医学
塞利普洛尔
埃勒斯-丹洛斯综合征
介绍
血管医学
血管疾病
外科
内科学
重症监护医学
家庭医学
血压
心率
作者
Giacomo Buso,Anna Paini,Claudia Agabiti-Rosei,Carolina De Ciuceis,Fabio Bertacchini,Deborah Stassaldi,Massimo Salvetti,Marco Ritelli,Marina Venturini,Marina Colombi,María Lorenza Muiesan
标识
DOI:10.1177/1358863x231215330
摘要
Background: Vascular Ehlers–Danlos syndrome (vEDS) is an inherited connective tissue disorder characterized by arterial fragility. Celiprolol has been suggested to significantly reduce rates of vascular events in this setting, though real-world evidence is limited. The aim of this study was to report our experience with celiprolol therapy in vEDS management. Methods: Patients with a genetically confirmed diagnosis of vEDS who were referred for outpatient consultation at the Brescia University Hospital between January 2011 and July 2023 were included. At each visit, patients’ medical history, results of vascular imaging, and office blood pressure measurements were recorded. Celiprolol therapy was progressively titrated to the maximum tolerated dose of up to 400 mg daily, according to the patients’ tolerance. Results: Overall, 26 patients were included. Female sex was prevalent (62%). Mean (SD) age was 37 (16) years. Follow-up duration was 72 (41) months. At the last follow-up visit, all patients were on celiprolol therapy, 80% of whom were taking the maximum recommended dose. The yearly risk of symptomatic vascular events was 8.8%, the majority of which occurred after reaching the maximum recommended dose of celiprolol. No significant predictor of symptomatic vascular events was identified among patients’ clinical characteristics. Conclusion: In our cohort, rates of celiprolol use were high and the drug was well tolerated overall. Nonetheless, the risk of symptomatic vascular events remained nonnegligible. Future studies should identify reliable predictors of major adverse events and explore additional therapeutic strategies that could further lower the risk of life-threatening events in this population.
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