Correlates of cannabis use disorder in the United States: A comparison of logistic regression, classification trees, and random forests

IF 3.7 2区 医学 Q1 PSYCHIATRY
Nathaniel A. Dell , Michael G. Vaughn , Sweta Prasad Srivastava , Abdulaziz Alsolami , Christopher P. Salas-Wright
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引用次数: 3

Abstract

Although several recent studies have examined psychosocial and demographic correlates of cannabis use disorder (CUD) in adults, few, if any, recent studies have evaluated the performance of machine learning methods relative to standard logistic regression for identifying correlates of CUD. The present study used pooled data from the 2015–2018 National Survey on Drug Use and Health to evaluate psychosocial and demographic correlates of CUD in adults. In addition, we compared the performance of logistic regression, classification trees, and random forest methods in classifying CUD. When comparing the performance of each method on the test data set, classification trees (AUC = 0.84, 95%CI: 0.82, 0.85) and random forest (AUC = 0.83, 95%CI: 0.82, 0.85) performed similarly and superior to logistic regression (AUC = 0.77, 95%CI: 0.74, 0.79). Results of the random forests reveal that marital status, risk propensity, age, and cocaine dependence variables contributed most to node purity, whereas model accuracy would decrease significantly if county type, income, race, and education variables were excluded from the model. One possible approach to improving the efficiency, interpretability, and clinical insights of CUD correlates is the employment of machine learning techniques.

美国大麻使用障碍的相关因素:逻辑回归、分类树和随机森林的比较
尽管最近有几项研究调查了成人大麻使用障碍(CUD)的社会心理和人口统计学相关性,但最近的研究很少(如果有的话)评估了机器学习方法相对于标准逻辑回归识别CUD相关性的性能。本研究使用了2015-2018年全国药物使用和健康调查的汇总数据,以评估成人CUD的社会心理和人口统计学相关性。此外,我们比较了逻辑回归、分类树和随机森林方法在分类CUD方面的性能。当比较每种方法在测试数据集上的性能时,分类树(AUC = 0.84, 95%CI: 0.82, 0.85)和随机森林(AUC = 0.83, 95%CI: 0.82, 0.85)的性能与逻辑回归(AUC = 0.77, 95%CI: 0.74, 0.79)相似且优于逻辑回归(AUC = 0.77, 95%CI: 0.74, 0.79)。随机森林的结果显示,婚姻状况、风险倾向、年龄和可卡因依赖变量对节点纯度贡献最大,而如果排除县类型、收入、种族和教育变量,模型精度将显著降低。提高CUD相关性的效率、可解释性和临床见解的一种可能方法是使用机器学习技术。
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来源期刊
Journal of psychiatric research
Journal of psychiatric research 医学-精神病学
CiteScore
7.30
自引率
2.10%
发文量
622
审稿时长
130 days
期刊介绍: Founded in 1961 to report on the latest work in psychiatry and cognate disciplines, the Journal of Psychiatric Research is dedicated to innovative and timely studies of four important areas of research: (1) clinical studies of all disciplines relating to psychiatric illness, as well as normal human behaviour, including biochemical, physiological, genetic, environmental, social, psychological and epidemiological factors; (2) basic studies pertaining to psychiatry in such fields as neuropsychopharmacology, neuroendocrinology, electrophysiology, genetics, experimental psychology and epidemiology; (3) the growing application of clinical laboratory techniques in psychiatry, including imagery and spectroscopy of the brain, molecular biology and computer sciences;
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