Quantitative bias analysis methods for summary-level epidemiologic data in the peer-reviewed literature: a systematic review

Quantitative bias analysis (QBA) methods evaluate the impact of biases arising from systematic errors on observational study results. This systematic review aimed to summarize the range and characteristics of QBA methods for summary-level data published in the peer-reviewed literature. We searched M...

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Veröffentlicht in:Journal of clinical epidemiology 2024-11, Vol.175, p.111507, Article 111507
Hauptverfasser: Shi, Xiaoting, Liu, Ziang, Zhang, Mingfeng, Hua, Wei, Li, Jie, Lee, Joo-Yeon, Dharmarajan, Sai, Nyhan, Kate, Naimi, Ashley, Lash, Timothy L., Jeffery, Molly M., Ross, Joseph S., Liew, Zeyan, Wallach, Joshua D.
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Sprache:eng
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Zusammenfassung:Quantitative bias analysis (QBA) methods evaluate the impact of biases arising from systematic errors on observational study results. This systematic review aimed to summarize the range and characteristics of QBA methods for summary-level data published in the peer-reviewed literature. We searched MEDLINE, Embase, Scopus, and Web of Science for English-language articles describing QBA methods. For each QBA method, we recorded key characteristics, including applicable study designs, bias(es) addressed; bias parameters, and publicly available software. The study protocol was preregistered on the Open Science Framework (https://osf.io/ue6vm/). Our search identified 10,249 records, of which 53 were articles describing 57 QBA methods for summary-level data. Of the 57 QBA methods, 53 (93%) were explicitly designed for observational studies, and 4 (7%) for meta-analyses. There were 29 (51%) QBA methods that addressed unmeasured confounding, 19 (33%) misclassification bias, 6 (11%) selection bias, and 3 (5%) multiple biases. Thirty-eight (67%) QBA methods were designed to generate bias-adjusted effect estimates and 18 (32%) were designed to describe how bias could explain away observed findings. Twenty-two (39%) articles provided code or online tools to implement the QBA methods. In this systematic review, we identified a total of 57 QBA methods for summary-level epidemiologic data published in the peer-reviewed literature. Future investigators can use this systematic review to identify different QBA methods for summary-level epidemiologic data. [Display omitted]
ISSN:0895-4356
1878-5921
1878-5921
DOI:10.1016/j.jclinepi.2024.111507