Physician experiences when discussing the need for additional oral medication with type 2 diabetes patients: Insights from the cross-national IntroDia® study.

Diabetes research and clinical practice(2019)

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摘要
AIMS:Physician-patient communication when discussing the need for additional oral medication for type 2 diabetes (add-on) may affect the self-care of people with this condition. We aimed to investigate physicians' recalled experiences of the add-on consultation. METHODS:We conducted a cross-sectional survey of physicians treating people with type 2 diabetes in 26 countries, as part of a large cross-national study of physician-patient communication during early treatment of type 2 diabetes (IntroDia®). The survey battery included novel questions about physician experiences at add-on and the Jefferson Scale of Physician Empathy. RESULTS:Of 9247 eligible physicians, 6753 responded (73.0% response rate). Most (82%) agreed that physician-patient discussions at add-on strongly influence patients' disease acceptance and treatment adherence. Half the physicians reported ≥1 challenge in most or all add-on conversations, with a significant inverse relationship between frequency of challenges and Jefferson Scale of Physician Empathy score (standardised β coefficient: -0.313; p < 0.001). Physicians estimated that only around half their patients with type 2 diabetes follow their self-care advice. Exploratory factor analysis of physician beliefs about why their patients did not follow recommendations yielded two distinct dimensions: psychosocial barriers (e.g. depressed mood) and personal failings of the patient (e.g. not enough willpower) (r = 0.37, p < 0.001). CONCLUSIONS:Physicians' empathy and beliefs about their patients may play a significant role in their success with the add-on conversation and, consequently, promotion of patient engagement and self-care. Although the study was limited by its retrospective, cross-sectional nature, the findings from IntroDia® may inform efforts to improve diabetes care.
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