A Data-Driven Approach to Predicting Septic Shock in the Intensive Care Unit

Christopher R. Yee, N. Narain, V. Akmaev, V. Vemulapalli
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引用次数: 24

Abstract

Early diagnosis of sepsis and septic shock has been unambiguously linked to lower mortality and better patient outcomes. Despite this, there is a strong unmet need for a reliable clinical tool that can be used for large-scale automated screening to identify high-risk patients. We addressed the following questions: Can a novel algorithm to identify patients at high risk of septic shock 24 hours before diagnosis be discovered using available clinical data? What are performance characteristics of this predictive algorithm? Can current metrics for evaluation of sepsis be improved using novel algorithm? Publicly available data from the intensive care unit setting was used to build septic shock and control patient cohorts. Using Bayesian networks, causal relationships between diagnosis groups, procedure groups, laboratory results, and demographic data were inferred. Predictive model for septic shock 24 hours prior to digital diagnosis was built based on inferred causal networks. Sepsis risk scores were augmented by de novo inferred model and performance was evaluated. A novel predictive model to identify high-risk patients 24 hours ahead of time, with area under curve of 0.81, negative predictive value of 0.87, and a positive predictive value as high as 0.65 was built. The specificity of quick sequential organ failure assessment, systemic inflammatory response syndrome, and modified early warning score was improved when augmented with the novel model, whereas no improvements were made to the sequential organ failure assessment score. We used a data-driven, expert knowledge agnostic method to build a screening algorithm for early detection of septic shock. The model demonstrates strong performance in the data set used and provides a basis for expanding this work toward building an algorithm that is used to screen patients based on electronic medical record data in real time.
预测重症监护病房脓毒性休克的数据驱动方法
败血症和感染性休克的早期诊断与较低的死亡率和更好的患者预后明确相关。尽管如此,对一种可靠的临床工具的需求仍然没有得到满足,这种工具可以用于大规模的自动筛查,以识别高危患者。我们解决了以下问题:一种新的算法能否识别感染性休克高危患者24 使用可用的临床数据发现诊断前的几个小时?这种预测算法的性能特点是什么?是否可以使用新算法改进当前评估败血症的指标?来自重症监护室环境的公开可用数据用于建立感染性休克和控制患者队列。使用贝叶斯网络,推断诊断组、手术组、实验室结果和人口统计数据之间的因果关系。感染性休克的预测模型24 数字诊断前的几个小时是基于推断的因果网络构建的。脓毒症风险评分通过从头推断的模型增加,并评估其表现。一种用于识别高危患者的新预测模型24 提前小时,曲线下面积为0.81,阴性预测值为0.87,阳性预测值高达0.65。当使用新模型进行增强时,快速序贯器官衰竭评估、全身炎症反应综合征和改良早期预警评分的特异性得到了改善,而序贯器官衰竭评价评分没有改善。我们使用了一种数据驱动、专家知识不可知的方法来构建一种早期检测感染性休克的筛查算法。该模型在所使用的数据集中表现出了强大的性能,并为将这项工作扩展到构建一种算法提供了基础,该算法用于基于电子病历数据实时筛查患者。
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