2023
DOI: 10.1108/tqm-08-2022-0273
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Analyzing patient satisfaction in a rural wound care center

Abstract: PurposeAs healthcare continues to become more expensive and complex, considering the voice of the patient in the design and operation of healthcare practices is important. Wound care and rural healthcare scenarios pose additional complexities for providers and patients. This study sought to identify key determinants of patient service quality in wound care.Design/methodology/approachPatients at the wound care/ostomy clinic (WOC) in a rural hospital were surveyed using the Kano model. The Kano model enables the… Show more

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Cited by 4 publications
(1 citation statement)
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“…The model uses a structured questionnaire with pairs of functional and dysfunctional questions on each quality attribute. 29,30 The questionnaire asks respondents to rate each quality attribute by choosing one of the following options: (1) I like it that way; (2) It must be that way; (3) I am neutral; (4) I can live with it that way; and (5) I dislike it that way. Based on the responses, the attributes are classified into one of the following categories: Must-Haves, Performance Attributes, Attractive Attributes, Indifferent Attributes, and Reverse Attributes.…”
Section: Data Analysis Methodsmentioning
confidence: 99%
“…The model uses a structured questionnaire with pairs of functional and dysfunctional questions on each quality attribute. 29,30 The questionnaire asks respondents to rate each quality attribute by choosing one of the following options: (1) I like it that way; (2) It must be that way; (3) I am neutral; (4) I can live with it that way; and (5) I dislike it that way. Based on the responses, the attributes are classified into one of the following categories: Must-Haves, Performance Attributes, Attractive Attributes, Indifferent Attributes, and Reverse Attributes.…”
Section: Data Analysis Methodsmentioning
confidence: 99%