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A Physiological Time Series Dynamics-Based Approach to Patient Monitoring and Outcome Prediction

机译:基于生理时间序列动力学的患者监测和结果预测方法

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Cardiovascular variables such as heart rate (HR) and blood pressure (BP) are regulated by an underlying control system, and therefore, the time series of these vital signs exhibit rich dynamical patterns of interaction in response to external perturbations (e.g., drug administration), as well as pathological states (e.g., onset of sepsis and hypotension). A question of interest is whether “similar” dynamical patterns can be identified across a heterogeneous patient cohort, and be used for prognosis of patients’ health and progress. In this paper, we used a switching vector autoregressive framework to systematically learn and identify a collection of vital sign time series dynamics, which are possibly recurrent within the same patient and may be shared across the entire cohort. We show that these dynamical behaviors can be used to characterize the physiological “state” of a patient. We validate our technique using simulated time series of the cardiovascular system, and human recordings of HR and BP time series from an orthostatic stress study with known postural states. Using the HR and BP dynamics of an intensive care unit (ICU) cohort of over 450 patients from the MIMIC II database, we demonstrate that the discovered cardiovascular dynamics are significantly associated with hospital mortality (dynamic modes 3 and 9, , from logistic regression after adjusting for the APACHE scores). Combining the dynamics of BP time series and SAPS-I or APACHE-III provided a more accurate assessment of patient survival/mortality in the hospital than using SAPS-I and APACHE-III alone ( and ). Our results suggest that the discove- ed dynamics of vital sign time series may contain additional prognostic value beyond that of the baseline acuity measures, and can potentially be used as an independent predictor of outcomes in the ICU.
机译:心血管变量(例如心率(HR)和血压(BP))由基本的控制系统调节,因此,这些生命体征的时间序列显示出响应外部扰动(例如,给药)的丰富的相互作用动力学模式以及病理状态(例如败血症和低血压的发作)。一个有趣的问题是,是否可以在异类患者队列中识别出“相似”的动态模式,并将其用于患者健康和进步的预后。在本文中,我们使用交换向量自回归框架系统地学习和识别了生命体征时间序列动力学的集合,这些生命周期动力学可能在同一患者中反复出现,并且可能在整个队列中共享。我们表明,这些动力学行为可用于表征患者的生理“状态”。我们使用模拟的心血管系统时间序列以及人类从已知姿势状态的体位压力研究中记录的HR和BP时间序列来验证我们的技术。使用MIMIC II数据库中超过450名患者的重症监护病房(ICU)队列的HR和BP动态,我们证明发现的心血管动态与医院死亡率显着相关(动态模式3和9,从术后逻辑回归分析调整APACHE分数)。与单独使用SAPS-I和APACHE-III(和)相比,结合BP时间序列和SAPS-I或APACHE-III的动力学,可以更准确地评估患者在医院的生存/死亡率。我们的研究结果表明,所揭示的生命体征时间序列动态可能包含比基线敏锐度指标更高的预后价值,并且有可能被用作ICU结局的独立预测指标。

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