BMC Public Health (Aug 2016)

High quality standards for a large-scale prospective population-based observational cohort: Constances

  • Fabrice Ruiz,
  • Marcel Goldberg,
  • Sylvie Lemonnier,
  • Anna Ozguler,
  • Evelyne Boos,
  • Alain Brigand,
  • Violaine Giraud,
  • Thierry Perez,
  • Nicolas Roche,
  • Marie Zins

DOI
https://doi.org/10.1186/s12889-016-3439-5
Journal volume & issue
Vol. 16, no. 1
pp. 1 – 10

Abstract

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Abstract Background Long-term multicentre studies are subject to numerous factors that may affect the integrity of their conclusions. Quality control and standardization of data collection are crucial to minimise the biases induced by these factors. Nevertheless, tools implemented to manage biases are rarely described in publications about population-based cohorts. This report aims to describe the processes implemented to control biases in the Constances cohort taking lung function results as an example. Methods Constances is a general-purpose population-based cohort of 200,000 participants. Volunteers attend physical examinations at baseline and then every 5 years at selected study sites. Medical device specifications and measurement methods have to comply with Standard Operating Procedures developed by experts. Protocol deviations are assessed by on-site inspections and database controls. In February 2016, more than 94,000 participants yielding around 30 million readings from physical exams, had been covered by our quality program. Results Participating centres accepted to revise their practices in accordance with the study research specifications. Distributors of medical devices were asked to comply with international guidelines and Constances requirements. Close monitoring enhanced the quality of measurements and recordings of the physical exams. Regarding lung function testing, spirometry acceptability rates per operator doubled in some sites within a few months and global repeatability reached 96.7 % for 29,772 acceptable maneuvers. Conclusions Despite Constances volunteers being followed in multiple sites with heterogeneous materials, the investment of significant resources to set up and maintain a continuous quality management process has proved effective in preventing drifts and improving accuracy of collected data.

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