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ForecastICU: A Prognostic Decision Support System for Timely Prediction of Intensive Care Unit Admission

机译:预测:预测重症监护单位入院的预测决策支持系统

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We develop ForecastICU: a prognostic decision support system that monitors hospitalized patients and prompts alarms for intensive care unit (ICU) admissions. ForecastICU is first trained in an offline stage by constructing a Bayesian belief system that corresponds to its belief about how trajectories of physiological data streams of the patient map to a clinical status. After that, ForecastICU monitors a new patient in real-time by observing her physiological data stream, updating its belief about her status over time, and prompting an alarm whenever its belief process hits a predefined threshold (confidence). Using a real-world dataset obtained from UCLA Ronald Reagan Medical Center, we show that ForecastICU can predict ICU admissions 9 hours before a physician's decision (for a sensitivity of 40% and a precision of 50%). Also, ForecastICU performs consistently better than other state-of-the-art machine learning algorithms in terms of sensitivity, precision, and timeliness: it can predict ICU admissions 3 hours earlier, and offers a 7.8% gain in sensitivity and a 5.1% gain in precision compared to the best state-of-the-art algorithm. Moreover, ForecastICU offers an area under curve (AUC) gain of 22.3% compared to the Rothman index, which is the currently deployed technology in most hospital wards.
机译:我们开发预测:预后决策支持系统,监测住院患者,并提示重症监护单位(ICU)录取。预测通过构建贝叶斯的信仰系统首次在离线阶段培训,该系统对应于其对患者地图的生理数据流的轨迹如何与临床状态的轨迹。之后,预测通过观察她的生理数据流,在其生理数据流中,在时间流动时更新其信仰,并随着时间的信仰过程命中预定阈值(置信度),提示警报来监视新患者。使用从UCLA RONALD REAGAN MEDICY CENTER获得的现实世界数据集,我们展示了预测可以在医生的决定前9小时预测ICU入学(对于40%的灵敏度和50%的精确度)。此外,预测icragon在灵敏度,精度和及时性方面始终如一地优于其他最先进的机器学习算法:它可以预测3小时内的ICU入学,并提供7.8%的灵敏度增益和5.1%的增益与最佳最先进的算法相比,精确度。此外,与Rothman指数相比,预测诱导术提供了22.3%的曲线(AUC)增益,这是当前医院病房的目前部署技术。

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