巨细胞动脉炎
痹症科
内科学
医学
联盟
血管炎
疾病
天文
物理
作者
Marina Scolnik,Maria L Brance,Daniel G. Fernández‐Ávila,Emília Inoue Sato,Alexandre Wagner Silva de Souza,Sebastián J Magri,Lina María Saldarriaga Rivera,Manuel F. Ugarte‐Gil,Luis Felipe Flores‐Suárez,Alejandra Babini,Natalia Zamora,María L Acosta Felquer,Facundo Vergara,Leandro Carlevaris,Santiago Scarafia,Enrique Roberto Soriano Guppy,Sebastian Unizony
标识
DOI:10.1016/s2665-9913(22)00260-0
摘要
Considerable variability exists in the way that health-care providers treat patients with giant cell arteritis in Latin America, with patients commonly exposed to excessive amounts of glucocorticoids. In addition, large health disparities prevail in this region due to socioeconomic factors, which influence access to care, including biological treatments. For these reasons, the Pan American League of Associations for Rheumatology developed the first evidence-based giant cell arteritis treatment guidelines tailored for Latin America. A panel of vasculitis experts from Mexico, Colombia, Peru, Brazil, and Argentina generated clinically meaningful questions related to the treatment of giant cell arteritis in the population, intervention, comparator, and outcome (PICO) format. Following the grading of recommendations, assessment, development, and evaluation methodology, a team of methodologists did a systematic literature search, extracted and summarised the effects of the interventions, and graded the quality of the evidence. The panel of vasculitis experts voted on each PICO question and made recommendations, which required at least 70% agreement among the voting members to be included in the guidelines. Nine recommendations and one expert opinion statement for the treatment of giant cell arteritis were developed considering the most up-to-date evidence and the socioeconomic characteristics of Latin America. These recommendations include guidance for the use of glucocorticoids, tocilizumab, methotrexate, and aspirin for patients with giant cell arteritis.
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