AI-Enabled ECG Combined with Dry Electrode Sensors for Population-Based Screening of Atrial Fibrillation

Alan Kennedy, D. Finlay, R. Bond, D. Guldenring, J. Mclaughlin, Chris Crockford"
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Abstract

This study assessed the performance of a deep neural network (PulseAI, Belfast, United Kingdom) used in conjunction with a dry-electrode ECG sensor device (RhythmPad, D&FT, United Kingdom) to detect AF automatically. Simultaneous pairs of 12-lead ECGs and single-lead dry-electrode ECGs were collected from 622 patients. The 12-lead ECGs were manually overread and used as reference diagnoses. Twenty-two patients were confirmed with AF and had an interpretable 12-lead and single-lead dry-electrode ECG recording. The deep neural network analysed the dry-electrode ECGs, and performance was compared to the 12-lead interpretation. Overall, the deep neural network algorithm yielded a sensitivity of 96% (95% CI, 87%-100%), specificity of 99% (95% CI, 98%-100%) and positive predictive value of 81% (95% CI, 66%-96%) for detection of AF episodes. When coupled with dry-electrode ECG sensors, the PulseAI neural network allows for large-scale and low-cost screening for AF. Widespread implementation of this technology may allow for earlier detection, treatment, and management of patients with AF.
人工智能心电图结合干电极传感器用于人群心房颤动筛查
本研究评估了深度神经网络(PulseAI,贝尔法斯特,英国)与干电极心电传感器设备(RhythmPad, D&FT,英国)结合使用来自动检测AF的性能。对622例患者同时采集12导联心电图和单导联干电极心电图。12导联心电图被人工过读并用作参考诊断。22例患者被确诊为房颤,并有可解释的12导联和单导联干电极心电图记录。深度神经网络分析了干电极心电图,并将其性能与12导联解释进行了比较。总体而言,深度神经网络算法检测AF发作的灵敏度为96% (95% CI, 87%-100%),特异性为99% (95% CI, 98%-100%),阳性预测值为81% (95% CI, 66%-96%)。当与干电极ECG传感器相结合时,PulseAI神经网络可以进行大规模和低成本的房颤筛查。该技术的广泛应用可以使房颤患者的早期检测、治疗和管理成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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