A Personalized Predictive Framework for Multivariate Clinical Time Series via Adaptive Model Selection.

Zitao Liu, Milos Hauskrecht
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引用次数: 9

Abstract

Building of an accurate predictive model of clinical time series for a patient is critical for understanding of the patient condition, its dynamics, and optimal patient management. Unfortunately, this process is not straightforward. First, patient-specific variations are typically large and population-based models derived or learned from many different patients are often unable to support accurate predictions for each individual patient. Moreover, time series observed for one patient at any point in time may be too short and insufficient to learn a high-quality patient-specific model just from the patient's own data. To address these problems we propose, develop and experiment with a new adaptive forecasting framework for building multivariate clinical time series models for a patient and for supporting patient-specific predictions. The framework relies on the adaptive model switching approach that at any point in time selects the most promising time series model out of the pool of many possible models, and consequently, combines advantages of the population, patient-specific and short-term individualized predictive models. We demonstrate that the adaptive model switching framework is very promising approach to support personalized time series prediction, and that it is able to outperform predictions based on pure population and patient-specific models, as well as, other patient-specific model adaptation strategies.

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基于自适应模型选择的多变量临床时间序列个性化预测框架。
为患者建立准确的临床时间序列预测模型对于了解患者病情、动态和最佳患者管理至关重要。不幸的是,这个过程并不简单。首先,患者特异性差异通常很大,从许多不同患者那里获得或学习的基于人群的模型往往无法支持对每个患者的准确预测。此外,在任何时间点观察到的一个患者的时间序列可能太短,不足以仅从患者自己的数据中学习高质量的患者特定模型。为了解决这些问题,我们提出、开发并试验了一种新的自适应预测框架,用于为患者构建多变量临床时间序列模型,并支持针对患者的预测。该框架依赖于自适应模型切换方法,在任何时间点从许多可能的模型池中选择最有希望的时间序列模型,从而结合了群体、患者特异性和短期个性化预测模型的优点。我们证明了自适应模型切换框架是一种非常有前途的支持个性化时间序列预测的方法,并且它能够优于基于纯群体和特定患者模型以及其他特定患者模型适应策略的预测。
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