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688P Gene Expression Profiling (GEP) Signatures Associated with Markers of Sensitivity to Immune and Angiogenic Therapy in Clear-Cell Renal Cell Carcinoma (ccrcc) with Sarcomatoid/rhabdoid Features

Annals of Oncology(2021)SCI 1区

Tulane Univ | UCCI Univ Cincinnati Canc Inst | Caris Life Sci | Univ Minnesota | Levine Canc Inst | Univ Calif San Diego | Univ Texas Southwestern Med Ctr Dallas | Montefiore Einstein Ctr Canc Care | Hoag Canc Ctr | Emory Univ | Fox Chase Canc Ctr | Georgetown Univ | Duke Univ | UCSF | Karmanos Canc Inst

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Abstract
Gene expression profiling studies have identified angiogenic and immune sig. with potential predictive value in patients (pts) with advanced ccRCC. We aimed to update the findings of a large multi-institutional genomics database (Barata, ASCO-GU 21), with a focus on tumors with sarcomatoid and rhabdoid features.
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要点】:本文更新了多机构基因组数据库中关于具有肉瘤样/横纹肌样特征的透明细胞肾细胞癌(ccRCC)患者中与免疫和血管生成治疗敏感性相关的688P基因表达谱(GEP)标记。

方法】:通过基因表达谱分析识别与angiogenic和immune信号相关的标记,这些标记可能对预测患者对治疗的敏感性有价值。

实验】:研究利用了一个大型的多机构基因组数据库(Barata, ASCO-GU 21),专注于具有肉瘤样和横纹肌样特征的肿瘤,但具体实验方法和数据集名称未在摘要中提及。