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Patients Assessment of Chronic Illness Care (PACIC) in two Australian studies: structure and utility. | LitMetric

AI Article Synopsis

  • The study aimed to validate the Patients Assessment of Chronic Illness Care (PACIC) among Australian patients with chronic diseases and analyze the relationship between patient-assessed quality of care and various patient and practice characteristics.
  • A cross-sectional analysis was conducted using data from two health service intervention studies involving patients with chronic conditions, where questionnaires containing the PACIC were sent to participants, and factor analysis was used to interpret the data.
  • The results showed a different two-factor structure in Australia compared to the five-factor structure identified in the US and Europe, highlighting variations in patient interactions with the health system; further, total PACIC scores were linked to specific patient characteristics but not to practice characteristics or demographic factors like gender and age.

Article Abstract

Aims: To validate the Patients Assessment of Chronic Illness Care (PACIC) among patients with chronic disease in the Australian context and to examine the relationship between patient-assessed quality of care and patient and practice characteristics.

Methods: Cross-sectional analysis of baseline data in two independent health service intervention studies that involved patients with type 2 diabetes, ischaemic heart disease and/or hypertension in general practice. The first study involved 2552 patients from 60 urban and rural general practices. The second involved 989 patients from 26 practices in Sydney. Patients were mailed a questionnaire, which included the PACIC and Short Form Health Survey. Factor analysis was performed and the factor scores and total PACIC were analysed using multi-level regression models against practice and patient characteristics.

Results: Factor analysis revealed a two-factor solution with similar loading of PACIC items in both studies: one for shared decision making and self-management and the other for planned care. Practice characteristics were not related to PACIC scores. Scores were related to patient characteristics - education, retirement, type and number and duration of conditions.

Conclusions: The two-factor structure of the PACIC found in these Australian studies is different from the five-factor structure found in the US and the European studies. This may be related to differences in the way patients interact with the health system especially the use of Team Care plans. The association of total scores with patient characteristics was consistent with those found in other studies including a lack of association with gender, age and ethnicity. These findings should be taken into consideration when comparing patient-assessed quality of care between countries using this tool.

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Source
http://dx.doi.org/10.1111/j.1365-2753.2010.01423.xDOI Listing

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