医学
累犯
奇纳
出勤
人口
肝移植
移植
药物滥用
精神科
家庭医学
老年学
内科学
心理干预
环境卫生
经济增长
经济
作者
Dami Ko,Rebecca J. Muehrer,Lisa C. Bratzke
标识
DOI:10.1177/1526924818765814
摘要
Introduction: Although self-management is essential for liver transplant recipients, there is no review that has synthesized findings related to self-management in this population. Objective: This narrative review aimed to synthesize the current findings and identify the gaps in knowledge about self-management in liver recipients. Methods: A search of PubMed, CINAHL Plus, PsychINFO, ProQuest, and Web of Science was conducted using the following terms: [Self-care OR Self-management OR Health behavior] AND [Liver transplantation]. Peer-reviewed published research articles focusing on self-management of adult recipients were selected. A total of 23 articles were included for review. Two reviewers independently reviewed the full text of selected articles and extracted the data about definitions, measurements, and findings regarding self-management. Results: Three areas of self-management were identified, including medication nonadherence (n = 11), alcohol recidivism (n = 11), and health maintenance (n = 5). Reported rates of medication nonadherence ranged from 8% to 66%. Medication nonadherence was related to recipients’ demographic (eg, age or sex), transplant-related (eg, time since transplant), and pretransplant variables (eg, history of substance/alcohol abuse). Reported alcohol recidivism rates ranged from 3% to 95%. Age, pretransplant variables (eg, abstinent time before transplant), and personality disorder were identified to be related to alcohol recidivism after transplant. The health maintenance studies discussed behaviors such as smoking, clinic appointment attendance, or vaccination/health screening behaviors of recipients. Discussion: Self-management studies in liver recipients have been narrowly focused on medication nonadherence and alcohol recidivism. To improve self-management in recipients, self-management beyond medication nonadherence and alcohol recidivism should be comprehensively examined.
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