Chow Josephine Sau Fan, Maurya Nutan, San Miguel Susan, Teramayi Rumbidzai, Parameswaran Ahilan, D'Souza Annamarie, Melbourne Gregory, Descallar Joseph, Juhn Young, Chan Enoch, Pong Jerome
South Western Sydney Nursing and Midwifery Research Alliance, South Western Sydney Local Health District, Sydney, NSW, Australia.
Nursing and Midwifery Research, Ingham Institute for Applied Medical Research, Sydney, NSW, Australia.
Front Med Technol. 2025 Jul 24;7:1534097. doi: 10.3389/fmedt.2025.1534097. eCollection 2025.
This study aims to implement a virtual model of care in the primary healthcare setting, utilising biosensor technologies (S-Patch EX) to remotely monitor and identify clinical signs and symptoms of cardiovascular conditions (mainly arrhythmias) in patients post-COVID-19 infection.
This open-label, non-randomised, observational study was conducted in patients aged 18 years and above, clinically diagnosed with COVID-19 after June 2021, and those residing within Greater Western Sydney. The study involved two arms: the remote monitoring (intervention) and standard care (control) groups. The intervention group comprised patients who were provided with an S-Patch EX to monitor their electrocardiogram. Data were transmitted in real-time to a mobile phone via Bluetooth technology, and results were generated through artificial intelligence (AI) algorithms. All the data were reviewed for arrhythmia detection and escalated to the participant's general practitioner (if detected) to determine the appropriate intervention. The control group was used to compare the rate of cardiac arrhythmia detection against the intervention group. The patient's demographic and longitudinal clinical data were obtained from the electronic medical record system, enabling exploration and comparison of the cohort's characteristics and outcomes. Descriptive analysis was conducted for categorical variables (frequencies and cross-tabulations) and continuous variables (means, standard deviations, and medians). Depending on the nature of data, the groups were compared using -tests or Chi-square tests. Multivariable Cox regression was used to analyse time to first cardiovascular event post-COVID-19 infection.
The time to the patient's first cardiovascular event (mainly arrhythmias) post-COVID-19 infection.
Of 44 patients who provided consent, 40 commenced monitoring. Thirteen patients (32.5%) were detected by the AI algorithms from the S-Patch EX monitoring system to have cardiac arrhythmias, including atrial fibrillation, supraventricular tachycardia, and ventricular tachycardia. Univariate Cox regression demonstrated that arrhythmia was more likely to be detected in the remote monitoring group (13/40, 32.9%) as compared with the standard care group (7/200, 3.5%) [HR = 29.56 (9.95, 87.86), < 0.0001]. Most of the patients were detected with arrhythmia within a 3-month timeframe of monitoring. Twenty-one patients (21/200, 10.5%) from the standard care group visited the emergency department and/or were admitted to the hospital post-COVID-19 infection due to chest pain, shortness of breath/dyspnoea, palpitations, dizziness/light-headedness/presyncope, and nausea. Two patients developed long COVID symptoms (progressive dyspnoea) 2-5 months post-COVID-19 infection.
Considering the risk of developing cardiovascular complications post-COVID-19 infection, regular monitoring, reassessment, and evaluation are recommended as a part of post-COVID-19 management for all patients, including young, healthy, and asymptomatic populations. A randomised interventional study with a larger sample size and longer follow-up period is advised for a better understanding of the cardiovascular impact post-COVID infection.
本研究旨在利用生物传感器技术(S-Patch EX)在初级医疗保健环境中实施虚拟护理模式,以远程监测并识别新冠病毒感染后患者心血管疾病(主要是心律失常)的临床体征和症状。
本开放标签、非随机、观察性研究针对2021年6月后临床诊断为新冠病毒感染的18岁及以上患者,以及居住在大悉尼西区的患者开展。该研究分为两组:远程监测(干预)组和标准护理(对照)组。干预组患者配备S-Patch EX以监测其心电图。数据通过蓝牙技术实时传输至手机,并通过人工智能(AI)算法生成结果。所有数据均会进行心律失常检测审查,若检测到异常则上报给参与者的全科医生以确定适当干预措施。对照组用于与干预组比较心律失常检测率。患者的人口统计学和纵向临床数据从电子病历系统获取,以便探索和比较队列特征及结果。对分类变量(频率和交叉表)和连续变量(均值、标准差和中位数)进行描述性分析。根据数据性质,使用t检验或卡方检验对两组进行比较。采用多变量Cox回归分析新冠病毒感染后首次心血管事件的发生时间。
新冠病毒感染后患者首次心血管事件(主要是心律失常)的发生时间。
在44名同意参与的患者中,40名开始监测。S-Patch EX监测系统的AI算法检测到13名患者(32.5%)患有心律失常,包括心房颤动、室上性心动过速和室性心动过速。单变量Cox回归显示,与标准护理组(7/200,3.5%)相比,远程监测组(13/40,32.9%)更有可能检测到心律失常[风险比(HR)=29.56(9.95,87.86),P<0.0001]。大多数患者在监测的3个月内被检测出心律失常。标准护理组有21名患者(21/200,10.5%)在新冠病毒感染后因胸痛、呼吸急促/呼吸困难、心悸、头晕/头昏/接近晕厥和恶心等症状前往急诊科就诊和/或住院。两名患者在新冠病毒感染后2至5个月出现了长期新冠症状(进行性呼吸困难)。
鉴于新冠病毒感染后发生心血管并发症的风险,建议对所有患者,包括年轻、健康和无症状人群,进行定期监测、重新评估和评价,作为新冠病毒感染后管理的一部分。建议开展一项样本量更大、随访期更长的随机干预研究,以更好地了解新冠病毒感染后对心血管系统的影响。