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A framework to select clinically relevant cancer cell lines for investigation by establishing their molecular similarity with primary human cancers.

机译:通过建立与原发性人类癌症的分子相似性来选择临床相关癌细胞系进行研究的框架。

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Experimental work on human cancer cell lines often does not translate to the clinic. We posit that this is because some cells undergo changes in vitro that no longer make them representative of human tumors. Here, we describe a novel alignment method named Spearman's rank correlation classification method (SRCCM) that measures similarity between cancer cell lines and human tumors via gene expression profiles, for the purpose of selecting lines that are biologically relevant. To show utility, we used SRCCM to assess similarity of 36 bladder cancer lines with 10 epithelial human tumor types (N = 1,630 samples) and with bladder tumors of different stages and grades (N = 144 samples). Although 34 of 36 lines aligned to bladder tumors rather than other histologies, only 16 of 28 had SRCCM assigned grades identical to that of their original source tumors. To evaluate the clinical relevance of this approach, we show that gene expression profiles of aligned cell lines stratify survival in an independent cohort of 87 bladder patients (HR = 3.41, log-rank P = 0.0077) whereas unaligned cell lines using original tumor grades did not. We repeated this process on 22 colorectal cell lines and found that gene expression profiles of 17 lines aligning to colorectal tumors and selected based on their similarity with 55 human tumors stratified survival in an independent cohort of 177 colorectal cancer patients (HR = 2.35, log-rank P = 0.0019). By selecting cell lines that reflect human tumors, our technique promises to improve the clinical translation of laboratory investigations in cancer.
机译:关于人类癌细胞系的实验工作通常不会转化为临床。我们认为这是因为某些细胞在体外发生变化,不再使其代表人类肿瘤。在这里,我们描述了一种新颖的比对方法,称为Spearman秩相关分类法(SRCCM),该方法通过基因表达谱测量癌细胞系和人类肿瘤之间的相似性,以选择生物学相关的系。为了显示实用性,我们使用SRCCM评估了36种膀胱癌系与10种上皮人类肿瘤类型(N = 1,630个样本)以及不同阶段和等级(N = 144个样本)的膀胱癌的相似性。尽管36株中的34株与膀胱肿瘤而不是其他组织学对齐,但28株中只有16株的SRCCM等级与原始肿瘤一致。为了评估这种方法的临床相关性,我们显示对齐的细胞系的基因表达谱将87例膀胱癌患者的独立队列中的生存分层(HR = 3.41,对数秩P = 0.0077),而使用原始肿瘤等级的未对齐细胞系确实不。我们在22个结直肠细胞系上重复了此过程,发现与结直肠肿瘤对齐并根据其与55例人类肿瘤的相似性选择的17个系的基因表达谱将177个结直肠癌患者的独立队列中的生存分层(HR = 2.35,log-等级P = 0.0019)。通过选择反映人类肿瘤的细胞系,我们的技术有望改善癌症实验室检查的临床翻译。

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