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Original Articles

Personal networks of women in residential and outpatient substance abuse treatment

, , , , , & show all
Pages 404-412 | Received 18 Aug 2014, Accepted 17 Feb 2015, Published online: 23 Apr 2015
 

Abstract

This study compared compositional, social support, and structural characteristics of personal networks among women in residential (RT) and intensive outpatient (IOP) substance abuse treatment. The study sample included 377 women from inner-city substance use disorder treatment facilities. Respondents were asked about 25 personal network members known within the past 6 months, characteristics of each (relationship, substance use, types of support), and relationships between each network member. Differences between RT women and IOP women in personal network characteristics were identified using Chi-square and t-tests. Compared to IOP women, RT women had more substance users in their networks, more network members with whom they had used substances and fewer network members who provided social support. These findings suggest that women in residential treatment have specific network characteristics, not experienced by women in IOP, which may make them more vulnerable to relapse; they may therefore require interventions that target these specific network characteristics in order to reduce their vulnerability to relapse.

Declaration of interest

The project described was supported by Award Number R01DA022994 from the National Institute on Drug Abuse.

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