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Development of a universal short patient satisfaction questionnaire on the basis of SERVQUAL: Psychometric analyses with data of diabetes and stroke patients from six different European countries

Author

Listed:
  • Uwe Konerding
  • Tom Bowen
  • Sylvia G Elkhuizen
  • Raquel Faubel
  • Paul Forte
  • Eleftheria Karampli
  • Tomi Malmström
  • Elpida Pavi
  • Paulus Torkki

Abstract

Objective: A short questionnaire which can be applied for assessing patient satisfaction in different contexts and different countries is to be developed. Methods: Six items addressing tangibles, reliability, responsiveness, assurance, empathy, and communication were analysed. The first five items stem from SERVQUAL (SERVice QUALity), the last stems from the discussion about SERVQUAL. The analyses were performed with data from 12 surveys conducted in six different countries (England, Finland, Germany, Greece, the Netherlands, Spain) covering two different conditions (type 2 diabetes, stroke). Sample sizes for included participants are 247 in England, 160 in Finland, 231 in Germany, 152 in Greece, 316 in the Netherlands and 96 in Spain for the diabetes surveys; and 101 in England, 139 in Finland, 107 in Germany, 58 in Greece, 185 in the Netherlands, and 92 in Spain for the stroke surveys. The items were tested by (1) bivariate correlations between the items and an item addressing ‘general satisfaction’, (2) multivariate regression analyses with ‘general satisfaction’ as criterion and the items as predictors, and (3) bivariate correlations between sum scores and ‘general satisfaction’. Results: The correlations with ‘general satisfaction’ are 0.48 for tangibles, 0.56 for reliability, 0.58 for responsiveness, 0.47 for assurance, 0.53 for empathy, and 0.56 for communication. In the multivariate regression analysis, the regression coefficient for assurance is significantly negative while all other regression coefficients are significantly positive. In a multivariate regression analysis without the item ‘assurance’ all regression coefficients are positive. The correlation between the sum score and ‘general satisfaction’ is 0.608 for all six items and 0.618 for the finally remaining five items. The country specific results are similar. Conclusions: The five items which remain after removing ‘assurance’, i.e. the SERVQUAL-MOD-5, constitute a short patient satisfaction index which can usefully be applied for different medical conditions and in different countries.

Suggested Citation

  • Uwe Konerding & Tom Bowen & Sylvia G Elkhuizen & Raquel Faubel & Paul Forte & Eleftheria Karampli & Tomi Malmström & Elpida Pavi & Paulus Torkki, 2019. "Development of a universal short patient satisfaction questionnaire on the basis of SERVQUAL: Psychometric analyses with data of diabetes and stroke patients from six different European countries," PLOS ONE, Public Library of Science, vol. 14(10), pages 1-24, October.
  • Handle: RePEc:plo:pone00:0197924
    DOI: 10.1371/journal.pone.0197924
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    References listed on IDEAS

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    1. Li-hua Fan & Lei Gao & Xin Liu & Shi-hong Zhao & Hui-tong Mu & Zhe Li & Lei Shi & Ling-ling Wang & Xiao-li Jia & Min Ha & Feng-ge Lou, 2017. "Patients’ perceptions of service quality in China: An investigation using the SERVQUAL model," PLOS ONE, Public Library of Science, vol. 12(12), pages 1-13, December.
    2. Peter M. Fayers & David J. Hand, 2002. "Causal variables, indicator variables and measurement scales: an example from quality of life," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 165(2), pages 233-253, June.
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    2. Mahdi Mahdavi & Leila Doshmangir & Ebrahim Jaafaripooyan, 2021. "Rethinking health services operations to embrace patient experience of healthcare journey," International Journal of Health Planning and Management, Wiley Blackwell, vol. 36(6), pages 2020-2029, November.

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