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利用高斯过程混合模型进行重症监护预后的个性化风险评分。

Personalized Risk Scoring for Critical Care Prognosis Using Mixtures of Gaussian Processes.

出版信息

IEEE Trans Biomed Eng. 2018 Jan;65(1):207-218. doi: 10.1109/TBME.2017.2698602. Epub 2017 Apr 27.

Abstract

OBJECTIVE

In this paper, we develop a personalized real-time risk scoring algorithm that provides timely and granular assessments for the clinical acuity of ward patients based on their (temporal) lab tests and vital signs; the proposed risk scoring system ensures timely intensive care unit admissions for clinically deteriorating patients.

METHODS

The risk scoring system is based on the idea of sequential hypothesis testing under an uncertain time horizon. The system learns a set of latent patient subtypes from the offline electronic health record data, and trains a mixture of Gaussian Process experts, where each expert models the physiological data streams associated with a specific patient subtype. Transfer learning techniques are used to learn the relationship between a patient's latent subtype and her static admission information (e.g., age, gender, transfer status, ICD-9 codes, etc).

RESULTS

Experiments conducted on data from a heterogeneous cohort of 6321 patients admitted to Ronald Reagan UCLA medical center show that our score significantly outperforms the currently deployed risk scores, such as the Rothman index, MEWS, APACHE, and SOFA scores, in terms of timeliness, true positive rate, and positive predictive value.

CONCLUSION

Our results reflect the importance of adopting the concepts of personalized medicine in critical care settings; significant accuracy and timeliness gains can be achieved by accounting for the patients' heterogeneity.

SIGNIFICANCE

The proposed risk scoring methodology can confer huge clinical and social benefits on a massive number of critically ill inpatients who exhibit adverse outcomes including, but not limited to, cardiac arrests, respiratory arrests, and septic shocks.

摘要

目的

本文开发了一种个性化实时风险评分算法,该算法可基于(时间)实验室测试和生命体征,为病房患者的临床严重程度提供及时和细致的评估;所提出的风险评分系统可确保及时将临床恶化的患者收入重症监护病房。

方法

风险评分系统基于在不确定时间范围内进行序贯假设检验的思想。该系统从离线电子健康记录数据中学习一组潜在的患者亚组,并训练一组高斯过程专家的混合体,其中每个专家都对与特定患者亚组相关的生理数据流进行建模。采用迁移学习技术来学习患者潜在亚组与其静态入院信息(例如年龄、性别、转院状态、ICD-9 代码等)之间的关系。

结果

在罗纳德·里根加州大学洛杉矶分校医疗中心收治的 6321 名患者的异质队列数据上进行的实验表明,与目前部署的风险评分(如 Rothman 指数、MEWS、APACHE 和 SOFA 评分)相比,我们的评分在及时性、真阳性率和阳性预测值方面表现出色。

结论

我们的研究结果反映了在重症监护环境中采用个性化医疗概念的重要性;通过考虑患者的异质性,可以显著提高准确性和及时性。

意义

所提出的风险评分方法可以为大量重症患者带来巨大的临床和社会效益,这些患者的预后不良,包括但不限于心脏骤停、呼吸骤停和感染性休克等。

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