Literature DB >> 33575244

Early Detection of Severe Functional Impairment Among Adolescents With Major Depression Using Logistic Classifier.

I-Ming Chiu1, Wenhua Lu2, Fangming Tian1, Daniel Hart3.   

Abstract

Machine learning is about finding patterns and making predictions from raw data. In this study, we aimed to achieve two goals by utilizing the modern logistic regression model as a statistical tool and classifier. First, we analyzed the associations between Major Depressive Episode with Severe Impairment (MDESI) in adolescents with a list of broadly defined sociodemographic characteristics. Using findings from the logistic model, the second and ultimate goal was to identify the potential MDESI cases using a logistic model as a classifier (i.e., a predictive mechanism). Data on adolescents aged 12-17 years who participated in the National Survey on Drug Use and Health (NSDUH), 2011-2017, were pooled and analyzed. The logistic regression model revealed that compared with males and adolescents aged 12-13, females and those in the age groups of 14-15 and 16-17 had higher risk of MDESI. Blacks and Asians had lower risk of MDESI than Whites. Living in single-parent household, having less authoritative parents, having negative school experiences further increased adolescents' risk of having MDESI. The predictive model successfully identified 66% of the MDESI cases (recall rate) and accurately identified 72% of the MDESI and MDESI-free cases (accuracy rate) in the training data set. The rates of both recall and accuracy remained about the same (66 and 72%) using the test data. Results from this study confirmed that the logistic model, when used as a classifier, can identify potential cases of MDESI in adolescents with acceptable recall and reasonable accuracy rates. The algorithmic identification of adolescents at risk for depression may improve prevention and intervention.
Copyright © 2021 Chiu, Lu, Tian and Hart.

Entities:  

Keywords:  National Survey on Drug Use and Health; logistic regression model/classifier; machine learning; major depressive episode with severe impairment; recall/accuracy rate

Mesh:

Year:  2021        PMID: 33575244      PMCID: PMC7870980          DOI: 10.3389/fpubh.2020.622007

Source DB:  PubMed          Journal:  Front Public Health        ISSN: 2296-2565


  12 in total

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Journal:  Front Psychiatry       Date:  2020-02-14       Impact factor: 4.157

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