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使用贝叶斯层次向量自回归模型进行健康标签和行为特征预测。

Health Label and Behavioral Feature Prediction Using Bayesian Hierarchical Vector Autoregression Models.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:2290-2293. doi: 10.1109/EMBC46164.2021.9630732.

Abstract

The rising availability and accessibility of data from wearable devices and ubiquitous sensors allow the leveraging of computational methods to address human health and behavioral challenges. In particular, recent works have created time series, interpretable, and generalizable models for predicting patient healthcare outcomes from multidimensional data including expensive self-reported patient data, clinical data, and data from mobile and wearable devices. In this work, we used a Bayesian Hierarchical Vector Autoregression (BHVAR) model to predict behavioral and self-reported health outcomes on college student participants from passively collected data from their smartphones, wearable devices, and environment, as well as their self-reports. We also evaluated how the model performed being trained on 3, 7, 11, and 13 different features including some actionable and modifiable behavioral features. Then, we showed the value of augmenting self-reported datasets with many different types of data by demonstrating that additional inferences can be made with no significant toll on accuracy in comparison to using only self-reported features. Our models proved to be robust despite the greatly increased variable count as the reduced mean squared error (RMSE) of BHVAR over the patient-specific, maximum likelihood estimate (MLE) model was 10.5%, 14.9%, 26.6%, 39.6% in the 3, 7, 11, and 13 variable models respectively. We also obtained patient-level insights from clustering analysis of patient-level coefficients.

摘要

可穿戴设备和无处不在的传感器所产生的数据的可用性和可及性不断提高,使得人们能够利用计算方法来解决人类健康和行为方面的挑战。特别是,最近的研究工作已经为从多维数据(包括昂贵的自我报告的患者数据、临床数据和来自移动和可穿戴设备的数据)预测患者医疗保健结果创建了可解释和可推广的时间序列模型。在这项工作中,我们使用贝叶斯层次向量自回归(BHVAR)模型来预测大学生参与者的行为和自我报告的健康结果,这些数据来自他们智能手机、可穿戴设备和环境以及他们的自我报告中被动收集的数据。我们还评估了该模型在使用 3、7、11 和 13 种不同特征(包括一些可操作和可修改的行为特征)进行训练时的性能。然后,我们通过展示通过使用多种不同类型的数据来增强自我报告数据集的价值,证明与仅使用自我报告特征相比,通过使用多种不同类型的数据可以进行更多的推断,而不会对准确性造成显著影响。尽管变量数量大大增加,但我们的模型仍然具有稳健性,因为 BHVAR 的均方误差(RMSE)相对于特定于患者的最大似然估计(MLE)模型的降低幅度分别为 10.5%、14.9%、26.6%和 39.6%,在 3、7、11 和 13 变量模型中。我们还通过对患者水平系数的聚类分析获得了患者水平的见解。

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