无刺
纳曲酮
二硫仑
医学
社会心理的
酒精使用障碍
精神科
禁欲
酒精依赖
重症监护医学
酒
药理学
类阿片
内科学
化学
受体
生物化学
作者
Aniket Malhotra,Karen Drexler,Michael Hsu,Yi‐lang Tang
摘要
Abstract Background and Objectives Alcohol use disorder (AUD) is a significant public health concern, with underutilized effective treatments, particularly in special populations. This article summarizes the current evidence and guidelines for treating AUD in special populations. Methods This article is a literature review that synthesizes the latest research on AUD treatment for special populations. We screened 242 articles and included 57 in our final review. Results There are four food and Drug Administration‐approved medications for AUD (MAUD): disulfiram, oral naltrexone, extended‐release injectable naltrexone (XR‐NTX), and acamprosate. Naltrexone and disulfiram have the potential to cause liver toxicity, and acamprosate should be avoided in patients with severe kidney disease. Psychosocial treatments should be considered first‐line for pregnant and nursing patients. Naltrexone is contraindicated in patients on opioids, as it may precipitate acute withdrawal. For patients experiencing homelessness, nonabstinent treatment goals may be more practical, and XR‐NTX should be considered to improve adherence. Limited evidence suggests medication can improve AUD treatment outcomes in adolescents and young adults. For patients with poor treatment response despite adequate medication adherence, switching to a different medication and augmentation with psychosocial treatments should be considered. Discussion and Conclusions Understanding the unique considerations for special populations with AUD is crucial, and addressing their special needs may improve their treatment outcomes. Scientific Significance Our study significantly contributes to the existing literature by summarizing crucial information for the treatment of AUD in special populations, highlighting distinct challenges, and emphasizing tailored approaches to improve overall health and well‐being.
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