Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals
Researchers have shown a relationship between mental health disorders and alcohol dependence. However, only 5-10% of individuals with substance use problems co-occurring with mental health problems are correctly identified. The purpose of this research was to identify predictors of relapse using thr...
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ndltd-waldenu.edu-oai-scholarworks.waldenu.edu-dissertations-15022019-10-30T01:11:15Z Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals Simonson, Toni Lee Researchers have shown a relationship between mental health disorders and alcohol dependence. However, only 5-10% of individuals with substance use problems co-occurring with mental health problems are correctly identified. The purpose of this research was to identify predictors of relapse using three different instruments of varying complexity: the Patient Health Questionnaire-9 (PHQ-9), the Modified Mini Screen (MMS), and the Millon Clinical Multiaxial Inventory-III (MCMI-III). Researchers have found that using alcohol produces relief, similar to a pharmacological intervention, from troublesome mental health symptoms that individuals experience. Considering this association, the self-medication hypothesis was the conceptual lens used for the study as it provides a practical framework for analyzing the relationship between mental health disorders and relapse. At the request of this researcher, data were collected on 45 individuals who were provided detoxification services at a public treatment facility in central Wisconsin. Regression analyses were conducted and identified a statistically significant, although weak, predictive relationship between relapse and the variable of depression as measured by the PHQ-9 (R = .311a, R2 = .097, p = .037), and depression as measured by the MCMI-III (R = .364a, R2 = .133, p = .014). The implications for positive social change from this study include the potential to increase the effectiveness and efficiency in identifying co-occurring mental health disorders among individuals who are treated for alcohol detoxification, enhancing the accuracy of referrals for aftercare, and reducing readmissions for detoxification amongst the individuals served. 2015-01-01T08:00:00Z text application/pdf https://scholarworks.waldenu.edu/dissertations/503 https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=1502&context=dissertations Walden Dissertations and Doctoral Studies en ScholarWorks mental health relapse substance abuse Psychiatric and Mental Health Psychology |
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mental health relapse substance abuse Psychiatric and Mental Health Psychology |
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mental health relapse substance abuse Psychiatric and Mental Health Psychology Simonson, Toni Lee Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals |
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Researchers have shown a relationship between mental health disorders and alcohol dependence. However, only 5-10% of individuals with substance use problems co-occurring with mental health problems are correctly identified. The purpose of this research was to identify predictors of relapse using three different instruments of varying complexity: the Patient Health Questionnaire-9 (PHQ-9), the Modified Mini Screen (MMS), and the Millon Clinical Multiaxial Inventory-III (MCMI-III). Researchers have found that using alcohol produces relief, similar to a pharmacological intervention, from troublesome mental health symptoms that individuals experience. Considering this association, the self-medication hypothesis was the conceptual lens used for the study as it provides a practical framework for analyzing the relationship between mental health disorders and relapse. At the request of this researcher, data were collected on 45 individuals who were provided detoxification services at a public treatment facility in central Wisconsin. Regression analyses were conducted and identified a statistically significant, although weak, predictive relationship between relapse and the variable of depression as measured by the PHQ-9 (R = .311a, R2 = .097, p = .037), and depression as measured by the MCMI-III (R = .364a, R2 = .133, p = .014). The implications for positive social change from this study include the potential to increase the effectiveness and efficiency in identifying co-occurring mental health disorders among individuals who are treated for alcohol detoxification, enhancing the accuracy of referrals for aftercare, and reducing readmissions for detoxification amongst the individuals served. |
author |
Simonson, Toni Lee |
author_facet |
Simonson, Toni Lee |
author_sort |
Simonson, Toni Lee |
title |
Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals |
title_short |
Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals |
title_full |
Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals |
title_fullStr |
Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals |
title_full_unstemmed |
Mental Health Disorders as Predictors of Relapse in Previously Detoxified Individuals |
title_sort |
mental health disorders as predictors of relapse in previously detoxified individuals |
publisher |
ScholarWorks |
publishDate |
2015 |
url |
https://scholarworks.waldenu.edu/dissertations/503 https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=1502&context=dissertations |
work_keys_str_mv |
AT simonsontonilee mentalhealthdisordersaspredictorsofrelapseinpreviouslydetoxifiedindividuals |
_version_ |
1719281186562375680 |