Department of Cardiology, Third Faculty of Medicine, University Hospital Kralovske Vinohrady, Charles University, Ruská 87, Prague, 100 00, Czech Republic.
Department of Information and Communication Technologies in Medicine, Faculty of biomedical engineering, Czech Technical University in Prague, Prague, Czech Republic.
BMC Cardiovasc Disord. 2023 Jun 7;23(1):290. doi: 10.1186/s12872-023-03309-5.
Post-operative atrial fibrillation (PoAF) occurs in ~ 30% of patients after cardiac surgery. The etiology of PoAF is complex, but a disbalance in autonomic systems plays an important role. The goal of this study was to assess whether pre-operative heart rate variability analysis can predict the risk of PoAF.
Patients without a history of AF with an indication for cardiac surgery were included. Two-hour ECG recordings one day before surgery was used for the HRV analysis. Univariate and multivariate logistic regression, including all HRV parameters, their combination, and clinical variables, were calculated to find the best predictive model for post-operative AF.
One hundred and thirty-seven patients (33 women) were enrolled in the study. PoAF occurred in 48 patients (35%, AF group); the remaining 89 patients were in the NoAF group. AF patients were significantly older (69.1 ± 8.6 vs. 63.4 ± 10.5 yrs., p = 0.002), and had higher CHADS-VASc score (3 ± 1.4 vs. 2.5 ± 1.3, p = 0.01). In the multivariate regression model, parameters independently associated with higher risk of AF were pNN50, TINN, absolute power VLF, LF and HF, total power, SD2, and the Porta index. A combination of clinical variables with HRV parameters in the ROC analysis achieved an AUC of 0.86, a sensitivity of 0.95, and a specificity of 0.57 and was more effective in PoAF prediction than a combination of clinical variables alone.
A combination of several HRV parameters is helpful in predicting the risk of PoAF. Attenuation of heart rate variability increases the risk for PoAF.
心脏手术后约 30%的患者会发生术后心房颤动(PoAF)。PoAF 的病因复杂,但自主神经系统失衡起着重要作用。本研究旨在评估术前心率变异性分析是否可预测 PoAF 的风险。
纳入无 AF 病史且需要心脏手术的患者。手术前一天进行 2 小时心电图记录,用于 HRV 分析。使用单变量和多变量逻辑回归,包括所有 HRV 参数、它们的组合以及临床变量,来寻找预测术后 AF 的最佳模型。
本研究共纳入 137 例患者(33 例女性)。48 例(35%)患者发生 PoAF(AF 组);其余 89 例患者为 NoAF 组。AF 患者年龄明显较大(69.1±8.6 岁 vs. 63.4±10.5 岁,p=0.002),CHADS-VASc 评分较高(3±1.4 分 vs. 2.5±1.3 分,p=0.01)。多变量回归模型中,与 AF 风险增加独立相关的参数为 pNN50、TINN、绝对功率 VLF、LF 和 HF、总功率、SD2 和 Porta 指数。在 ROC 分析中,将临床变量与 HRV 参数相结合可获得 AUC 为 0.86、灵敏度为 0.95、特异性为 0.57 的预测 PoAF 的效果优于仅结合临床变量。
几种 HRV 参数的组合有助于预测 PoAF 的风险。心率变异性的减弱增加了 PoAF 的风险。