Research unit, Department of Internal Medicine, Hospital of Southern Jutland, Sonderborg, Denmark.
Institute of Regional Health Research, University of Southern Denmark, Sonderborg, Denmark.
BMC Med Res Methodol. 2021 Apr 30;21(1):94. doi: 10.1186/s12874-021-01281-2.
Systematic reviews (SRs) are considered one of the most reliable types of studies in evidence-based medicine. SRs rely on a comprehensive and systematic data gathering, including the search of academic literature databases. This study aimed to investigate which combination of databases would result in the highest overall recall rate of references when conducting SRs of qualitative research regarding diabetes mellitus. Furthermore, we aimed to investigate the current use of databases and other sources for data collection.
Twenty-six SRs (published between 2010 and 2020) of qualitative research regarding diabetes mellitus, located through PubMed, met the inclusion criteria. References of the SRs were systematically hand searched in the six academic literature databases CINAHL, MEDLINE/PubMed, PsycINFO, Embase, Web of Science, and Scopus and the academic search engine Google Scholar. Recall rates were calculated using the total number of included references retrieved by the database or database combination divided by the total number of included references, given in percentage.
The SRs searched five databases on average (range two to nine). MEDLINE/PubMed was the most commonly searched database (100% of SRs). In addition to academic databases, 18 of the 26 (69%) SRs hand searched the reference lists of included articles. This technique resulted in a median (IQR) of 2.5 (one to six) more references being included per SR than by database searches alone. 27 (5.4%) references were found only in one of six databases (when Google Scholar was excluded), with CINAHL retrieving the highest number of unique references (n = 15). The combinations of MEDLINE/PubMed and CINAHL (96.4%) and MEDLINE/PubMed, CINAHL, and Embase (98.8%) yielded the highest overall recall rates, with Google Scholar excluded.
We found that the combinations of MEDLINE/PubMed and CINAHL and MEDLINE/PubMed, CINAHL, and Embase yielded the highest overall recall rates of references included in SRs of qualitative research regarding diabetes mellitus. However, other combinations of databases yielded corresponding recall rates and are expected to perform comparably. Google Scholar can be a useful supplement to traditional scientific databases to ensure an optimal and comprehensive retrieval of relevant references.
系统评价(SRs)被认为是循证医学中最可靠的研究类型之一。SRs 依赖于全面和系统的数据收集,包括对学术文献数据库的搜索。本研究旨在调查在进行关于糖尿病的定性研究的 SR 时,哪种数据库组合可以获得最高的总体参考文献召回率。此外,我们还旨在调查当前用于数据库和其他来源的数据收集情况。
通过 PubMed 定位,共有 26 项关于糖尿病的定性研究的 SR 符合纳入标准。对这些 SR 的参考文献进行了系统的手工检索,检索了六个学术文献数据库 CINAHL、MEDLINE/PubMed、PsycINFO、Embase、Web of Science 和 Scopus 以及学术搜索引擎 Google Scholar。使用从数据库或数据库组合中检索到的包含参考文献总数除以包含参考文献总数,以百分比计算召回率。
SR 平均搜索五个数据库(范围为两个到九个)。MEDLINE/PubMed 是最常被搜索的数据库(100%的 SR)。除了学术数据库外,26 项 SR 中有 18 项(69%)还手工检索了纳入文章的参考文献列表。这种技术使每项 SR 平均多收录了 2.5(1 到 6)条参考文献。在排除 Google Scholar 后,只有六个数据库中的一个(n=15)发现了 27(5.4%)条参考文献,CINAHL 检索到的独特参考文献数量最多(n=15)。排除 Google Scholar 后,MEDLINE/PubMed 和 CINAHL(96.4%)以及 MEDLINE/PubMed、CINAHL 和 Embase(98.8%)的组合产生了最高的总体参考文献召回率。
我们发现,在排除 Google Scholar 后,MEDLINE/PubMed 和 CINAHL 以及 MEDLINE/PubMed、CINAHL 和 Embase 的组合产生了关于糖尿病的定性研究的 SR 中纳入的参考文献的最高总体召回率。然而,其他数据库组合也产生了相应的召回率,预计表现相当。Google Scholar 可以作为传统科学数据库的有用补充,以确保最佳和全面检索相关参考文献。