Author:
Sato Taiki,Sotomi Yohei,Hikoso Shungo,Kitamura Tetsuhisa,Nakatani Daisaku,Okada Katsuki,Dohi Tomoharu,Sunaga Akihiro,Kida Hirota,Matsuoka Yuki,Tanaka Nobuaki,Watanabe Tetsuya,Makino Nobuhiko,Egami Yasuyuki,Oka Takafumi,Minamiguchi Hitoshi,Miyoshi Miwa,Okada Masato,Kanda Takashi,Matsuda Yasuhiro,Kawasaki Masato,Masuda Masaharu,Inoue Koichi,Sakata Yasushi, ,Mano Toshiaki,Fukunami Masatake,Yamada Takahisa,Furukawa Yoshio,Hasegawa Shinji,Higuchi Yoshiharu,Hirata Akio,Tanouchi Jun,Nishino Masami,Matsunaga Yasuharu,Matsumura Yasushi,Mizuno Hiroya,Takeda Toshihiro,Nakano Tomoaki,Ozu Kentaro,Suna Shinichiro,Oeun Bolrathanak,Tanaka Koji,Minamisaka Tomoko,Hoshida Shiro
Abstract
AbstractIdentifying patients who would benefit from extensive catheter ablation along with pulmonary vein isolation (PVI) among those with persistent atrial fibrillation (AF) has been a subject of controversy. The objective of this study was to apply uplift modeling, a machine learning method for analyzing individual causal effect, to identify such patients in the EARNEST-PVI trial, a randomized trial in patients with persistent AF. We developed 16 uplift models using different machine learning algorithms, and determined that the best performing model was adaptive boosting using Qini coefficients. The optimal uplift score threshold was 0.0124. Among patients with an uplift score ≥ 0.0124, those who underwent extensive catheter ablation (PVI-plus) showed a significantly lower recurrence rate of AF compared to those who received only PVI (PVI-alone) (HR 0.40; 95% CI 0.19–0.84; P-value = 0.015). In contrast, among patients with an uplift score < 0.0124, recurrence of AF did not significantly differ between PVI-plus and PVI-alone (HR 1.17; 95% CI 0.57–2.39; P-value = 0.661). By employing uplift modeling, we could effectively identify a subset of patients with persistent AF who would benefit from PVI-plus. This model could be valuable in stratifying patients with persistent AF who need extensive catheter ablation before the procedure.
Publisher
Springer Science and Business Media LLC