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如果临床医生使用 AUDIT-C 而不是非结构化评估,那么有风险饮酒的澳大利亚原住民客户将得到三倍以上的支持。

More than three times as many Indigenous Australian clients at risk from drinking could be supported if clinicians used AUDIT-C instead of unstructured assessments.

机构信息

NHMRC Centre of Research Excellence in Indigenous Health and Alcohol, Faculty of Medicine and Health, Central Clinical School, Discipline of Addiction Medicine, Level 6, King George V Building, Drug Health Services, 83-117 Missenden Road, Camperdown, NSW, 2050, Australia.

The Edith Collins Centre (Translational Research in Alcohol, Drugs and Toxicology), Sydney Local Health District, Sydney, NSW, Australia.

出版信息

Addict Sci Clin Pract. 2022 Apr 5;17(1):23. doi: 10.1186/s13722-022-00306-5.

Abstract

BACKGROUND

Aboriginal and Torres Strait Islander ('Indigenous') Australians experience a greater burden of disease from alcohol consumption than non-Indigenous peoples. Brief interventions can help people reduce their consumption, but people drinking at risky levels must first be detected. Valid screening tools (e.g., AUDIT-C) can help clinicians identify at-risk individuals, but clinicians also make unstructured assessments. We aimed to determine how frequently clinicians make unstructured risk assessments and use AUDIT-C with Indigenous Australian clients. We also aimed to determine the accuracy of unstructured drinking risk assessments relative to AUDIT-C screening. Finally, we aimed to explore whether client demographics influence unstructured drinking risk assessments.

METHODS

We performed cross-sectional analysis of a large clinical dataset provided by 22 Aboriginal Community Controlled Health Services in Australia. We examined instances where clients were screened with unstructured assessments and with AUDIT-C within the same two-monthly period. This aggregated data included 9884 observations. We compared the accuracy of unstructured risk assessments against AUDIT-C using multi-level sensitivity and specificity analysis. We used multi-level logistic regression to identify demographic factors that predict risk status in unstructured assessments while controlling for AUDIT-C score.

RESULTS

The primary variables were AUDIT-C score and unstructured drinking risk assessment; demographic covariates were client age and gender, and service remoteness. Clinicians made unstructured drinking risk assessments more frequently than they used AUDIT-C (17.11% and 10.85% of clinical sessions respectively). Where both measures were recorded within the same two-month period, AUDIT-C classified more clients as at risk from alcohol consumption than unstructured assessments. When using unstructured assessments, clinicians only identified approximately one third of clients drinking at risky levels based on their AUDIT-C score (sensitivity = 33.59% [95% CI 22.03, 47.52], specificity = 99.35% [95% CI 98.74, 99.67]). Controlling for AUDIT-C results and demographics (gender and service remoteness), clinicians using unstructured drinking risk assessments were more likely to classify older clients as being at risk from alcohol consumption than younger clients.

CONCLUSIONS

Evidence-based screening tools like AUDIT-C can help clinicians ensure that Indigenous Australian clients (and their families and communities) who are at risk from alcohol consumption are better detected and supported.

摘要

背景

与非原住民相比,澳大利亚原住民和托雷斯海峡岛民(“原住民”)因饮酒而患病的负担更大。简短的干预措施可以帮助人们减少饮酒量,但必须首先发现饮酒量有风险的人。有效的筛查工具(例如 AUDIT-C)可以帮助临床医生识别有风险的个体,但临床医生也会进行非结构化评估。我们旨在确定临床医生与澳大利亚原住民客户进行非结构化风险评估和使用 AUDIT-C 的频率。我们还旨在确定非结构化饮酒风险评估相对于 AUDIT-C 筛查的准确性。最后,我们旨在探讨客户人口统计学因素是否会影响非结构化饮酒风险评估。

方法

我们对澳大利亚 22 个原住民社区控制的医疗服务机构提供的大型临床数据集进行了横断面分析。我们检查了在同一两个月内同时使用非结构化评估和 AUDIT-C 对客户进行筛查的情况。此汇总数据包括 9884 次观察。我们使用多层次敏感性和特异性分析比较了非结构化风险评估与 AUDIT-C 的准确性。我们使用多层次逻辑回归来确定在控制 AUDIT-C 评分的情况下,预测非结构化评估中风险状况的人口统计学因素。

结果

主要变量是 AUDIT-C 评分和非结构化饮酒风险评估;人口统计学协变量是客户年龄和性别以及服务偏远程度。临床医生进行非结构化饮酒风险评估的频率高于使用 AUDIT-C(分别为 17.11%和 10.85%的临床会议)。在同一两个月内记录这两个测量值的情况下,AUDIT-C 将更多的客户归类为饮酒风险。当使用非结构化评估时,临床医生仅根据 AUDIT-C 评分识别出大约三分之一处于饮酒风险水平的客户(敏感性=33.59%[95%CI 22.03,47.52],特异性=99.35%[95%CI 98.74,99.67])。在控制 AUDIT-C 结果和人口统计学因素(性别和服务偏远程度)的情况下,使用非结构化饮酒风险评估的临床医生更有可能将年龄较大的客户归类为饮酒风险。

结论

AUDIT-C 等基于证据的筛查工具可以帮助临床医生确保有酒精消费风险的澳大利亚原住民客户(及其家庭和社区)得到更好的发现和支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e326/8981780/725df43253f4/13722_2022_306_Fig1_HTML.jpg

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