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Robust prediction of patient mortality from 48 hour intensive care unit data

机译:从48小时重症监护室数据的患者死亡率的强大预测

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The aim of this study was to develop a new algorithm to predict individual patient mortality with improved accuracy with respect to established methods from data collected over the first 48 hours of admission to the Intensive Care Unit. A binary classifier was developed to participate in Event 1 of the PhysioNet/Computing in Cardiology Challenge 2012. The algorithm development was undertaken using only posterior knowledge from the training dataset (Set-A), containing 41 demographic and clinical variables from 4000 ICU patients. For each variable a feature was defined as the average (across all available measurements of the given variable) likelihood of being part of the “survivors” group. To select features with highest discrimination ability (“survivors” vs. “non-survivors”), a forward sequential selection criterion with logistic cost function was adopted and repeated for cross-validation on N (=10) “leave Mout” (M=50%) random partitions of Set-A. Features that were selected in more than one partition were considered (#Feat = 32). A logistic regression model was used for classification. The score was defined as the lowest between sensitivity and positive predictive value in classification. The proposed method scored 54.9% on Set-A and 44.0% on the test set (Set-B), outperforming the established method SAPS-I (29.6% on Set-A, 31.7% on Set-B).
机译:本研究的目的是开发一种新的算法,以预测各个患者死亡率,提高了关于从入院的前48小时内收集的数据的建立方法的准确性。开发了二进制分类器以参与2012年心脏病学挑战的物理仪/计算的事件1。算法开发仅使用来自训练数据集(Set-A)的后验知识进行,其中包含41名ICU患者的41个人口统计和临床变量。对于每个变量,一个特征被定义为平均值(跨所有可用测量的给定变量的所有可用测量)是&#x201c的一部分的可能性;幸存者”团体。选择具有最高判别能力的特征(“幸存者“与“非幸存者”),采用了一个逻辑成本函数的前向顺序选择标准,并重复在n上的交叉验证= 10)“留下mout” (m= 50%)Set-A的随机分区。考虑在多个分区中选择的功能(#feat= 32)。 Logistic回归模型用于分类。分数被定义为敏感度与分类中的阳性预测值之间的最低点。在测试集(Set-B)上,所提出的方法在Set-A和44.0%上均得分54.9%,表现出已建立的方法SAPS-I(29.6%的Set-B,31.7%)。

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