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Using Latent Variable Autoregression to Monitor the Health of Individuals with Congestive Heart Failure

机译:使用潜在变量自回归来监测充血性心力衰竭患者的健康

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Sudden weight gain in patients living with Congestive Heart Failure (CHF) is often an indication that the individual is retaining fluid, which often means that patient's heart has weakened leading to increased risk of kidney or cardiac failure. Clinical interventions can be made at this stage, leading to better outcomes, however it is essential that the interventions take place before the patient's health declines too drastically. In this work, we present a latent variable autoregression model that tracks patient weight and blood pressure over time, allowing us to predict weight values into the future. We are also able to model continuous heart-rate signals and evaluate a subject's response to physical activity. This allows us to detect signs of health decline days earlier than existing rule-based systems, leading to the possibility of earlier clinical interventions, potentially preventing deadly medical emergencies.
机译:患有充血性心力衰竭(CHF)的患者突然体重增加通常表明该人正在积水,这通常意味着患者的心脏变弱,导致肾脏或心力衰竭的风险增加。可以在此阶段进行临床干预,从而获得更好的结果,但是必须在患者的健康状况急剧下降之前进行干预。在这项工作中,我们提出了一个潜在的变量自回归模型,该模型可以随时间跟踪患者的体重和血压,从而使我们能够预测未来的体重值。我们还能够对连续的心率信号进行建模,并评估受试者对体育锻炼的反应。这使我们能够比现有的基于规则的系统早发现健康下降的迹象,从而有可能更早地进行临床干预,从而有可能预防致命的医疗紧急情况。

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