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首页> 外文期刊>Journal of applied statistics >A boosting inspired personalized threshold method for sepsis screening
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A boosting inspired personalized threshold method for sepsis screening

机译:促进败血症筛查的灵感个性化阈值方法

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Sepsis is one of the biggest risks to patient safety, with a natural mortality rate between 25% and 50%. It is difficult to diagnose, and no validated standard for diagnosis currently exists. A commonly used scoring criteria is the quick sequential organ failure assessment (qSOFA). It demonstrates very low specificity in ICU populations, however. We develop a method to personalize thresholds in qSOFA that incorporates easily to measure patient baseline characteristics. We compare the personalized threshold method to qSOFA, five previously published methods that obtain an optimal constant threshold for a single biomarker, and to the machine learning algorithms based on logistic regression and AdaBoosting using patient data in the MIMIC-III database. The personalized threshold method achieves higher accuracy than qSOFA and the five published methods and has comparable performance to machine learning methods. Personalized thresholds, however, are much easier to adopt in real-life monitoring than machine learning methods as they are computed once for a patient and used in the same way as qSOFA, whereas the machine learning methods are hard to implement and interpret.
机译:败血症是患者安全的最大风险之一,自然死亡率为25%至50%。难以诊断,目前没有验证的诊断标准。常用的评分标准是快速顺序器官失败评估(QSOFA)。然而,它展示了ICU人口中的非常低的特异性。我们开发一种用于个性化QSOFA的阈值的方法,该阈值包含轻松衡量患者基线特征。我们将个性化阈值方法与qsofa进行比较,五个先前发布的方法,该方法获得单个生物标志物的最佳恒定阈值,以及基于MIMIC-III数据库中的患者数据的基于逻辑回归和Adaboosting的机器学习算法。个性化阈值方法比QSOFA和五种发布的方法实现更高的精度,并且对机器学习方法具有相当的性能。然而,除了机器学习方法时,个性化阈值比机器学习方法更容易采用,因为它们是针对患者的一次计算一次并以与QSOFA相同的方式使用,而机器学习方法很难实现和解释。

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