Choquette Emily M, Forthman Katherine L, Kirlic Namik, Stewart Jennifer L, Cannon Mallory J, Akeman Elisabeth, McMillan Nick, Mesker Micah, Tarrasch Mimi, Kuplicki Rayus, Paulus Martin P, Aupperle Robin L
Laureate Institute for Brain Research, Tulsa, OK, United States.
Department of Community Medicine, University of Tulsa, Tulsa, OK, United States.
Front Psychol. 2024 Sep 4;15:1390199. doi: 10.3389/fpsyg.2024.1390199. eCollection 2024.
In the US, women are one of the fastest-growing segments of the prison population and more than a quarter of women in state prison are incarcerated for drug offenses. Substance use criminal diversion programs can be effective. It may be beneficial to identify individuals who are most likely to complete the program versus terminate early as this can provide information regarding who may need additional or unique programming to improve the likelihood of successful program completion. Prior research investigating prediction of success in these programs has primarily focused on demographic factors in male samples.
The current study used machine learning (ML) to examine other non-demographic factors related to the likelihood of completing a substance use criminal diversion program for women. A total of 179 women who were enrolled in a criminal diversion program consented and completed neuropsychological, self-report symptom measures, criminal history and demographic surveys at baseline. Model one entered 145 variables into a machine learning (ML) ensemble model, using repeated, nested cross-validation, predicting subsequent graduation versus termination from the program. An identical ML analysis was conducted for model two, in which 34 variables were entered, including the Women's Risk/Needs Assessment (WRNA).
ML models were unable to predict graduation at an individual level better than chance (AUC = 0.59 [SE = 0.08] and 0.54 [SE = 0.13]). analyses indicated measures of impulsivity, trauma history, interoceptive awareness, employment/financial risk, housing safety, antisocial friends, anger/hostility, and WRNA total score and risk scores exhibited medium to large effect sizes in predicting treatment completion ( < 0.05; s = 0.29 to 0.81).
Results point towards the complexity involved in attempting to predict treatment completion at the individual level but also provide potential targets to inform future research aiming to reduce recidivism.
在美国,女性是监狱人口中增长最快的群体之一,超过四分之一的州监狱女性因毒品犯罪被监禁。物质使用刑事分流计划可能是有效的。识别最有可能完成该计划而非提前终止的个体可能是有益的,因为这可以提供有关谁可能需要额外或独特的计划以提高计划成功完成可能性的信息。先前调查这些计划成功预测因素的研究主要集中在男性样本的人口统计学因素上。
本研究使用机器学习(ML)来检查与女性完成物质使用刑事分流计划可能性相关的其他非人口统计学因素。共有179名参加刑事分流计划的女性在基线时同意并完成了神经心理学、自我报告症状测量、犯罪史和人口统计学调查。模型一将145个变量输入机器学习(ML)集成模型,使用重复的嵌套交叉验证,预测随后从该计划毕业还是终止。对模型二进行了相同的ML分析,其中输入了34个变量,包括女性风险/需求评估(WRNA)。
ML模型在个体水平上预测毕业的能力并不比随机猜测更好(AUC = 0.59 [SE = 0.08] 和0.54 [SE = 0.13])。分析表明,冲动性、创伤史、内感受性意识、就业/财务风险、住房安全、反社会朋友、愤怒/敌意以及WRNA总分和风险分数的测量在预测治疗完成方面表现出中等到大的效应大小(<0.05;s = 0.29至0.81)。
结果表明在个体水平上预测治疗完成所涉及的复杂性,但也提供了潜在的目标,为未来旨在减少累犯的研究提供信息。