套细胞淋巴瘤
医学
免疫组织化学
细胞周期蛋白D1
生存分析
淋巴瘤
逆转录聚合酶链式反应
基因
癌症研究
聚合酶链反应
基因表达
病理
肿瘤科
内科学
生物
癌症
细胞周期
遗传学
作者
Elena Hartmann,Verónica Fernández,Vı́ctor Moreno,Joan Valls,Luís Hernández,Francesc Bosch,Pau Abrisqueta,Wolfgang Hiddemann,Martin Dreyling,Eva Hoster,Hans Konrad Müller‐Hermelink,German Ott,Andreas Rosenwald,Elı́as Campo
标识
DOI:10.1200/jco.2007.12.0410
摘要
Purpose Despite the common underlying translocation t(11;14) involving cyclin D1 that is present in nearly all cases of mantle-cell lymphoma (MCL), the clinical course of the disease is highly variable. The aim of the present study was to develop a quantitative gene expression–based model to predict survival in newly diagnosed patients with MCL that involves a minimum number of genes and is applicable to fresh-frozen and formalin-fixed, paraffin-embedded (FFPE) tumor samples. Patients and Methods The expression of 33 genes with potential prognostic and pathogenetic impact in MCL was analyzed using quantitative reverse-transcription polymerase chain reactions (qRT-PCR) in a low-density array format in frozen tumor samples from 73 patients with MCL. Multivariate Cox methods and stepwise algorithms were applied to build gene expression-based survival predictors. An optimized five-gene model was subsequently applied to FFPE tumor samples from 13 patients with MCL from the initial series and to 42 independent MCL samples. Results The optimized survival predictor was composed of the five genes RAN, MYC, TNFRSF10B, POLE2, and SLC29A2 and was validated for application in FFPE tissue samples. It allowed the survival prediction of patients with MCL with widely disparate clinical outcome and was superior to the immunohistochemical marker Ki-67, an established prognostic factor in MCL. Conclusion We here present a validated qRT-PCR–based test for survival prediction in patients with MCL that is applicable to fresh frozen as well as to FFPE tissue specimens. This test may prove useful to guide individualized treatment approaches for patients with MCL.
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