基于个性化在线自适应学习的神经临床事件序列预测。

Jeong Min Lee, Milos Hauskrecht
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引用次数: 3

摘要

临床事件序列由数千个临床事件组成,这些事件代表了患者护理的时间记录。为这样的序列开发准确的预测模型对于定义患者状态的表示和改善患者护理具有非常重要的意义。学习临床序列的良好预测模型的一个重要挑战是患者特异性变异性。根据潜在的临床并发症,每个患者的序列可能由不同的临床事件集组成。然而,从这些序列中学习的基于人群的模型可能无法准确预测事件序列的患者特异性动力学。为了解决这个问题,我们开发了一种新的自适应事件序列预测框架,该框架通过在线模型更新来学习调整对个别患者的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Clinical Event Sequence Prediction through Personalized Online Adaptive Learning.

Clinical event sequences consist of thousands of clinical events that represent records of patient care in time. Developing accurate prediction models for such sequences is of a great importance for defining representations of a patient state and for improving patient care. One important challenge of learning a good predictive model of clinical sequences is patient-specific variability. Based on underlying clinical complications, each patient's sequence may consist of different sets of clinical events. However, population-based models learned from such sequences may not accurately predict patient-specific dynamics of event sequences. To address the problem, we develop a new adaptive event sequence prediction framework that learns to adjust its prediction for individual patients through an online model update.

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