Prediction Rules Identify Which Young Adults Have Higher Rates of Heavy Episodic Drinking After Exposure to 12-Week Text Message Interventions.

Tammy Chung, Brian Suffoletto, Sarah W Feldstein Ewing, Trishnee Bhurosy, Yanping Jiang, Pamela Valera
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Abstract

Background: An alcohol text message intervention recently demonstrated effects in reducing heavy episodic drinking (HED) days at the three month follow-up in young adults with a history of hazardous drinking. An important next step in understanding intervention effects involves identifying baseline participant characteristics that predict who will benefit from intervention exposure to support clinical decision-making and guide further intervention development. To identify baseline characteristics that predict HED, this exploratory study used a prediction rule ensemble (PRE). Compared to more complex decision-tree methods (e.g., random forest), PREs have comparable performance, while generating simpler rules that can directly identify subgroups that do or do not respond to intervention.

Methods: This secondary analysis examined data from 916 young adults who reported HED (68.5% female, mean age = 22.1, SD = 2.1), were enrolled in an alcohol text message randomized clinical trial and who completed baseline assessment and the three month follow-up. A PRE with ten fold cross-validation, which included 21 baseline variables representing sociodemographic characteristics (e.g., sex, age, race, ethnicity, college enrollment), alcohol consumption (frequency of alcohol consumption, quantity consumed on a typical drinking day, frequency of HED), impulsivity subscales (i.e., negative urgency, positive urgency, lack of premeditation, lack of perseverance, sensation seeking), readiness to change, perceived peer drinking and HED-related consequences, and intervention status were used to predict HED at the three month follow-up.

Results: The PRE identified 12 rules that predicted HED at three months (R2 = 0.23) using 7 baseline features. Only two cases (0.2%) were not classified by the 12 rules. The most important features for predicting three month HED included baseline alcohol consumption, negative urgency score, and perceived peer drinking.

Conclusions: The rules provide interpretable decision-making tools that predict who has higher alcohol consumption following exposure to alcohol text message interventions using baseline participant characteristics (prior to intervention), which highlight the importance of interventions related to negative urgency and peer alcohol use.

通过预测规则确定哪些青少年在接受为期 12 周的短信干预后出现较高的大量偶发性饮酒率。
背景:最近,一种酒精短信干预措施在对有危险饮酒史的年轻人进行三个月的随访时,显示出了减少大量偶发性饮酒(HED)天数的效果。了解干预效果的下一个重要步骤是确定参与者的基线特征,以预测谁将从干预中受益,从而支持临床决策并指导进一步的干预开发。为了确定预测 HED 的基线特征,本探索性研究使用了预测规则组合 (PRE)。与更复杂的决策树方法(如随机森林)相比,PRE 的性能相当,同时生成的规则更简单,可直接识别对干预有反应或无反应的亚组:这项二次分析研究了 916 名年轻成人的数据,这些人报告了 HED(68.5% 为女性,平均年龄 = 22.1,SD = 2.1),他们参加了酒精短信随机临床试验,并完成了基线评估和三个月的随访。该研究包括 21 个基线变量,分别代表社会人口学特征(如性别、年龄、种族、民族、大学入学率)、酒精消费(饮酒频率、典型饮酒日的饮酒量、HED 频率)、冲动性子量表(即结果显示,PRE 发现了 12 条预测 HED 的规则:PRE利用7个基线特征确定了12个预测三个月后HED的规则(R2=0.23)。只有两个病例(0.2%)未被这 12 条规则分类。预测三个月后 HED 的最重要特征包括基线饮酒量、负紧迫感评分和感知到的同伴饮酒量:这些规则提供了可解释的决策工具,可利用基线参与者特征(干预前)预测哪些人在接触酒精短信干预后酒精消耗量更高,这突出了与负紧迫性和同伴饮酒相关的干预的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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