| Literature DB >> 28441962 |
Ryan P Westergaard1,2, Andrew Genz3, Kristen Panico4, Pamela J Surkan5, Jeanne Keruly6, Heidi E Hutton7, Larry W Chang6, Gregory D Kirk3,6.
Abstract
BACKGROUND: Persons living with HIV and substance use disorders face barriers to sustained engagement in medical care, leading to suboptimal antiretroviral treatment outcomes. Innovative mobile technology tools such as customizable smartphone applications have the potential to enhance existing care coordination programs, but have not been rigorously studied.Entities:
Mesh:
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Year: 2017 PMID: 28441962 PMCID: PMC5405459 DOI: 10.1186/s13722-017-0076-y
Source DB: PubMed Journal: Addict Sci Clin Pract ISSN: 1940-0632
Fig. 1Conceptual framework for mPeer2Peer based on the sIMB model
Fig. 2Framework and components the mHealth application
Baseline characteristics of intervention sample (N = 19)
| Characteristic |
|
|---|---|
| Sociodemographic variables | |
| Median age, years (IQR) | 49.3 (45.0–54.6) |
| African American (%) | 17 (89%) |
| Male (%) | 12 (63%) |
| High school/GED (%) | 14 (74%) |
| Ever married (%) | 5 (26%) |
| Income, yearly < $5000 (%) | 8 (42%) |
| In prison, ever (%) | 9 (47%) |
| Homeless, ever (%) | 5 (26%) |
| Substance use variables* | |
| Cigarette use (%) | 14 (74%) |
| Alcohol use (%) | 8 (42%) |
| Marijuana use (%) | 10 (53%) |
| Cocaine use (%) | 3 (15%) |
| Heroin use (%) | 4 (26%) |
| Injecting drug use, any (%) | 3 (16%) |
| Clinical variables† | |
| Prescribed ART at enrollment (%) | 16 (84%) |
| Hepatitis C virus seropositive (%) | 7 (37%) |
| Median CD4 (IQR) | 171 (95–262) |
| CD4 < 200 cells/mcL (%) | 10 (53%) |
| Median HIV viral Load (copies/mL) (IQR) | 18,938 (3458–103,437) |
* Represents self-reported exposure during the 6 months prior to enrollment. IQR Intra-quartile range, GED graduation equivalence degree, ART antiretroviral therapy
From health records at time of enrollment