JMIR Human Factors (Mar 2022)

Personas for Better Targeted eHealth Technologies: User-Centered Design Approach

  • Iris ten Klooster,
  • Jobke Wentzel,
  • Floor Sieverink,
  • Gerard Linssen,
  • Robin Wesselink,
  • Lisette van Gemert-Pijnen

DOI
https://doi.org/10.2196/24172
Journal volume & issue
Vol. 9, no. 1
p. e24172

Abstract

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BackgroundThe full potential of eHealth technologies to support self-management and disease management for patients with chronic diseases is not being reached. A possible explanation for these lacking results is that during the development process, insufficient attention is paid to the needs, wishes, and context of the prospective end users. To overcome such issues, the user-centered design practice of creating personas is widely accepted to ensure the fit between a technology and the target group or end users throughout all phases of development. ObjectiveIn this study, we integrate several approaches to persona development into the Persona Approach Twente to attain a more holistic and structured approach that aligns with the iterative process of eHealth development. MethodsIn 3 steps, a secondary analysis was carried out on different parts of the data set using the Partitioning Around Medoids clustering method. First, we used health-related electronic patient record data only. Second, we added person-related data that were gathered through interviews and questionnaires. Third, we added log data. ResultsIn the first step, 2 clusters were found, with average silhouette widths of 0.12 and 0.27. In the second step, again 2 clusters were found, with average silhouette widths of 0.08 and 0.12. In the third step, 3 clusters were identified, with average silhouette widths of 0.09, 0.12, and 0.04. ConclusionsThe Persona Approach Twente is applicable for mixed types of data and allows alignment of this user-centered design method to the iterative approach of eHealth development. A variety of characteristics can be used that stretches beyond (standardized) medical and demographic measurements. Challenges lie in data quality and fitness for (quantitative) clustering.