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Published in: Netherlands Heart Journal 1/2019

Open Access 01-01-2019 | Original Article

A mobile one-lead ECG device incorporated in a symptom-driven remote arrhythmia monitoring program. The first 5,982 Hartwacht ECGs

Authors: J. L. Selder, L. Breukel, S. Blok, A. C. van Rossum, I. I. Tulevski, C. P. Allaart

Published in: Netherlands Heart Journal | Issue 1/2019

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Abstract

Background

In recent years many mobile devices able to record health-related data in ambulatory patients have emerged. However, well-organised programs to incorporate these devices are sparse. Hartwacht Arrhythmia (HA) is such a program, focusing on remote arrhythmia detection using the AliveCor Kardia Mobile (KM) and its algorithm.

Objectives

The aim of this study was to assess the benefit of the KM device and its algorithm in detecting cardiac arrhythmias in a real-world cohort of ambulatory patients.

Methods

All KM ECGs recorded in the HA program between January 2017 and March 2018 were included. Classification by the KM algorithm was compared with that of the Hartwacht team led by a cardiologist. Statistical analyses were performed with respect to detection of sinus rhythm (SR), atrial fibrillation (AF) and other arrhythmias.

Results

5,982 KM ECGs were received from 233 patients (mean age 58 years, 52% male). The KM algorithm categorised 59% as SR, 22% as possible AF, 17% as unclassified and 2% as unreadable. According to the Hartwacht team, 498 (8%) ECGs were uninterpretable. Negative predictive value for detection of AF was 98%. However, positive predictive value as well as detection of other arrhythmias was poor. In 81% of the unclassified ECGs, the Hartwacht team was able to provide a diagnosis.

Conclusions

This study reports on the first symptom-driven remote arrhythmia monitoring program in the Netherlands. Less than 10% of the ECGs were uninterpretable. However, the current performance of the KM algorithm makes the device inadequate as a stand-alone application, supporting the need for manual ECG analysis in HA and similar programs.
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Metadata
Title
A mobile one-lead ECG device incorporated in a symptom-driven remote arrhythmia monitoring program. The first 5,982 Hartwacht ECGs
Authors
J. L. Selder
L. Breukel
S. Blok
A. C. van Rossum
I. I. Tulevski
C. P. Allaart
Publication date
01-01-2019
Publisher
Bohn Stafleu van Loghum
Published in
Netherlands Heart Journal / Issue 1/2019
Print ISSN: 1568-5888
Electronic ISSN: 1876-6250
DOI
https://doi.org/10.1007/s12471-018-1203-4

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