Predicting In-Hospital Mortality of ICU Patients: The PhysioNet/Computing in Cardiology Challenge 2012.

Computing in cardiology Pub Date : 2012-01-01
Ikaro Silva, George Moody, Daniel J Scott, Leo A Celi, Roger G Mark
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Abstract

Acuity scores, such as APACHE, SAPS, MPM, and SOFA, are widely used to account for population differences in studies aiming to compare how medications, care guidelines, surgery, and other interventions impact mortality in Intensive Care Unit (ICU) patients. By contrast, the focus of the PhysioNet/CinC Challenge 2012 is to develop methods for patient-specific prediction of in-hospital mortality. The data used for the challenge consisted of 5 general descriptors and 36 time series (measurements of vital signs and laboratory results) from the first 48 hours of the first available ICU stay of 12,000 adult patients from the MIMIC II database. The challenge was organized as two events: event 1 measured performance of a binary classifier, and event 2 measured performance of a risk estimator. The score of event 1 was the lower of sensitivity and positive predictive value. The score for event 2 was a range-normalized Hosmer-Lemeshow statistic. A baseline algorithm (using SAPS-1) obtained event 1 and 2 scores of 0.3125 and 68.58 respectively. Most participants submitted entries that outperformed the baseline algorithm. The top final scores for events 1 and 2 were 0.5353 and 17.88 respectively.

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预测ICU患者住院死亡率:PhysioNet/计算心脏病学挑战赛2012。
在旨在比较药物、护理指南、手术和其他干预措施如何影响重症监护病房(ICU)患者死亡率的研究中,视力评分(如APACHE、SAPS、MPM和SOFA)被广泛用于解释人群差异。相比之下,2012年PhysioNet/CinC挑战赛的重点是开发针对具体患者的住院死亡率预测方法。用于挑战的数据包括5个一般描述符和36个时间序列(生命体征和实验室结果的测量),这些数据来自MIMIC II数据库中12,000名成年患者首次可用ICU住院的前48小时。该挑战被组织为两个事件:事件1测量二元分类器的性能,事件2测量风险估计器的性能。事件1得分敏感性较低,阳性预测值较低。事件2的得分是范围归一化的Hosmer-Lemeshow统计。基线算法(使用sap -1)的事件1和事件2得分分别为0.3125和68.58。大多数参与者提交的作品都超过了基准算法。项目1和项目2的最高决赛成绩分别为0.5353和17.88。
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