医学
心房颤动
算法
心脏病学
内科学
心电图
诊断准确性
计算机科学
作者
A. William,Majd Kanbour,Thomas Callahan,Mandeep Bhargava,Niraj Varma,John Rickard,Walid I. Saliba,Kathy Wolski,Ayman A. Hussein,Bruce D. Lindsay,Oussama M. Wazni,Khaldoun G. Tarakji
出处
期刊:Heart Rhythm
[Elsevier BV]
日期:2018-10-01
卷期号:15 (10): 1561-1565
被引量:139
标识
DOI:10.1016/j.hrthm.2018.06.037
摘要
The Kardia Mobile Cardiac Monitor (KMCM) detects atrial fibrillation (AF) via a handheld cardiac rhythm recorder and AF detection algorithm. The algorithm operates within predefined parameters to provide a "normal" or "possible atrial fibrillation detected" interpretation; outside of these parameters, an "unclassified" rhythm is reported. The system has been increasingly used, but its performance has not been independently tested.The objective of this study was to evaluate whether the KMCM system can accurately detect AF.A single-center, adjudicator-blinded case series of 52 consecutive patients with AF admitted for antiarrhythmic drug initiation were enrolled. Serial 12-lead electrocardiograms (ECGs) and nearly simultaneously acquired KMCM recordings were obtained.There were 225 nearly simultaneously acquired KMCM and ECG recordings across 52 enrolled patients (mean age 68 years; 67% male). After exclusion of unclassified recordings, the KMCM automated algorithm interpretation had 96.6% sensitivity and 94.1% specificity for AF detection as compared with physician-interpreted ECGs, with a κ coefficient of 0.89. Physician-interpreted KMCM recordings had 100% sensitivity and 89.2% specificity for AF detection as compared with physician-interpreted ECGs, with a κ coefficient of 0.85. Sixty-two recordings (27.6%) were unclassified by the KMCM algorithm. In these instances, physician interpretation of KMCM recordings had 100% sensitivity and 79.5% specificity for AF detection as compared with 12-lead ECG interpretation, with a κ coefficient of 0.71.The KMCM system provides sensitive and specific AF detection relative to 12-lead ECGs when an automated interpretation is provided. Direct physician review of KMCM recordings can enhance diagnostic yield, especially for unclassified recordings.
科研通智能强力驱动
Strongly Powered by AbleSci AI