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Predicting ICU Mortality Risk by Grouping Temporal Trends from a Multivariate Panel of Physiologic Measurements

机译:通过从生理测量的多元组分组时间趋势预测ICU死亡率风险

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ICU mortality risk prediction may help clinicians take effective interventions to improve patient outcome. Existing machine learning approaches often face challenges in integrating a comprehensive panel of physiologic variables and presenting to clinicians interpretable models. We aim to improve both accuracy and interpretability of prediction models by introducing Subgraph Augmented Non-negative Matrix Factorization (SANMF) on ICU physiologic time series. SANMF converts time series into a graph representation and applies frequent subgraph mining to automatically extract temporal trends. We then apply non-negative matrix factorization to group trends in a way that approximates patient pathophysiologic states. Trend groups are then used as features in training a logistic regression model for mortality risk prediction, and are also ranked according to their contribution to mortality risk. We evaluated SANMF against four empirical models on the task of predicting mortality or survival 30 days after discharge from ICU using the observed physiologic measurements between 12 and 24 hours after admission. SANMF outperforms all comparison models, and in particular, demonstrates an improvement in AUC (0.848 vs. 0.827, p<0.002) compared to a state-of-the-art machine learning method that uses manual feature engineering. Feature analysis was performed to illuminate insights and benefits of subgraph groups in mortality risk prediction.
机译:ICU死亡率风险预测可以帮助临床医生采取有效的干预措施来改善患者结果。现有机器学习方法经常面临综合生理变量面板并呈现给临床医生可解释模型的挑战。我们旨在通过在ICU生理时间序列上引入子图增强非负数矩阵分解(SANMF)来提高预测模型的精度和可解释性。 SANMF将时间序列转换为图形表示,并适用频繁的子图挖掘以自动提取时间趋势。然后,我们以近似患者病理物理学态的方式应用非负矩阵分解对组趋势。然后将趋势群体用作培训死亡率风险预测的逻辑回归模型的特征,并且也根据他们对死亡率风险的贡献进行排名。我们评估了SANMF对来自ICU后30天预测死亡率或存活后的四个经验模型,使用于入院后12至24小时的观察到的生理测量。 SANMF优于所有比较模型,特别是与使用手动功能工程的最先进的机器学习方法相比,AUC(0.848 Vs. 0.827,P <0.002)的改进。进行特征分析以在死亡风险预测中照亮子图组的见解和益处。

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