Blood-based proteomic profiling identifies OSMR as a novel biomarker of AML outcomes.

IF 21 1区 医学 Q1 HEMATOLOGY
Blood Pub Date : 2025-06-19 DOI:10.1182/blood.2024027244
Patrick K Reville, Bofei Wang, Jennifer Marvin-Peek, Bin Yuan, Yu-An Kuo, Araceli Garza, Jessica Root, Wei Qiao, Andrea Arruda, Ivo Veletic, Yiwei Liu, Nicholas J Short, Courtney D DiNardo, Tapan M Kadia, Naval G Daver, Philip L Lorenzi, Koji Sasaki, Steven Kornblau, Mark D Minden, Farhad Ravandi, Hagop M Kantarjian, Hussein A Abbas
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引用次数: 0

Abstract

Abstract: Inflammation is increasingly recognized as a critical factor in acute myeloid leukemia (AML) pathogenesis. We performed blood-based proteomic profiling of 251 inflammatory proteins in 543 patients with newly diagnosed AML. Using a machine learning model, we derived an 8-protein prognostic score termed the leukemia inflammatory risk score (LIRS). Individual proteins were evaluated in multivariable Cox models, and model performance was assessed by cumulative concordance index. Findings were validated in internal and external cohorts across 2 institutions. Blood-based LIRS significantly outperformed the European LeukemiaNet 2022 risk model and was independently prognostic of overall survival after accounting for known clinical and molecular prognostic factors. Oncostatin M receptor was uniquely identified as the strongest independent predictor of survival, early mortality, and induction chemotherapy response, and further validated in an independent assay. These blood-based biomarkers could have significant clinical implications for risk stratification and prognostication in patients with newly diagnosed AML.

基于血液的蛋白质组学分析确定OSMR是AML结果的新生物标志物。
炎症越来越被认为是急性髓性白血病(AML)发病的一个关键因素。我们对543名新诊断的AML患者的251种炎症蛋白进行了基于血液的蛋白质组学分析。使用机器学习模型,我们得出了一个8蛋白预后评分,称为白血病炎症风险评分(LIRS)。在多变量cox模型中评估单个蛋白,并通过累积一致性指数评估模型性能。研究结果在两个机构的内部和外部队列中得到验证。基于血液的LIRS显著优于欧洲白血病网(ELN) 2022风险模型,在考虑了已知的临床和分子预后因素后,它是总生存的独立预后。OSMR被唯一地确定为生存、早期死亡率和诱导化疗反应的最强独立预测因子,并在独立分析中得到进一步验证。这些基于血液的生物标志物可能对新诊断的AML患者的风险分层和预后具有重要的临床意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Blood
Blood 医学-血液学
CiteScore
23.60
自引率
3.90%
发文量
955
审稿时长
1 months
期刊介绍: Blood, the official journal of the American Society of Hematology, published online and in print, provides an international forum for the publication of original articles describing basic laboratory, translational, and clinical investigations in hematology. Primary research articles will be published under the following scientific categories: Clinical Trials and Observations; Gene Therapy; Hematopoiesis and Stem Cells; Immunobiology and Immunotherapy scope; Myeloid Neoplasia; Lymphoid Neoplasia; Phagocytes, Granulocytes and Myelopoiesis; Platelets and Thrombopoiesis; Red Cells, Iron and Erythropoiesis; Thrombosis and Hemostasis; Transfusion Medicine; Transplantation; and Vascular Biology. Papers can be listed under more than one category as appropriate.
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