Attia Zachi I, Dugan Jennifer, Rideout Adam, Maidens John N, Venkatraman Subramaniam, Guo Ling, Noseworthy Peter A, Pellikka Patricia A, Pham Steve L, Kapa Suraj, Friedman Paul A, Lopez-Jimenez Francisco
Department of Cardiovascular Medicine, Mayo Clinic College of Medicine, Rochester, MN, USA.
Eko Devices, Inc., Berkeley, CA, USA.
Eur Heart J Digit Health. 2022 May 23;3(3):373-379. doi: 10.1093/ehjdh/ztac030. eCollection 2022 Sep.
Electrocardiogram (ECG)-enabled stethoscope (ECG-Scope) acquires a single-lead ECGs during cardiac auscultation and may facilitate real-time screening for pathologies not routinely identified by cardiac auscultation alone. We previously demonstrated an artificial intelligence (AI) algorithm can identify left ventricular dysfunction (LVSD) [defined as ejection fraction (EF) ≤ 40%] with an area under the curve (AUC) of 0.91 using a 12-lead ECG.
One hundred patients referred for clinically indicated echocardiography were prospectively recruited. ECG-Scope recordings with the patient supine and sitting were obtained in multiple electrode locations at the time of the echocardiogram. The AI algorithm for the detection of LVSD was retrained using single leads from ECG-12 and validated against ECG-Scope to determine accuracy for low EF detection (≤35%, <40%, or <50%). We evaluated the algorithm with respect to body position and lead location. Amongst 100 patients (aged 61.3 ± 13.8; 61% male, BMI: 30.0 ± 5.4), eight had EF≤40%, and six had EF 40-50%. The best single recording position was V2 with the patient supine [AUC: 0.88 (CI: 0.80-0.97) for EF≤35%, 0.85 (CI: 0.75-0.95) for EF≤40%, and 0.81 (CI: 0.71-0.90) for EF < 50%]. When using an AI model to select the recording automatically, AUC was 0.91 (CI: 0.84-0.97) for EF≤35%, 0.89 (CI: 0.83-0.96) for EF≤40%, and 0.84 (CI: 0.73-0.94) for EF < 50%.
An AI algorithm applied to an ECG-enabled stethoscope recording in standard auscultation positions reliably detected the presence of a low EF in this prospective study of patients referred for echocardiography. The ability to screen patients with a possible low EF during routine physical examination may facilitate rapid detection of LVSD.
启用心电图(ECG)的听诊器(ECG-Scope)在心脏听诊期间获取单导联心电图,可能有助于对仅通过心脏听诊无法常规识别的病理情况进行实时筛查。我们之前证明,一种人工智能(AI)算法使用12导联心电图识别左心室功能障碍(LVSD,定义为射血分数(EF)≤40%)时,曲线下面积(AUC)为0.91。
前瞻性招募了100名因临床需要进行超声心动图检查的患者。在超声心动图检查时,在多个电极位置获取患者仰卧位和坐位时的ECG-Scope记录。使用来自ECG-12的单导联对检测LVSD的AI算法进行重新训练,并与ECG-Scope进行验证,以确定检测低EF(≤35%、<40%或<50%)的准确性。我们评估了该算法在体位和导联位置方面的情况。在100名患者(年龄61.3±13.8岁;61%为男性,体重指数:30.0±5.4)中,8例EF≤40%,6例EF为40%-50%。最佳的单记录位置是患者仰卧位时的V2导联[EF≤35%时AUC为0.88(95%置信区间:0.80-0.97),EF≤40%时为0.85(95%置信区间:0.75-0.95),EF<50%时为