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首页> 外文期刊>Neuro-Oncology >Xenograft-based, platform-independent gene signatures to predict response to alkylating chemotherapy, radiation, and combination therapy for glioblastoma
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Xenograft-based, platform-independent gene signatures to predict response to alkylating chemotherapy, radiation, and combination therapy for glioblastoma

机译:基于异种移植,平台独立的基因签名,预测对胶质母细胞瘤的烷基化化疗,放疗和联合治疗的反应

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Background. Predictive molecular biomarkers to select optimal treatment for patients with glioblastoma and other cancers are lacking. New strategies are needed when large randomized trials with correlative molecular data are not feasible.Methods. Gene signatures (GS) were developed from 31 orthotopic glioblastoma patient-derived xenografts (PDXs), treated with standard therapies, to predict benefit from radiotherapy (RT-GS), temozolomide (Chemo-GS), or the combination (ChemoRT-GS). Independent validation was performed in a heterogeneously treated clinical cohort of 502 glioblastoma patients with overall survival as the primary endpoint. Multivariate Cox analysis was used to adjust for confounding variables and evaluate interactions between signatures and treatment.Results. PDX models recapitulated the clinical heterogeneity of glioblastoma patients. RT-GS, Chemo-GS, and ChemoRT-GS were correlated with benefit from treatment in the PDX models. In independent clinical validation, higher RT-GS scores were associated with increased survival only in patients receiving RT (P = 0.0031, hazard ratio [HR] = 0.78 [0.66-0.92]), higher Chemo-GS scores were associated with increased survival only in patients receiving chemotherapy (P < 0.0001, HR = 0.66 [0.55-0.8]), and higher ChemoRT-GS scores were associated with increased survival only in patients receiving ChemoRT (P = 0.0001, HR = 0.54 [0.4-0.74]). RT-GS and ChemoRT-GS had significant interactions with treatment on multivariate analysis (P = 0.0009 and 0.02, respectively), indicating that they are bona fide predictive biomarkers.Conclusions. Using a novel PDX-driven methodology, we developed and validated 3 platform-independent molecular signatures that predict benefit from standard of care therapies for glioblastoma. These signatures may be useful to personalize glioblastoma treatment in the clinic and this approach may be a generalizable method to identify predictive biomarkers without resource-intensive randomized trials.
机译:背景。缺乏针对胶质母细胞瘤和其他癌症患者选择最佳治疗方法的预测性分子生物标记。当大型的具有相关分子数据的随机试验不可行时,需要新的策略。从31种原位胶质母细胞瘤患者异种移植物(PDXs)中开发出基因标记(GS),并对其进行了标准疗法的治疗,以预测放射疗法(RT-GS),替莫唑胺(Chemo-GS)或联合使用(ChemoRT-GS)的益处。在以总生存期为主要终点的502例胶质母细胞瘤患者的异类治疗临床队列中进行了独立验证。多变量Cox分析用于调整混杂变量并评估特征与治疗之间的相互作用。 PDX模型概括了胶质母细胞瘤患者的临床异质性。在PDX模型中,RT-GS,Chemo-GS和ChemoRT-GS与治疗获益相关。在独立的临床验证中,较高的RT-GS评分仅与接受RT的患者存活率相关(P = 0.0031,危险比[HR] = 0.78 [0.66-0.92]),较高的Chemo-GS评分仅与生存率相关在接受化疗的患者中(P <0.0001,HR = 0.66 [0.55-0.8]),仅在接受ChemoRT的患者中,较高的ChemoRT-GS评分与存活率增加相关(P = 0.0001,HR = 0.54 [0.4-0.74])。在多变量分析中,RT-GS和ChemoRT-GS与治疗之间存在显着相互作用(分别为P = 0.0009和0.02),表明它们是真正的预测性生物标志物。使用新颖的PDX驱动方法,我们开发并验证了3个独立于平台的分子标记,这些标记可预测胶质母细胞瘤护理标准治疗的益处。这些签名可能有助于个性化胶质母细胞瘤的临床治疗,这种方法可能是无需资源密集型随机试验即可确定预测性生物标志物的通用方法。

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