医学
多发性骨髓瘤
肿瘤科
嵌合抗原受体
队列
内科学
骨髓
免疫学
癌症
免疫疗法
作者
Ciara L. Freeman,Jerald Noble,Meghan Menges,Ricardo Villanueva,Justyn Y. Nakashima,Nicholas Figura,R. Petter Tonseth,Dietrich Werner Idiáquez,Lawrence Skelson,Eric E. Smith,Julieta Abraham-Miranda,Salvatore Corallo,Gabriel De Avila,Omar Castañeda Puglianini,Hien Liu,Melissa Alsina,Taiga Nishihori,Kenneth H. Shain,Rachid Baz,Brandon Blue
出处
期刊:Blood
[Elsevier BV]
日期:2024-12-09
卷期号:145 (15): 1645-1657
被引量:23
标识
DOI:10.1182/blood.2024024965
摘要
Chimeric antigen receptor T-cell (CAR-T) therapy has emerged as a breakthrough treatment for relapsed and refractory multiple myeloma (RRMM). However, these products are complex to deliver, and alternative options are now available. Identifying biomarkers that can predict therapeutic outcomes is crucial for optimizing patient selection. There is a paucity of data evaluating the utility of both serum soluble B-cell maturation antigen (sBCMA) levels and metabolic tumor volume (MTV) at baseline in patients with RRMM undergoing CAR-T therapy. We identified a cohort of 183 patients with available serum to measure sBCMA and/or pretreatment MTV, derived from positron emission tomography-computed tomography scans obtained per standard of care. Expectedly, high pretreatment levels of sBCMA correlated with other established markers of tumor burden (eg, bone marrow plasma cells and β2 microglobulin) and inflammation and were highly prognostic for CAR-T-related toxicities and inferior progression-free survival (PFS). High MTV values were also associated with shorter PFS and inferior overall survival. The poor correlation observed between these 2 measures prompted evaluation of those with discordant results, identifying that those with low sBCMA and high MTV frequently had low/absent BCMA expression on plasma cells and suboptimal response. Our findings highlight the potential utility of sBCMA and MTV to facilitate more personalized treatment strategies in the management of RRMM eligible for BCMA-directed CAR-T.
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