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Predicting Asthma Exacerbations Using Artificial Intelligence

机译:使用人工智能预测哮喘发作

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Modern telemonitoring systems identify a serious patient deterioration when it already occurred. It would be much more beneficial if the upcoming clinical deterioration were identified ahead of time even before a patient actually experiences it. The goal of this study was to assess artificial intelligence approaches which potentially can be used in telemonitoring systems for advance prediction of changes in disease severity before they actually occur. The study dataset was based on daily self-reports submitted by 26 adult asthma patients during home telemonitoring consisting of 7001 records. Two classification algorithms were employed for building predictive models: naive Bayesian classifier and support vector machines. Using a 7-day window, a support vector machine was able to predict asthma exacerbation to occur on the day 8 with the accuracy of 0.80, sensitivity of 0.84 and specificity of 0.80. Our study showed that methods of artificial intelligence have significant potential in developing individualized decision support for chronic disease telemonitoring systems.
机译:现代远程监控系统可以识别严重的患者恶化情况。如果提前识别即将发生的临床恶化,甚至在患者实际经历之前,那将更加有益。这项研究的目的是评估人工智能方法,该方法可用于远程监控系统中,以便在疾病严重程度实际发生之前对其进行预先预测。该研究数据集基于26位成人哮喘患者在家庭远程监护期间提交的每日自我报告,包括7001条记录。两种分类算法用于构建预测模型:朴素贝叶斯分类器和支持向量机。使用7天的窗口,支持向量机能够预测第8天发生的哮喘加重,准确性为0.80,敏感性为0.84,特异性为0.80。我们的研究表明,人工智能方法在为慢性疾病远程监控系统开发个性化决策支持方面具有巨大潜力。

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