Assessing patient preferences for the delivery of different community-based models of care using a discrete choice experiment

利用离散选择实验评估患者对不同社区医疗服务模式的偏好

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Abstract

OBJECTIVES: To assess patient preferences for different models of care defined by location of care, frequency of care and principal carer within community-based health-care services for older people. DESIGN: Discrete choice experiment administered within a face-to-face interview. SETTING: An intermediate care service in a large city within the United Kingdom. PARTICIPANTS: The projected sample size was calculated to be 200; however, 77 patients were recruited to the study. The subjects had recently been discharged from hospital and were living at home and were receiving short-term care by a publicly funded intermediate care service. INTERVENTIONS: Not applicable. MAIN OUTCOME MEASURE: The degree of preference, measured using single utility score, for individual service characteristics presented within a series of potential care packages. RESULTS: Location of care was the dominant service characteristics with care at home being the strongly stated preference when compared with outpatient care (0.003), hospital care (<0.001) and nursing home care (<0.001) relative to home care, although this was less pronounced among less sick patients. Additionally, the respondents indicated a dislike for very frequent care contacts. No particular type of professional carer background was universally preferred but, unsurprisingly, there was evidence that sick patients showed a preference for nurse-led care. CONCLUSIONS: Patients have clear preferences for the location for their care and were able to state preferences between different care packages when their ideal service was not available. Service providers can use this information to assess which models of care are most preferred within resource constraints.

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