基于基因表达比的膀胱癌诊断试验。

Q2 Biochemistry, Genetics and Molecular Biology
Lingsheng Dong, Andrew J Bard, William G Richards, Matthew D Nitz, Dan Theodorescu, Raphael Bueno, Gavin J Gordon
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引用次数: 7

摘要

目的:膀胱癌是比较常见的,但早期发现技术,如膀胱镜检查和细胞学是有限的。我们开发了一种广泛适用的、平台无关的、临床相关的基于简单基因表达比的方法来诊断人类癌症。在这项研究中,我们试图确定这项技术是否可以应用于膀胱癌的诊断。实验设计:我们利用80个正常和肿瘤膀胱组织的表达谱数据建立了一个膀胱癌诊断模型,以确定在每种组织类型中具有互反平均表达水平的具有统计学意义的判别基因。所选基因的表达水平被用来计算单个基因对的表达比率,以便分配诊断。我们在另外两个已发表的微阵列数据集中检验了最佳模型,并在我们机构的13个冷冻良性膀胱尿路上皮样本和13个膀胱癌样本中使用了定量RT-PCR。结果:利用6个基因的5比测试被证明是100%准确的(26个样本中的26个)区分良性和恶性膀胱组织样本(P < 10(-6))。结论:我们为基因表达比在膀胱癌诊断中的应用提供了一个原则性的证明研究。这项技术可能最终被证明是一种有用的辅助细胞病理学筛查膀胱肿瘤尿液标本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A gene expression ratio-based diagnostic test for bladder cancer.

A gene expression ratio-based diagnostic test for bladder cancer.

Purpose: Bladder cancer is relatively common but early detection techniques such as cystoscopy and cytology are somewhat limited. We developed a broadly applicable, platform-independent and clinically relevant method based on simple ratios of gene expression to diagnose human cancers. In this study, we sought to determine whether this technique could be applied to the diagnosis of bladder cancer.

Experimental design: We developed a model for the diagnosis of bladder cancer using expression profiling data from 80 normal and tumor bladder tissues to identify statistically significant discriminating genes with reciprocal average expression levels in each tissue type. The expression levels of select genes were used to calculate individual gene pair expression ratios in order to assign diagnosis. The optimal model was examined in two additional published microarray data sets and using quantitative RT-PCR in a cohort of 13 frozen benign bladder urothelium samples and 13 bladder cancer samples from our institution.

Results: A five-ratio test utilizing six genes proved to be 100% accurate (26 of 26 samples) for distinguishing benign from malignant bladder tissue samples (P < 10(-6)).

Conclusions: : We have provided a proof of principle study for the use of gene expression ratios in the diagnosis of bladder cancer. This technique may ultimately prove to be a useful adjunct to cytopathology in screening urine specimens for bladder cancer.

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来源期刊
Advances and Applications in Bioinformatics and Chemistry
Advances and Applications in Bioinformatics and Chemistry Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (miscellaneous)
CiteScore
6.50
自引率
0.00%
发文量
7
审稿时长
16 weeks
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