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DeepAlerts: Deep Learning Based Multi-Horizon Alerts for Clinical Deterioration on Oncology Hospital Wards

机译:DeepAlerts:基于深度学习的肿瘤医院病房临床恶化的多地平警报

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Machine learning and data mining techniques are increasingly being applied to electronic health record (EHR) data to discover underlying patterns and make predictions for clinical use. For instance, these data may be evaluated to predict clinical deterioration events such as cardiopulmonary arrest or escalation of care to the intensive care unit (ICU). In clinical practice, early warning systems with multiple time horizons could indicate different levels of urgency, allowing clinicians to make decisions regarding triage, testing, and interventions for patients at risk of poor outcomes. These different horizon alerts are related and have intrinsic dependencies, which elicit multi-task learning. In this paper, we investigate approaches to properly train deep multi-task models for predicting clinical deterioration events via generating multi-horizon alerts for hospitalized patients outside the ICU, with particular application to oncology patients. Prior knowledge is used as a regularization to exploit the positive effects from the task re-latedness. Simultaneously, we propose task-specific loss balancing to reduce the negative effects when optimizing the joint loss function of deep multi-task models. In addition, we demonstrate the effectiveness of the feature-generating techniques from prediction outcome interpretation. To evaluate the model performance of predicting multi-horizon deterioration alerts in a real world scenario, we apply our approaches to the EHR data from 20,700 hospitalizations of adult oncology patients. These patients' baseline high-risk status provides a unique opportunity: the application of an accurate model to an enriched population could produce improved positive predictive value and reduce false positive alerts. With our dataset, the model applying all proposed learning techniques achieves the best performance compared with common models previously developed for clinical deterioration warning.
机译:机器学习和数据挖掘技术越来越多地应用于电子健康记录(EHR)数据,以发现潜在的模式并进行临床使用的预测。例如,可以评估这些数据以预测临床劣化事件,例如心肺骤停或对重症监护单元(ICU)的升级。在临床实践中,具有多个时间视野的预警系统可以表明不同的紧迫性水平,使临床医生能够做出有关患者的分类,测试和干预患者的危险。这些不同的地平线警报是相关的并且具有内在的依赖性,其中引出了多任务学习。在本文中,我们调查了妥善培训深度多任务模型的方法,以通过为ICU以外的住院患者产生多地平警报来预测临床恶化事件,特别适用于肿瘤患者。先验知识被用作正则化以利用任务重新提出的积极影响。同时,我们提出了特定于特定的损失平衡,以减少优化深度多任务模型的联合损耗功能时的负面影响。此外,我们展示了来自预测结果解释的特征生成技术的有效性。为了评估预测现实世界场景中的多视野恶化警报的模型性能,我们将我们的方法从成人肿瘤学患者的20,700名住院中应用于EHR数据。这些患者的基线高风险状况提供了独特的机会:将准确的模型应用于富集的人口可能会产生改善的阳性预测值,并减少假阳性警报。通过我们的数据集,应用所有建议的学习技术的模型实现了与以前开发的临床恶化警告的常见型号相比的最佳性能。

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