首页> 美国卫生研究院文献>NPJ Schizophrenia >Detecting relapse in youth with psychotic disorders utilizing patient-generated and patient-contributed digital data from Facebook
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Detecting relapse in youth with psychotic disorders utilizing patient-generated and patient-contributed digital data from Facebook

机译:利用来自Facebook的患者生成和患者贡献的数字数据来检测患有精神病的年轻人的复发

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摘要

Although most patients who experience a first-episode of psychosis achieve remission of positive psychotic symptoms, relapse is common. Existing relapse evaluation strategies are limited by their reliance on direct and timely contact with professionals, and accurate reporting of symptoms. A method by which to objectively identify early relapse warning signs could facilitate swift intervention. We collected 52,815 Facebook posts across 51 participants with recent onset psychosis (mean age = 23.96 years; 70.58% male) and applied anomaly detection to explore linguistic and behavioral changes associated with psychotic relapse. We built a one-class classification model that makes patient-specific personalized predictions on risk to relapse. Significant differences were identified in the words posted to Facebook in the month preceding a relapse hospitalization compared to periods of relative health, including increased usage of words belonging to the swear (p < 0.0001, Wilcoxon signed rank test), anger (p < 0.001), and death (p < 0.0001) categories, decreased usage of words belonging to work (p = 0.00579), friends (p < 0.0001), and health (p < 0.0001) categories, as well as a significantly increased use of first (p < 0.0001) and second-person (p  < 0.001) pronouns. We additionally observed a significant increase in co-tagging (p < 0.001) and friending (p < 0.0001) behaviors in the month before a relapse hospitalization. Our classifier achieved a specificity of 0.71 in predicting relapse. Results indicate that social media activity captures objective linguistic and behavioral markers of psychotic relapse in young individuals with recent onset psychosis. Machine-learning models were capable of making personalized predictions of imminent relapse hospitalizations at the patient-specific level.
机译:尽管大多数经历了精神病发作的患者都可以缓解精神病学阳性症状,但复发很常见。现有的复发评估策略受限于对专家的直接和及时联系以及对症状的准确报告。一种客观地识别早期复发警告信号的方法可以促进快速干预。我们收集了51,815名近期发作的精神病患者(平均年龄== 23.96岁;男性70.58%)的52,815条Facebook帖子,并应用异常检测来探索与精神病复发相关的语言和行为变化。我们建立了一个一类分类模型,该模型针对复发风险做出针对患者的个性化预测。与相对健康时期相比,在复发性住院前一个月发布到Facebook的单词中发现了显着差异,包括使用该咒骂的单词的使用量增加(p <0.0001,Wilcoxon符号秩检验),愤怒(p <0.001) ,死亡(p <0.0001)类别,工作词(p = 0.00579),朋友(p <0.0001)和健康(p <0.0001)类别的使用减少,以及对first(p <0.0001)和第二人称(p <0.001)代词。我们还观察到复发性住院前一个月的共标签行为(p <0.001)和交友行为(p <0.0001)显着增加。我们的分类器在预测复发中的特异性为0.71。结果表明,社交媒体活动捕捉了近期发作的精神病患者的精神病复发的客观语言和行为标志。机器学习模型能够针对特定患者水平对即将发生的复发性住院进行个性化预测。

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