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Predicting Cardiovascular Risk Using Social Media Data: Performance Evaluation of Machine-Learning Models

机译:使用社交媒体数据预测心血管风险:机器学习模型的性能评估

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Background Current atherosclerotic cardiovascular disease (ASCVD) predictive models have limitations; thus, efforts are underway to improve the discriminatory power of ASCVD models. Objective We sought to evaluate the discriminatory power of social media posts to predict the 10-year risk for ASCVD as compared to that of pooled cohort risk equations (PCEs). Methods We consented patients receiving care in an urban academic emergency department to share access to their Facebook posts and electronic medical records (EMRs). We retrieved Facebook status updates up to 5 years prior to study enrollment for all consenting patients. We identified patients (N=181) without a prior history of coronary heart disease, an ASCVD score in their EMR, and more than 200 words in their Facebook posts. Using Facebook posts from these patients, we applied a machine-learning model to predict 10-year ASCVD risk scores. Using a machine-learning model and a psycholinguistic dictionary, Linguistic Inquiry and Word Count, we evaluated if language from posts alone could predict differences in risk scores and the association of certain words with risk categories, respectively. Results The machine-learning model predicted the 10-year ASCVD risk scores for the categories 10%) with an AUC of 0.69. Additionally, the machine-learning model predicted the ASCVD risk score with Pearson r=0.26. Using Linguistic Inquiry and Word Count, patients with higher ASCVD scores were more likely to use words associated with sadness (r=0.32). Conclusions Language used on social media can provide insights about an individual’s ASCVD risk and inform approaches to risk modification.
机译:背景技术目前的动脉粥样硬化心血管疾病(ASCVD)预测模型有局限性;因此,正在进行努力来提高ASCVD模型的歧视力。目的我们试图评估社交媒体职位的歧视力,与汇集队列风险方程(PCE)相比,预测ASCVD的10年风险。方法我们同意在城市学术急诊部门接受护理的患者分享对他们的Facebook帖子和电子医疗记录(EMRS)的访问。我们在学习患者入学之前,我们检索到5年的Facebook状态更新。我们鉴定了患者(n = 181),没有冠心病的先前病史,他们的EMR中的ASCVD得分,以及他们的Facebook帖子中的200多个单词。使用来自这些患者的Facebook帖子,我们应用了一台机器学习模型来预测10年的ASCVD风险分数。使用机器学习模型和心理语言词典,语言查询和字数,我们分别评估了来自帖子的语言可以预测风险评分的差异和风险类别的某些单词的关联。结果机器学习模式预测了10%的10%的ASCVD风险分数,AUC为0.69。此外,机器学习模型预测了Pearson r = 0.26的ASCVD风险分数。使用语言查询和单词数量,患有较高的ASCVD分数的患者更有可能使用与悲伤相关的单词(R = 0.32)。结论社交媒体上使用的语言可以提供对个人ASCVD风险的见解,并告知风险修改方法。

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