Background: The majority of studies included in recent reviews of impact for public
and patient involvement (PPI) in health research had a qualitative design. PPI in solely
quantitative designs is underexplored, particularly its impact on statistical analysis.
Statisticians in practice have a long history of working in both consultative (indirect)
and collaborative (direct) roles in health research, yet their perspective on PPI in
quantitative health research has never been explicitly examined.
Objective: To explore the potential and challenges of PPI from a statistical perspective
at distinct stages of quantitative research, that is sampling, measurement and
statistical analysis, distinguishing between indirect and direct PPI.
Conclusions: Statistical analysis is underpinned by having a representative sample,
and a collaborative or direct approach to PPI may help achieve that by supporting
access to and increasing participation of under-represented
groups in the population.
Acknowledging and valuing the role of lay knowledge of the context in statistical
analysis and in deciding what variables to measure may support collective learning
and advance scientific understanding, as evidenced by the use of participatory modelling
in other disciplines. A recurring issue for quantitative researchers, which reflects
quantitative sampling methods, is the selection and required number of PPI
contributors, and this requires further methodological development. Direct approaches
to PPI in quantitative health research may potentially increase its impact,
but the facilitation and partnership skills required may require further training for all
stakeholders, including statisticians.