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Predicting mortality risk associated with serious treatable surgical complications at the University of Virginia health system

机译:预测弗吉尼亚大学卫生系统中严重治疗的死亡率风险

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This study focuses on predicting the risk of occurrence of serious but treatable complications and subsequent risk of mortality using a patient's preoperative conditions. Serious treatable complications include deep vein thrombosis/ pulmonary embolism, pneumonia, sepsis, and shock/cardiac arrest. These complications, if not identified and treated in time, can cause lengthened hospital stays, morbidity, and in some cases, mortality. We have modeled the risk of developing complications, and mortality due to complications, using a hierarchical prediction approach. In the first level of the hierarchy, extreme gradient boosted trees with cost sensitive weighting was used to model the risk of each complication and to identify the factors responsible for each type of complication. In the second level, similar statistical methods were used but on a smaller population set of patients, specifically those who developed one or more complications, to predict the risk of mortality. In our population of 32,202 patients, 963 developed one of the complications of interest, and of those with complications 174 died. Our predictions for sepsis, pneumonia, cardiac shock, and deep vein thrombosis/ pulmonary embolism, resulted in mean AUC values of 0.815, 0.935, 0.854, and 0.879 respectively. When making mortality predictions we achieved a mean AUC of 0.921. A propensity score analysis of patients that were predicted to be low risk but actually developed a complication was also performed. The framework proposed in this study provides hospitals with a way to more closely examine patient data regarding quality metrics by enabling them to identify patient born risks before surgical procedures are performed.
机译:本研究重点介绍,预测患者的术前条件发生严重但可治疗的并发症的发生风险,以及随后的死亡风险。严重的可治疗并发症包括深静脉血栓形成/肺栓塞,肺炎,败血症和休克/心脏骤停。这些并发症,如果没有及时识别和治疗,可导致延长医院保持,发病率,以及在某些情况下,死亡率。我们使用分层预测方法模拟了由于并发症而产生并发症的危险和死亡率。在层次结构的第一级,具有成本敏感权重的极端梯度提升树木来模拟每份并发症的风险,并确定对每种复杂性的因素。在二级,使用类似的统计方法,但在较小的人口组患者上,特别是那些开发一种或多种并发症的人,以预测死亡率的风险。在我们的32,202名患者中,963名患有兴趣并发症的一个并发症174死亡。我们对脓毒症,肺炎,心脏休克和深静脉血栓形成/肺栓塞的预测,导致平均AUC值0.815,0.935,0.854和0.879。在制定死亡率预测时,我们实现了0.921的平均AUC。预测低风险但实际开发的患者的倾向评分分析也进行了并发症。本研究提出的框架为医院提供了一种能够更加密切地研究质量指标的患者数据,使他们能够在进行外科手术之前识别患者出生的风险。

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