医学
血管炎
内科学
狭窄
动脉炎
跛行
大动脉炎
外科
心脏病学
血管疾病
疾病
动脉疾病
作者
Tanaz A. Kermani,Antoine G. Sreih,David Cuthbertson,Nader Khalidi,Curry L. Koening,Carol A. Langford,Carol A. McAlear,Paul A. Monach,Larry W. Moreland,Christian Pagnoux,Rennie L. Rhee,Philip Seo,Kenneth J. Warrington,Peter A. Merkel
标识
DOI:10.1093/rheumatology/keae333
摘要
Abstract Objectives To evaluate damage and clinical characteristics associated with damage in Takayasu’s arteritis (TAK). Methods Patients with TAK enrolled in a multicentre, prospective, observational study underwent standardized damage assessment every 6 months using the Vasculitis Damage Index (VDI) and the Large-Vessel Vasculitis Index of Damage (LVVID). Results The study included 236 patients with TAK: 92% female, 81% Caucasian; median (25th, 75th percentile) disease duration = 2.6 (0.12, 6.9) years. Eighty-four percent had follow-up: median (25th, 75th) duration 4.1 (1.9, 7.5) years. Items of damage were present in 89% on VDI, 87% on LVVID, in the peripheral vascular (76% VDI, 74% LVVID) and cardiac (40% VDI, 45% LVVID) systems. During follow-up, 42% patients had new damage, including major vessel stenosis/arterial occlusion (8%), limb claudication (6%), hypertension (7%), aortic aneurysm (4%) and bypass surgery (4%). Disease-specific damage accounted for >90% of new items. Older age, relapse and longer duration of follow-up were associated with new damage items; a higher proportion of patients without new damage were on MTX (P <0.05). Among 48 patients diagnosed with TAK within 180 days of enrolment, new damage occurred in 31% on VDI and 52% on LVVID. History of relapse was associated with new damage in the entire cohort while in patients with a recent diagnosis, older age at diagnosis was associated with new damage. Conclusion Damage is present in >80% of patients with TAK even with recent diagnosis and >40% of patients accrue new, mainly disease-specific damage. Therapies for TAK that better control disease activity and prevent damage should be prioritized.
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