Literature DB >> 31615693

Analysis of substance use and its outcomes by machine learning: II. Derivation and prediction of the trajectory of substance use severity.

Ziheng Hu1, Yankang Jing1, Ying Xue1, Peihao Fan1, Lirong Wang1, Michael Vanyukov2, Levent Kirisci2, Junmei Wang3, Ralph E Tarter4, Xiang-Qun Xie5.   

Abstract

BACKGROUND: This longitudinal study explored the utility of machine learning (ML) methodology in predicting the trajectory of severity of substance use from childhood to thirty years of age using a set of psychological and health characteristics.
DESIGN: Boys (N = 494) and girls (N = 206) were recruited using a high-risk paradigm at 10-12 years of age and followed up at 12-14, 16, 19, 22, 25 and 30 years of age. MEASUREMENTS: At each visit, the subjects were administered a comprehensive battery to measure psychological makeup, health status, substance use and psychiatric disorder, and their overall harmfulness of substance consumption was quantified according to the multidimensional criteria (physical, dependence, and social) developed by Nutt et al. (2007). Next, high- and low- substance use severity trajectories were derived differentially associated with probability of segueing to substance use disorder (SUD). ML methodology was employed to predict trajectory membership.
FINDINGS: The high-severity trajectory group had a higher probability of leading to SUD than the low-severity trajectory (89.0% vs 32.4%; odds ratio = 16.88, p < 0.0001). Thirty psychological and health status items at each of the six visits predict membership in the high- or low-severity trajectory, with 71% accuracy at 10-12 years of age, increasing to 93% at 22 years of age.
CONCLUSION: These findings demonstrate the applicability of the machine learning methodology for detecting membership in a substance use trajectory with high probability of culminating in SUD, potentially informing primary and secondary prevention.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Machine learning; Random Forest; Substance misuse prevention; Substance use disorder; Trajectory analysis

Mesh:

Year:  2019        PMID: 31615693      PMCID: PMC7476073          DOI: 10.1016/j.drugalcdep.2019.107604

Source DB:  PubMed          Journal:  Drug Alcohol Depend        ISSN: 0376-8716            Impact factor:   4.492


  38 in total

1.  Etiologic connections among substance dependence, antisocial behavior, and personality: modeling the externalizing spectrum.

Authors:  Robert F Krueger; Brian M Hicks; Christopher J Patrick; Scott R Carlson; William G Iacono; Matt McGue
Journal:  J Abnorm Psychol       Date:  2002-08

Review 2.  Liability to substance use disorders: 1. Common mechanisms and manifestations.

Authors:  Michael M Vanyukov; Ralph E Tarter; Levent Kirisci; Galina P Kirillova; Brion S Maher; Duncan B Clark
Journal:  Neurosci Biobehav Rev       Date:  2003-10       Impact factor: 8.989

3.  Emotion regulation and substance use frequency in women with substance dependence and borderline personality disorder receiving dialectical behavior therapy.

Authors:  Seth R Axelrod; Francheska Perepletchikova; Kevin Holtzman; Rajita Sinha
Journal:  Am J Drug Alcohol Abuse       Date:  2010-11-22       Impact factor: 3.829

4.  A logical calculus of the ideas immanent in nervous activity. 1943.

Authors:  W S McCulloch; W Pitts
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5.  Polydrug use in adolescent drinkers with and without DSM-IV alcohol abuse and dependence.

Authors:  C S Martin; N A Kaczynski; S A Maisto; R E Tarter
Journal:  Alcohol Clin Exp Res       Date:  1996-09       Impact factor: 3.455

6.  Normative data on revised Conners Parent and Teacher Rating Scales.

Authors:  C H Goyette; C K Conners; R F Ulrich
Journal:  J Abnorm Child Psychol       Date:  1978-06

Review 7.  DSM-5 criteria for substance use disorders: recommendations and rationale.

Authors:  Deborah S Hasin; Charles P O'Brien; Marc Auriacombe; Guilherme Borges; Kathleen Bucholz; Alan Budney; Wilson M Compton; Thomas Crowley; Walter Ling; Nancy M Petry; Marc Schuckit; Bridget F Grant
Journal:  Am J Psychiatry       Date:  2013-08       Impact factor: 18.112

8.  Patterns of drug use from adolescence to young adulthood: I. Periods of risk for initiation, continued use, and discontinuation.

Authors:  D B Kandel; J A Logan
Journal:  Am J Public Health       Date:  1984-07       Impact factor: 9.308

9.  Juvenile offenders' alcohol and marijuana trajectories: risk and protective factor effects in the context of time in a supervised facility.

Authors:  Anne M Mauricio; Michelle Little; Laurie Chassin; George P Knight; Alex R Piquero; Sandra H Losoya; Delfino Vargas-Chanes
Journal:  J Youth Adolesc       Date:  2008-08-19

10.  Maturation of the adolescent brain.

Authors:  Mariam Arain; Maliha Haque; Lina Johal; Puja Mathur; Wynand Nel; Afsha Rais; Ranbir Sandhu; Sushil Sharma
Journal:  Neuropsychiatr Dis Treat       Date:  2013-04-03       Impact factor: 2.570

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  3 in total

Review 1.  Leveraging data science to enhance suicide prevention research: a literature review.

Authors:  Avital Rachelle Wulz; Royal Law; Jing Wang; Amy Funk Wolkin
Journal:  Inj Prev       Date:  2021-08-19       Impact factor: 3.770

2.  Forecasting Opioid Use Disorder at 25 Years of Age in 16-Year-Old Adolescents.

Authors:  Ralph E Tarter; Levent Kirisci; Gerald Cochran; Amy Seybert; Maureen Reynolds; Michael Vanyukov
Journal:  J Pediatr       Date:  2020-07-08       Impact factor: 4.406

3.  Using machine learning to determine the shared and unique risk factors for marijuana use among child-welfare versus community adolescents.

Authors:  Sonya Negriff; Bistra Dilkina; Laksh Matai; Eric Rice
Journal:  PLoS One       Date:  2022-09-21       Impact factor: 3.752

  3 in total

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