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Mapping Patient Trajectories using Longitudinal Extraction and Deep Learning in the MIMIC-III Critical Care Database

机译:在MIMIC-III关键护理数据库中使用纵向提取和深度学习的映射患者轨迹

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Electronic Health Records (EHRs) contain a wealth of patient data useful to biomedical researchers. At present, both the extraction of data and methods for analyses are frequently designed to work with a single snapshot of a patient's record. Health care providers often perform and record actions in small batches over time. By extracting these care events, a sequence can be formed providing a trajectory for a patient's interactions with the health care system. These care events also offer a basic heuristic for the level of attention a patient receives from health care providers. We show that is possible to learn meaningful embeddings from these care events using two deep learning techniques, unsupervised autoencoders and long short-term memory networks. We compare these methods to traditional machine learning methods which require a point in time snapshot to be extracted from an EHR.
机译:电子健康记录(EHRS)包含对生物医学研究人员有用的大量患者数据。目前,数据和分析方法的提取频繁旨在使用患者记录的单一快照。医疗保健提供者通常会随着时间的推移而在小批量中表现和记录动作。通过提取这些护理事件,可以形成序列,为患者与医疗保健系统的相互作用提供轨迹。这些护理活动还为患者从医疗保健提供者收到的关注程度提供了基本启发式。我们展示了可以使用两个深入学习技术,无监督的自动统计学器和长短期内存网络从这些护理活动中学习有意义的嵌入。我们将这些方法与传统的机器学习方法进行比较,这些方法需要从EHR中提取时间快照的时间点。

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