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American Heart Association

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Final ID: MDP287

Feasibility of Using Wearables to Obtain High-Fidelity ECG Signals for Cardiovascular Disease Screening in Palestinian Refugees in Jordan

Abstract Body (Do not enter title and authors here): Background: Refugee populations often experience high rates of cardiovascular disease (CVD). Factors such as significant physiological stress, trauma, limited access to healthcare, substance abuse, and poor lifestyle choices contribute to disease progression and an increased incidence of cardiovascular events. We sought to evaluate the feasibility of using wearables to obtain high-fidelity ECG signals for CVD screening in refugees in Jordan.
Methods: This observational cross-sectional study involved outpatients at one of four regional United Nations’ primary care clinics for Palestinian refugee in Jordan. Research assistants collected health histories from consented patients and recorded a 30-second, 6-lead ECG using a handheld, Bluetooth-enabled, wearable device (KardiaMobile 6L, AliveCor Inc., Mountain View, CA, USA). The digital ECG signals were stored on the Bluetooth-synced mobile device and then exported to a cloud server for offline analysis. The raw ECG recordings were preprocessed, and a single median beat was calculated per lead. Waveforms were segmented, and duration and amplitude measures were determined using a previously validated custom algorithm (University of Pittsburgh, PA, USA). All ECG recordings were reviewed by an independent physician.
Result: The sample included 31 patients (age 52±13, 64% Females). Risk factors were prevalent in this group, including hypertension (74%), high cholesterol (65%), diabetes (64%), in-camp living (33%), and smoking (30%). Figure 1 shows the population-averaged median beat with 99% CI distribution of this sample. Mean QRS duration was 95±23 ms (range 53−150) and QTc interval was 403±53 (range 267−513). Most patients were in normal sinus rhythm (84%), and remaining patients were in atrial fibrillation or flutter (16%). Other clinically significant abnormalities included non-specific ST-T changes (9.7%), left bundle branch block (1.6%), and LVH with left ventricular strain (1.6%).
Conclusion: This pilot study demonstrated that it is feasible to obtain high fidelity ECG signals using wearables to screen for CVD in refugees. Such affordable, noninvasive, point-of-care screening tools could enable early diagnosis and treatment in these patients.
  • Atoum, Hadeel  ( UNIVERSITY OF PITTSBURGH , Pittsburgh , Pennsylvania , United States )
  • Ji, Rui Qi  ( UNIVERSITY OF PITTSBURGH , Pittsburgh , Pennsylvania , United States )
  • Abuhannaneh, Mutaz  ( University of Jordan , Amman , Jordan )
  • Alduraidi, Hamzah  ( University of Jordan , Amman , Jordan )
  • Alshraideh, Jafar  ( University of Jordan , Amman , Jordan )
  • Sejdic, Ervin  ( University of Toronto , Toronto , Ontario , Canada )
  • Al-zaiti, Salah  ( UNIVERSITY OF PITTSBURGH , Pittsburgh , Pennsylvania , United States )
  • Author Disclosures:
    Hadeel Atoum: DO NOT have relevant financial relationships | Rui Qi Ji: DO NOT have relevant financial relationships | Mutaz Abuhannaneh: DO NOT have relevant financial relationships | Hamzah Alduraidi: No Answer | Jafar Alshraideh: DO NOT have relevant financial relationships | Ervin Sejdic: No Answer | Salah Al-Zaiti: DO NOT have relevant financial relationships
Meeting Info:

Scientific Sessions 2024

2024

Chicago, Illinois

Session Info:

Living la Vida Cardiac: Lifestyle Factors and Minoritized Communities

Saturday, 11/16/2024 , 02:50PM - 04:15PM

Moderated Digital Poster Session

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