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Using multiple sentiment dimensions of nursing notes to predict mortality in the intensive care unit

机译:使用护理票据的多种情感尺寸来预测重症监护病房的死亡率

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Unstructured clinical data such as nursing notes or discharge summaries are seldom used to predict clinical outcomes, despite containing a lot of information. This study examined several sentiment dimensions of nursing notes for their contributions to 30-day mortality prediction, in the presence of a known predictor of 30-day mortality (SAPS-II). Sentiment dimensions were extracted using a combination of word frequency and machine learning methods. Gender and type of intensive care unit (ICU) were also included as candidate features. The sentiment dimensions are then ranked via a correlation feature selection filter and a recursive feature elimination. SAPS-II was consistently ranked as the best predictor. With a random forest classifier, the predictive performance was significantly improved with sentiment dimensions features (p-value <;0.05) (mean [standard deviation] area under the receiver operating curve with sentiment dimensions: 0.827 [0.011]; without sentiment dimensions: 0.572 [0.010]). Similar improvement was also observed with a logistic regression classifier (p-value <;0.05) (with sentiment dimensions: 0.824 [0.012]; without sentiment dimensions: 0.785 [0.013]). Improvements to mortality prediction is possible by including sentiment analysis.
机译:尽管包含许多信息,但诸如护理票据或排放摘要之类的非结构化临床数据很少用于预测临床结果。本研究在已知预测因子(SAPS-II)的存在下,检查了疗养贡献的几种感官尺寸,以获得30天死亡率预测的贡献(SAPS-II)。使用单词频率和机器学习方法的组合提取情绪维度。还包括性别和重症监护单元(ICU)的类型作为候选人特征。然后通过相关特征选择滤波器和递归特征消除对情绪尺寸进行排序。 SAPS-II一直被排名为最佳预测因子。随着随机的森林分类器,通过情感尺寸特征(P值<; 0.05)(P值<; 0.05)(平均值[标准偏差]面积,具有情感尺寸的接收器尺寸:0.827 [0.011];没有情感尺寸:0.572 [0.010])。逻辑回归分类器也观察到类似的改进(P值<; 0.05)(具有情绪尺寸:0.824 [0.012];没有情感尺寸:0.785 [0.013])。通过包括情感分析,可以提高死亡率预测。

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