探索阿片类药物过量患者特征的交叉性:聚类分析。

IF 2.7 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Kenneth Chu, Gisèle Carrière, Rochelle Garner, Kevin Bosa, Deirdre Hennessy, Claudia Sanmartin
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引用次数: 0

摘要

背景:随着加拿大继续经历阿片类药物危机,了解阿片类药物过量患者的人口统计学、社会经济和服务使用特征之间的交集,以更好地为预防和治疗方案提供信息,这一点很重要。数据和方法:加拿大统计局不列颠哥伦比亚省阿片类药物过量分析文件(BCOOAF)代表了2014年1月至2016年12月期间人们的阿片类药物过量(n = 13,318)。BCOOAF载有与加拿大统计局数据相联系的不列颠哥伦比亚省行政卫生数据,包括卫生、就业、社会援助和警察联系方面的数据。采用k-prototype算法进行聚类分析。结果:结果揭示了一个六簇解决方案,由三组(a, B和C)组成,每组有两个不同的簇(1和2)。a组的个体主要是男性,使用非阿片类处方药,有不同程度的就业。A1组的个人就业,主要从事建筑工作,收入高,致命的过量用药率高,而A2组的个人就业不稳定,收入水平各不相同。B组以雌性为主;主要服用处方阿片类药物,约四分之一或更少的人接受阿片类药物激动剂治疗(OAT);大多数人都不稳定或没有工作;收入很低甚至没有。B1组的人主要是中年人(45至65岁),依靠社会援助,而B2组的人年龄较大,更经常使用保健服务,没有社会援助收入。C组的个人主要是年龄在24至44岁之间的年轻男性,多次过量用药的发生率较高,是保健服务的中高使用者,大多失业,接受社会援助。大多数人都与警方有过多次接触。C1组的患者主要没有处方阿片类药物的使用记录,并且所有患者都没有OAT记录,而C2组的所有患者都在使用OAT。解释:将机器学习技术应用于多维数据库,可以采用交叉方法来研究那些经历阿片类药物过量的人。结果揭示了不同的患者概况,可以用来更好地进行目标干预和治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the intersectionality of characteristics among those who experienced opioid overdoses: A cluster analysis.

Background: As Canada continues to experience an opioid crisis, it is important to understand the intersection between the demographic, socioeconomic and service use characteristics of those experiencing opioid overdoses to better inform prevention and treatment programs.

Data and methods: The Statistics Canada British Columbia Opioid Overdose Analytical File (BCOOAF) represents people's opioid overdoses between January 2014 and December 2016 (n = 13,318). The BCOOAF contains administrative health data from British Columbia linked to Statistics Canada data, including on health, employment, social assistance and police contacts. Cluster analysis was conducted using the k-prototypes algorithm.

Results: The results revealed a six-cluster solution, composed of three groups (A, B and C), each with two distinct clusters (1 and 2). Individuals in Group A were predominantly male, used non-opioid prescription medications and had varying levels of employment. Individuals in Cluster A1 were employed, worked mostly in construction, had high incomes and had a high rate of fatal overdoses, while individuals in Cluster A2 were precariously employed and had varying levels of income. Individuals in Group B were predominantly female; were mostly taking prescription opioids, with about one quarter or less receiving opioid agonist treatment (OAT); mostly had precarious to no employment; and had low to no income. People in Cluster B1 were primarily middle-aged (45 to 65 years) and on social assistance, while people in Cluster B2 were older, more frequently used health services and had no social assistance income. Individuals in Group C were primarily younger males aged 24 to 44 years, with higher prevalence of having experienced multiple overdoses, were medium to high users of health care services, were mostly unemployed and were recipients of social assistance. Most had multiple contacts with police. Those in Cluster C1 predominantly had no documented use of prescription opioid medications, and all had no documented OAT, while all individuals in Cluster C2 were on OAT.

Interpretation: The application of machine learning techniques to a multidimensional database enables an intersectional approach to study those experiencing opioid overdoses. The results revealed distinct patient profiles that can be used to better target interventions and treatment.

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来源期刊
Health Reports
Health Reports PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
7.30
自引率
4.00%
发文量
28
期刊介绍: Health Reports publishes original research on diverse topics related to understanding and improving the health of populations and the delivery of health care. We publish studies based on analyses of Canadian national/provincial representative surveys or Canadian national/provincial administrative databases, as well as results of international comparative health research. Health Reports encourages the sharing of methodological information among those engaged in the analysis of health surveys or administrative databases. Use of the most current data available is advised for all submissions.
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