Shipp Margaret A, Ross Ken N, Tamayo Pablo, Weng Andrew P, Kutok Jeffery L, Aguiar Ricardo C T, Gaasenbeek Michelle, Angelo Michael, Reich Michael, Pinkus Geraldine S, Ray Tane S, Koval Margaret A, Last Kim W, Norton Andrew, Lister T Andrew, Mesirov Jill, Neuberg Donna S, Lander Eric S, Aster Jon C, Golub Todd R
Dana-Farber Cancer Institute, Harvard Medical School, Boston, Massachusetts, USA.
Nat Med. 2002 Jan;8(1):68-74. doi: 10.1038/nm0102-68.
Diffuse large B-cell lymphoma (DLBCL), the most common lymphoid malignancy in adults, is curable in less than 50% of patients. Prognostic models based on pre-treatment characteristics, such as the International Prognostic Index (IPI), are currently used to predict outcome in DLBCL. However, clinical outcome models identify neither the molecular basis of clinical heterogeneity, nor specific therapeutic targets. We analyzed the expression of 6,817 genes in diagnostic tumor specimens from DLBCL patients who received cyclophosphamide, adriamycin, vincristine and prednisone (CHOP)-based chemotherapy, and applied a supervised learning prediction method to identify cured versus fatal or refractory disease. The algorithm classified two categories of patients with very different five-year overall survival rates (70% versus 12%). The model also effectively delineated patients within specific IPI risk categories who were likely to be cured or to die of their disease. Genes implicated in DLBCL outcome included some that regulate responses to B-cell-receptor signaling, critical serine/threonine phosphorylation pathways and apoptosis. Our data indicate that supervised learning classification techniques can predict outcome in DLBCL and identify rational targets for intervention.
弥漫性大B细胞淋巴瘤(DLBCL)是成人中最常见的淋巴瘤,不到50%的患者可治愈。基于治疗前特征的预后模型,如国际预后指数(IPI),目前用于预测DLBCL的预后。然而,临床预后模型既不能确定临床异质性的分子基础,也不能确定特定的治疗靶点。我们分析了接受环磷酰胺、阿霉素、长春新碱和泼尼松(CHOP)化疗的DLBCL患者诊断性肿瘤标本中6817个基因的表达,并应用监督学习预测方法来识别治愈与致命或难治性疾病。该算法将两类五年总生存率差异很大的患者(70%对12%)进行了分类。该模型还有效地划分了特定IPI风险类别中可能治愈或死于疾病的患者。与DLBCL预后相关的基因包括一些调节对B细胞受体信号反应、关键丝氨酸/苏氨酸磷酸化途径和细胞凋亡的基因。我们的数据表明,监督学习分类技术可以预测DLBCL的预后,并确定合理的干预靶点。