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Screening for Suicidal Ideation with Text Messages

机译:筛选与短信的自杀意图

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Suicide is a leading cause of death in the US, with suicide rates increasing annually. Passive screening of suicidal ideation is vital to provide referrals to at-risk individuals. We study to what degree smartphone-based communication, in particular, text messages, could be leveraged for passively screening for suicidal ideation. We analyze the screening ability of texts sent in different time periods prior to reported ideation, namely, texts from specific weeks only versus accumulative over several weeks. Our approach involves performing comprehensive feature engineering and identifying influential features to train machine learning models. With just the prior week of texts, we were able to predict the existence of suicidal ideation with AUC = 0.88, F1 = 0.84, accuracy = 0.81, sensitivity = 0.94, and specificity = 0.68. The most influential features include word frequencies of words in the car, clothing, affection, confusion, driving, real estate, and journalism categories. This research, demonstrating the potential of text messages to screen for suicidal ideation, will guide the development of screening technologies.
机译:自杀是美国死亡的主要原因,自杀率每年增加。被动筛查的自杀念头至关重要地为风险的个体提供推荐。我们研究了基于智能手机的智能手机的通信,特别是文本消息,可以利用被动筛选自杀式思想。我们分析在报告展示之前在不同时间段中发送的文本的筛选能力,即特定数周的文本,只有几周内累积。我们的方法涉及进行全面的特征工程,并识别培训机器学习模型的有影响力。只需刚刚的文本前一周,我们能够预测AUC = 0.88,F1 = 0.84,精度= 0.81,灵敏度= 0.94,特异性= 0.68,我们能够预测自杀偶像的存在。最有影响力的功能包括汽车,服装,情感,混乱,驾驶,房地产和新闻类别中的单词频率。这项研究,展示了对自杀意识形动屏幕的文本消息的潜力,将指导筛选技术的发展。

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