Al-Jumaily Adel Ali
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:3564-3567. doi: 10.1109/EMBC.2016.7591498.
Long-term continuous patient monitoring is required in many health systems for monitoring and analytical diagnosing purposes. It has been recognized that these types of monitoring systems have shortcomings related to patient comfort and/or functionality. Non-contact monitoring systems have been developed to address some of these shortcomings. One of such systems is non-contact physiological vital signs assessments for Chronic Heart Failure (CHF) patients. This paper presents a novel pulmonary ventilation model that defines the relationship between the intrapulmonary pressure and the chest displacement. A novel intrapulmonary pressure and tidal volume estimation algorithm is also proposed. A database consisting of twenty CHF patients with New York Heart Association (NYHA) Heart Failure Classification Class II & III; whose underwent full Polysomnography (PSG) analysis for diagnosis of sleep apnea, disordered sleep, or both, was selected for the verification of the proposed model and algorithm. The proposed algorithm analyzes the non-contact sensor data and estimate the patient's intrapulmonary pressure and tidal volume. The output of the algorithm is compared with the gold-standard PSG recordings. Across all twenty CHF patients' recordings with mean recorded sleep duration of 7.76 hours, the tidal volume estimation median accuracy achieved 83.13% with a median error of 57.32 milliliters. A potential application would be non-contact continuous monitoring of intrapulmonary pressure and tidal volume during sleep in the home.
在许多医疗系统中,为了监测和分析诊断目的,需要对患者进行长期连续监测。人们已经认识到,这类监测系统在患者舒适度和/或功能方面存在缺陷。为了解决其中一些缺陷,已经开发了非接触式监测系统。其中一种系统是针对慢性心力衰竭(CHF)患者的非接触式生理生命体征评估。本文提出了一种新颖的肺通气模型,该模型定义了肺内压与胸部位移之间的关系。还提出了一种新颖的肺内压和潮气量估计算法。选择了一个由20名纽约心脏协会(NYHA)心力衰竭分级为II级和III级的CHF患者组成的数据库;这些患者接受了全面的多导睡眠图(PSG)分析以诊断睡眠呼吸暂停、睡眠障碍或两者皆有,用于验证所提出的模型和算法。所提出的算法分析非接触式传感器数据并估计患者的肺内压和潮气量。将算法的输出与金标准PSG记录进行比较。在所有20名CHF患者的记录中,平均记录睡眠时长为7.76小时,潮气量估计的中位数准确率达到83.13%,中位数误差为57.32毫升。一个潜在的应用是在家中对睡眠期间的肺内压和潮气量进行非接触式连续监测。