PhysioMTL: Personalizing Physiological Patterns using Optimal Transport Multi-Task Regression

Jiacheng Zhu, Gregory Darnell, Agni Kumar, Ding Zhao, Bo Li, X. Nguyen, Shirley You Ren
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引用次数: 4

Abstract

Heart rate variability (HRV) is a practical and noninvasive measure of autonomic nervous system activity, which plays an essential role in cardiovascular health. However, using HRV to assess physiology status is challenging. Even in clinical settings, HRV is sensitive to acute stressors such as physical activity, mental stress, hydration, alcohol, and sleep. Wearable devices provide convenient HRV measurements, but the irregularity of measurements and uncaptured stressors can bias conventional analytical methods. To better interpret HRV measurements for downstream healthcare applications, we learn a personalized diurnal rhythm as an accurate physiological indicator for each individual. We develop Physiological Multitask-Learning (PhysioMTL) by harnessing Optimal Transport theory within a Multitask-learning (MTL) framework. The proposed method learns an individual-specific predictive model from heterogeneous observations, and enables estimation of an optimal transport map that yields a push forward operation onto the demographic features for each task. Our model outperforms competing MTL methodologies on unobserved predictive tasks for synthetic and two real-world datasets. Specifically, our method provides remarkable prediction results on unseen held-out subjects given only $20\%$ of the subjects in real-world observational studies. Furthermore, our model enables a counterfactual engine that generates the effect of acute stressors and chronic conditions on HRV rhythms.
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PhysioMTL:使用最优传输多任务回归个性化生理模式
心率变异性(HRV)是一种实用且无创的自主神经系统活动测量方法,在心血管健康中起着至关重要的作用。然而,使用心率变异来评估生理状态是具有挑战性的。即使在临床环境中,HRV对急性应激源(如身体活动、精神压力、水合作用、酒精和睡眠)也很敏感。可穿戴设备提供了方便的HRV测量,但测量的不规则性和未捕获的应力源可能会影响传统的分析方法。为了更好地解释下游医疗保健应用的HRV测量,我们学习个性化的昼夜节律作为每个人的准确生理指标。我们通过在多任务学习(MTL)框架内利用最优传输理论开发了生理多任务学习(PhysioMTL)。所提出的方法从异构观测中学习个体特定的预测模型,并能够估计出最优的运输图,从而产生针对每个任务的人口特征的推进操作。我们的模型在合成和两个真实世界数据集的未观察到的预测任务上优于竞争的MTL方法。具体来说,我们的方法对现实世界观察研究中仅占20%的未见过的被试提供了显著的预测结果。此外,我们的模型实现了一个反事实引擎,该引擎产生急性压力源和慢性条件对HRV节律的影响。
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