Predictors and clinical outcomes of poor symptomatic improvement after transcatheter aortic valve replacement

经导管主动脉瓣置换术后症状改善不佳的预测因素和临床结局

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Abstract

OBJECTIVE: Transcatheter aortic valve replacement (TAVR) improves clinical symptoms in most patients with severe aortic stenosis (AS). However, some patients do not benefit from the symptom-reducing effects of TAVR. We assessed the predictors and clinical outcomes of poor symptomatic improvement (SI) after TAVR. METHODS: A total of 1749 patients with severe symptomatic AS undergoing transfemoral TAVR were evaluated using the Japanese multicentre TAVR registry. Poor SI was defined as readmission for heart failure (HF) within 1 year after TAVR or New York Heart Association (NYHA) class ≥3 after 1 year. A logistic regression model was used to identify predictors of poor SI. One-year landmark analysis after TAVR was used to evaluate the association between poor SI and clinical outcomes. RESULTS: Among the overall population (mean age, 84.5 years; female, 71.3%; mean STS score, 6.3%), 6.6% were categorised as having poor SI. Atrial fibrillation, chronic obstructive pulmonary disease, Clinical Frailty Scale ≥4, chronic kidney disease and moderate to severe mitral regurgitation were independent predictors of poor SI. One-year landmark analysis demonstrated that poor SI had a higher incidence of all-cause death and readmission for HF compared with SI (p<0.001). Poor SI with preprocedural NYHA class 2 had a worse outcome than SI with preprocedural NYHA class ≥3. CONCLUSIONS: Poor SI was associated with worse outcomes 1 year after the procedure. It had a greater impact on clinical outcomes than baseline symptoms. TAVR may be challenging for patients with many predictors of poor SI. TRIAL REGISTRATION NUMBER: This registry, associated with the University Hospital Medical Information Network Clinical Trials Registry, was accepted by the International Committee of Medical Journal Editors (UMIN-ID: 000020423).

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