BMC Medical Informatics and Decision Making (Jan 2021)

Use of a quantitative data report in a hypothetical decision scenario for health policymaking: a computer-assisted laboratory study

  • Pamela Wronski,
  • Michel Wensing,
  • Sucheta Ghosh,
  • Lukas Gärttner,
  • Wolfgang Müller,
  • Jan Koetsenruijter

DOI
https://doi.org/10.1186/s12911-021-01401-4
Journal volume & issue
Vol. 21, no. 1
pp. 1 – 14

Abstract

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Abstract Background Quantitative data reports are widely produced to inform health policy decisions. Policymakers are expected to critically assess provided information in order to incorporate the best available evidence into the decision-making process. Many other factors are known to influence this process, but little is known about how quantitative data reports are actually read. We explored the reading behavior of (future) health policy decision-makers, using innovative methods. Methods We conducted a computer-assisted laboratory study, involving starting and advanced students in medicine and health sciences, and professionals as participants. They read a quantitative data report to inform a decision on the use of resources for long-term care in dementia in a hypothetical decision scenario. Data were collected through eye-tracking, questionnaires, and a brief interview. Eye-tracking data were used to generate ‘heatmaps’ and five measures of reading behavior. The questionnaires provided participants’ perceptions of understandability and helpfulness as well as individual characteristics. Interviews documented reasons for attention to specific report sections. The quantitative analysis was largely descriptive, complemented by Pearson correlations. Interviews were analyzed by qualitative content analysis. Results In total, 46 individuals participated [students (85%), professionals (15%)]. Eye-tracking observations showed that the participants spent equal time and attention for most parts of the presented report, but were less focused when reading the methods section. The qualitative content analysis identified 29 reasons for attention to a report section related to four topics. Eye-tracking measures were largely unrelated to participants’ perceptions of understandability and helpfulness of the report. Conclusions Eye-tracking data added information on reading behaviors that were not captured by questionnaires or interviews with health decision-makers.

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