TY - JOUR
T1 - Analysis of substance use and its outcomes by machine learning
T2 - II. Derivation and prediction of the trajectory of substance use severity
AU - Hu, Ziheng
AU - Jing, Yankang
AU - Xue, Ying
AU - Fan, Peihao
AU - Wang, Lirong
AU - Vanyukov, Michael
AU - Kirisci, Levent
AU - Wang, Junmei
AU - Tarter, Ralph E.
AU - Xie, Xiang Qun
N1 - Funding Information:
This work was supported by Grants NIH P30 DA-035778-01A1 XQX , DA-P50-05605 RT ; R01GM79383, JW ; R21GM097617-01, JW from the National Institutes of Health and W81XWH-16-1-0490:412288 , XQX from the Department of Defense . The funders had no role in the study design, data collection and analysis, decision to publish, or preparation of the manuscript. The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health or other funding organizations.
Funding Information:
This work was supported by Grants NIH P30 DA035778-01A1 XQX, P50- DA005605 RT; R01GM79383, JW; R21GM097617-01, JW from the National Institutes of Health and W81XWH-16-1-0490:412288, XQX from the Department of Defense. The funders had no role in the study design, data collection and analysis, decision to publish, or preparation of the manuscript. The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health or other funding organizations.
Publisher Copyright:
© 2019 Elsevier B.V.
PY - 2020/1/1
Y1 - 2020/1/1
N2 - 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.
AB - 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.
KW - Machine learning
KW - Random Forest
KW - Substance misuse prevention
KW - Substance use disorder
KW - Trajectory analysis
UR - http://www.scopus.com/inward/record.url?scp=85073210176&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85073210176&partnerID=8YFLogxK
U2 - 10.1016/j.drugalcdep.2019.107604
DO - 10.1016/j.drugalcdep.2019.107604
M3 - Article
C2 - 31615693
AN - SCOPUS:85073210176
SN - 0376-8716
VL - 206
JO - Drug and Alcohol Dependence
JF - Drug and Alcohol Dependence
M1 - 107604
ER -