使用基于机器学习的框架识别无家可归青少年吸食大麻的行为:开发与评估研究。

JMIR AI Pub Date : 2024-10-17 DOI:10.2196/53488
Tianjie Deng, Andrew Urbaczewski, Young Jin Lee, Anamika Barman-Adhikari, Rinku Dewri
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引用次数: 0

摘要

背景:与其他青少年相比,无家可归的青少年面临着更多的药物使用问题。一项研究发现,69% 的无家可归青少年符合至少依赖一种药物的标准,而美国所有青少年的这一比例仅为 1.8%。此外,他们还经历着严重的结构性和社会性不平等,这进一步削弱了他们获得所需护理的能力:本研究的目标是开发一个基于机器学习的框架,利用无家可归青少年的社交媒体内容(帖子和互动)来预测他们的药物使用行为(即使用大麻的概率)。有了这个框架,社会工作者和医疗服务提供者就能识别并接触到药物使用风险较高的无家可归青少年:我们在美国西部城市的一家非营利组织招募了 133 名无家可归的青少年。在征得他们的同意后,我们收集了参与者在被招募前一年在社交媒体上的对话,并要求参与者完成一份关于其人口信息、健康状况、性行为和药物使用行为的调查。在情感社会共享理论和社会支持理论的基础上,我们确定了有可能预测药物使用的重要特征。然后,我们使用自然语言处理技术从社交媒体对话和反应中提取这些特征,并建立了一系列机器学习模型来预测参与者的大麻使用情况:我们根据模型的预测性能以及是否符合公平性标准对其进行了评估。如果没有来自调查信息的预测特征(调查信息可能会带来性别和种族偏见),我们的机器学习模型在预测大麻使用情况时,仅使用社交媒体数据就能达到 0.72 的曲线下面积和 0.81 的准确率。我们还评估了每个性别和年龄段的假阳性率:我们的研究表明,无家可归的青少年与其社交媒体上的朋友之间的文字互动可以作为预测其药物使用情况的有力资源。我们开发的框架允许医疗机构将资源有效地分配给最需要帮助的无家可归青年,同时将管理费用降到最低。该框架还可扩展用于分析和预测在这一弱势群体中观察到的其他健康相关行为和状况。
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Identifying Marijuana Use Behaviors Among Youth Experiencing Homelessness Using a Machine Learning-Based Framework: Development and Evaluation Study.

Background: Youth experiencing homelessness face substance use problems disproportionately compared to other youth. A study found that 69% of youth experiencing homelessness meet the criteria for dependence on at least 1 substance, compared to 1.8% for all US adolescents. In addition, they experience major structural and social inequalities, which further undermine their ability to receive the care they need.

Objective: The goal of this study was to develop a machine learning-based framework that uses the social media content (posts and interactions) of youth experiencing homelessness to predict their substance use behaviors (ie, the probability of using marijuana). With this framework, social workers and care providers can identify and reach out to youth experiencing homelessness who are at a higher risk of substance use.

Methods: We recruited 133 young people experiencing homelessness at a nonprofit organization located in a city in the western United States. After obtaining their consent, we collected the participants' social media conversations for the past year before they were recruited, and we asked the participants to complete a survey on their demographic information, health conditions, sexual behaviors, and substance use behaviors. Building on the social sharing of emotions theory and social support theory, we identified important features that can potentially predict substance use. Then, we used natural language processing techniques to extract such features from social media conversations and reactions and built a series of machine learning models to predict participants' marijuana use.

Results: We evaluated our models based on their predictive performance as well as their conformity with measures of fairness. Without predictive features from survey information, which may introduce sex and racial biases, our machine learning models can reach an area under the curve of 0.72 and an accuracy of 0.81 using only social media data when predicting marijuana use. We also evaluated the false-positive rate for each sex and age segment.

Conclusions: We showed that textual interactions among youth experiencing homelessness and their friends on social media can serve as a powerful resource to predict their substance use. The framework we developed allows care providers to allocate resources efficiently to youth experiencing homelessness in the greatest need while costing minimal overhead. It can be extended to analyze and predict other health-related behaviors and conditions observed in this vulnerable community.

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