医学
荟萃分析
糖尿病
指南
自我管理
家庭医学
糖尿病管理
系统回顾
斯科普斯
疾病管理
梅德林
疾病
内科学
2型糖尿病
病理
帕金森病
法学
政治学
内分泌学
机器学习
计算机科学
作者
Teshome Tesfaye Habebo,Ebrahim Jaafari Pooyan,Ali Mohammad Mosadeghrad,Getachew Ossabo Babore,Blen Kassahun Dessu
标识
DOI:10.4314/ejhs.v30i4.18
摘要
BACKGROUND: Diabetes has no cure so far, but appropriate self-management contributes to delay or control its progression. However, poor self-management by diabetic patients adds to disease burden. The pooled prevalence of overall, and its main components of poor self-management among Ethiopian diabetic patients remain elusive. Hence, this study aimed to determine the prevalence of poor diabetes self-management behaviors among diabetic patients in Ethiopia.METHOD: by using different combinations of search terms, we accessed articles done until February 15, 2020 through Pubmed, Scopus, Web of Science and Embase databases. Newcastle-Ottawa quality assessment scale was used for quality assessment, and STATA version 14 software along with the random-effects model was employed for statistical analyses. The Preferred Reporting Items for Systematic Reviews and Meta Analyses (PRISMA.) guideline was followed to report the results.RESULT: Twenty-one studies with 7,168 participants were included in this meta-analysis. The overall pooled prevalence of poor self-management behavior among diabetic patients in Ethiopia was 49.79% (95% CI: 43.58%, 56.01%). Based on subgroup analysis, the estimated magnitudes of poor selfmanagement by regions were 68.58% in Tigray, 55.46% in Harari, 54.74%, in Amhara, 40.90%, in SNNPRS and 37.06% in Addis Ababa. The worst (80.91%) and relatively better (24.65%) self-management components were observed on self-blood glucose monitoring and medication adherence, respectively.CONCLUSION: One in two diabetic patients in Ethiopia had poor self-management. Thus, we strongly recommend to the ministry of health and universities to train diabetes health educators, and the health facilities to deliver tailored diabetes health education.
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