病(医学专业)
疾病
社会科学
作者
Dong Xu,Yao Cai,Xiaohui Wang,Yaolong Chen,Weiping Gong,Jing Liao,Jian Zhou,Zhongliang Zhou,Nan Zhang,Chengxiang Tang,Baibing Mi,Yun Lü,Ruixin Wang,Qing Zhao,Wenjun He,Huijuan Liang,Jinghua Li,Ke Ju
标识
DOI:10.2105/ajph.2022.306779
摘要
We analyzed COVID-19 influences on the design, implementation, and validity of assessing the quality of primary health care using unannounced standardized patients (USPs) in China. Because of the pandemic, we crowdsourced our funding, removed tuberculosis from the USP case roster, adjusted common cold and asthma cases, used hybrid online-offline training for USPs, shared USPs across provinces, and strengthened ethical considerations. With those changes, we were able to conduct fieldwork despite frequent COVID-19 interruptions. Furthermore, the USP assessment tool maintained high validity in the quality checklist (criteria), USP role fidelity, checklist completion, and physician detection of USPs. Our experiences suggest that the pandemic created not only barriers but also opportunities to innovate ways to build a resilient data collection system. To build data system reliance, we recommend harnessing the power of technology for a hybrid model of remote and in-person work, learning from the sharing economy to pool strengths and optimize resources, and dedicating individual and group leadership to problem-solving and results. (Am J Public Health. 2022;112(6):913-922. https://doi.org/10.2105/AJPH.2022.306779).
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