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AHRQ Research Studies
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Research Studies is a compilation of published research articles funded by AHRQ or authored by AHRQ researchers.
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1 to 2 of 2 Research Studies DisplayedChambers C, Chiu S, Scott AN
Factors associated with poor mental health status among homeless women with and without dependent children.
The researchers estimated the prevalence of mental health problems among homeless women as well as the effects of risk factors on those problems. They found that, in a group of 522 homeless women in Toronto, Canada, poor mental health was associated with low perceived access to social support, physical/sexual assault in the past 12 months, presence of a chronic health condition, and presence of a drug use problem.
AHRQ-funded; HS014129
Citation: Chambers C, Chiu S, Scott AN .
Factors associated with poor mental health status among homeless women with and without dependent children.
Community Ment Health J. 2014 Jul;50(5):553-9. doi: 10.1007/s10597-013-9605-7..
Keywords: Behavioral Health, Chronic Conditions, Social Determinants of Health, Risk
Yoon S, Taha B, Bakken S
Using a data mining approach to discover behavior correlates of chronic disease: a case study of depression.
The purposes of this methodological paper are: 1) to describe data mining methods for building a classification model for a chronic disease using a U.S. behavior risk factor data set, and 2) to illustrate application of the methods using a case study of depressive disorder. Its application of data mining strategies identified childhood experience living with mentally ill and sexual abuse, and limited usual activity as the strongest correlates of depression among hundreds of variables.
AHRQ-funded; HS019853; HS022961.
Citation: Yoon S, Taha B, Bakken S .
Using a data mining approach to discover behavior correlates of chronic disease: a case study of depression.
Stud Health Technol Inform 2014;201:71-8..
Keywords: Chronic Conditions, Behavioral Health, Depression, Health Information Technology (HIT), Electronic Health Records (EHRs)