4.4 Review

Bias in pharmacoepidemiologic studies using secondary health care databases: a scoping review

Journal

BMC MEDICAL RESEARCH METHODOLOGY
Volume 19, Issue -, Pages -

Publisher

BMC
DOI: 10.1186/s12874-019-0695-y

Keywords

Pharmacoepidemiology; Observational studies; Bias; Confounding factors; Medical records; Electronic health records; Administrative claims; Medical record linkage

Funding

  1. Regional Ministry of Education, University and Vocational Training (Conselleria de Educacion, Universidad y Formacion Profesional, Xunta de Galicia), Santiago de Compostela, Spain [ED431C 2018/20]

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BackgroundThe availability of clinical and therapeutic data drawn from medical records and administrative databases has entailed new opportunities for clinical and epidemiologic research. However, these databases present inherent limitations which may render them prone to new biases. We aimed to conduct a structured review of biases specific to observational clinical studies based on secondary databases, and to propose strategies for the mitigation of those biases.MethodsScoping review of the scientific literature published during the period 2000-2018 through an automated search of MEDLINE, EMBASE and Web of Science, supplemented with manually cross-checking of reference lists. We included opinion essays, methodological reviews, analyses or simulation studies, as well as letters to the editor or retractions, the principal objective of which was to highlight the existence of some type of bias in pharmacoepidemiologic studies using secondary databases.ResultsA total of 117 articles were included. An increasing trend in the number of publications concerning the potential limitations of secondary databases was observed over time and across medical research disciplines. Confounding was the most reported category of bias (63.2% of articles), followed by selection and measurement biases (47.0% and 46.2% respectively). Confounding by indication (32.5%), unmeasured/residual confounding (28.2%), outcome misclassification (28.2%) and immortal time bias (25.6%) were the subcategories most frequently mentioned.ConclusionsSuboptimal use of secondary databases in pharmacoepidemiologic studies has introduced biases in the studies, which may have led to erroneous conclusions. Methods to mitigate biases are available and must be considered in the design, analysis and interpretation phases of studies using these data sources.

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