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The Signature-Based Model for Early Detection of Sepsis From Electronic Health Records in the Intensive Care Unit

机译:重症监护病房基于电子签名的败血症早期诊断的基于签名的模型

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Optimal feature selection leads to enhanced efficiency and accuracy when developing both supervised and unsupervised machine-learning models. In this work, a new signature-based regression model is proposed to automatically identify a patient's risk of sepsis based on physiological data streams and to make a positive or negative prediction ofsepsis for every time interval since admission to the intensive care unit. The gradient boosting machine algorithm that uses the features at the current time-points and the signature features extracted from the time-series to model the longitudinal effects ofsepsis yields the utility function score of 0.360 (officially ranked 1st, team name: ‘Can I get your Signature?’) on the full test set. The signature method shows a systematic and competitive approach to model sepsis by learning from health data streams.
机译:在开发有监督和无监督的机器学习模型时,最佳的特征选择可以提高效率和准确性。在这项工作中,提出了一种新的基于签名的回归模型,该模型可根据生理数据流自动识别患者的败血症风险,并对自重症监护病房入院以来的每个时间间隔的脓毒症做出阳性或阴性预测。使用当前时间点的特征和从时间序列中提取的签名特征来模拟败血症的纵向效应的梯度提升机算法,其效用函数得分为0.360(官方排名第一,团队名称:“我能得到吗?您的签名?”)在完整的测试集上。签名方法显示了一种通过从健康数​​据流中学习来对败血症建模的系统性和竞争性方法。

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