医学
心房颤动
心脏病学
内科学
烧蚀
交感神经
血压
作者
Chi‐Jen Weng,Cheng-Hung Li,Yenn‐Jiang Lin,Shih‐Lin Chang,Yu‐Feng Hu,Fa‐Po Chung,Jo‐Nan Liao,Ta‐Chuan Tuan,Tze‐Fan Chao,Chin‐Yu Lin,Ting‐Yung Chang,Ling-Kuo,Chih‐Min Liu,Shin-Huei Liu,Wei‐Tso Chen,Wen‐Han Chang,Nguyễn Khắc Thiên Chương,Ming-Ren Kuo,Pei‐Heng Kao,Guan‐Yi Li
标识
DOI:10.1016/j.jjcc.2023.10.004
摘要
Abstract
Background
Modifying the autonomic system after catheter ablation may prevent the recurrence of atrial fibrillation (AF). Evaluation of skin sympathetic nerve activity (SKNA) is a noninvasive method for the assessment of sympathetic activity. However, there are few studies on the effects of different energy settings on SKNA. Objective
To investigate the changes in SKNA in different energy settings and their relationship to AF ablation outcomes. Methods
Seventy-two patients with paroxysmal and persistent AF were enrolled. Forty-three patients received AF ablation with the conventional (ConV) energy setting (low power for long duration), and 29 patients using a high-power, short-duration (HPSD) strategy. The SKNA was acquired from the right arm 1 day before and after the radiofrequency ablation. We analyzed the SKNA and ablation outcomes in the different energy settings. Results
Both groups had a similar baseline average SKNA (aSKNA). We found that the median aSKNA increased significantly from 446.82 μV to 805.93 μV (p = 0.003) in the ConV group but not in the HPSD group. In the ConV group, patients without AF recurrence had higher aSKNA values. However, the 1-year AF recurrence rate remained similar between both groups (35 % vs. 28 %, p = 0.52). Conclusion
The post-ablation aSKNA levels increased significantly in the ConV group but did not change significantly in the HPSD group, which may reflect different neuromodulatory effects. However, the one-year AF recurrence rates were similar for both groups. These results demonstrate that the HPSD strategy has durable lesion creation but less lesion depth, which may reduce collateral damage.
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