医学
心理干预
民族
糖化血红素
人口
糖尿病管理
2型糖尿病
2型糖尿病
干预(咨询)
老年学
糖尿病
护理部
环境卫生
人类学
内分泌学
社会学
作者
Nevin Navodia,Olive Wahoush,Tricia S. Tang,Jennifer Yost,Sarah Ibrahim,Diana Sherifali
标识
DOI:10.1016/j.jcjd.2019.04.010
摘要
Diabetes mellitus is one of the most common chronic diseases worldwide and a leading cause of morbidity and mortality. A high prevalence of type 2 diabetes mellitus has been noted among the South Asian population, in general, and migrant South Asians. Self-management is considered a proponent to the management of diabetes. Although empirical evidence supports such interventions, little is known regarding the cultural congruency of such interventions for diverse cultural and ethnic groups, particularly South Asians. Our purpose was to determine the effectiveness of diabetes self-management education (DSME) and diabetes self-management support (DSMS), interventions on migrant South Asian's glycated hemoglobin (A1C) levels and whether DSME and DSMS interventions are culturally tailored to the migrant South Asian population. In this study, a systematic review, with narrative synthesis, was conducted. Data were extracted on the study, participant, and intervention characteristics and the cultural congruity using Leininger's sunrise model. Four studies meeting the inclusion criteria were included. Overall, most (75%) of the DSME and DSMS interventions were not effective in reducing A1C levels. Specific to cultural congruity of the interventions, all studies delivered the intervention based on the participant's preferred language and incorporated culturally sensitive dietary information primarily by persons of the same cultural and ethnic background. However, little information was presented on the provision and integration of culturally congruent care. Findings highlight the importance of rethinking the way in which South Asians are labelled as a homogenous group and accounting for such differences when adapting and designing culturally tailored DSME and or DSMS interventions in clinical practice.
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