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在高通量 RNA 测序时代使用基于微阵列的乳腺癌亚型分类方法。

Using microarray-based subtyping methods for breast cancer in the era of high-throughput RNA sequencing.

机构信息

Department of Bio and Health Informatics, Technical University of Denmark, Kemitorvet, Kongens Lyngby, Denmark.

Center for Genomic Medicine, Rigshospitalet - Copenhagen University Hospital, Denmark.

出版信息

Mol Oncol. 2018 Dec;12(12):2136-2146. doi: 10.1002/1878-0261.12389. Epub 2018 Oct 29.

Abstract

Breast cancer is a highly heterogeneous disease that can be classified into multiple subtypes based on the tumor transcriptome. Most of the subtyping schemes used in clinics today are derived from analyses of microarray data from thousands of different tumors together with clinical data for the patients from which the tumors were isolated. However, RNA sequencing (RNA-Seq) is gradually replacing microarrays as the preferred transcriptomics platform, and although transcript abundances measured by the two different technologies are largely compatible, subtyping methods developed for probe-based microarray data are incompatible with RNA-Seq as input data. Here, we present an RNA-Seq data processing pipeline, which relies on the mapping of sequencing reads to the probe set target sequences instead of the human reference genome, thereby enabling probe-based subtyping of breast cancer tumor tissue using sequencing-based transcriptomics. By analyzing 66 breast cancer tumors for which gene expression was measured using both microarrays and RNA-Seq, we show that RNA-Seq data can be directly compared to microarray data using our pipeline. Additionally, we demonstrate that the established subtyping method CITBCMST (Guedj et al., ), which relies on a 375 probe set-signature to classify samples into the six subtypes basL, lumA, lumB, lumC, mApo, and normL, can be applied without further modifications. This pipeline enables a seamless transition to sequencing-based transcriptomics for future clinical purposes.

摘要

乳腺癌是一种高度异质性的疾病,可以根据肿瘤转录组分为多个亚型。目前临床上使用的大多数亚型分类方案都是基于对数千个不同肿瘤的微阵列数据以及从这些肿瘤中分离出的患者的临床数据进行分析得出的。然而,RNA 测序(RNA-Seq)正在逐渐取代微阵列,成为首选的转录组学平台,尽管两种不同技术测量的转录丰度基本一致,但为基于探针的微阵列数据开发的亚型分类方法与 RNA-Seq 作为输入数据不兼容。在这里,我们提出了一个 RNA-Seq 数据处理管道,该管道依赖于将测序读取映射到探针集目标序列,而不是人类参考基因组,从而能够使用基于测序的转录组学对乳腺癌肿瘤组织进行基于探针的亚型分类。通过分析 66 个使用微阵列和 RNA-Seq 测量基因表达的乳腺癌肿瘤,我们表明可以使用我们的管道直接将 RNA-Seq 数据与微阵列数据进行比较。此外,我们还证明了依赖于 375 个探针集特征来将样本分类为 6 种亚型 basL、lumA、lumB、lumC、mApo 和 normL 的已建立的亚型分类方法 CITBCMST(Guedj 等人,)可以在无需进一步修改的情况下应用。该管道为未来的临床目的实现了向基于测序的转录组学的无缝过渡。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1821/6275246/20750fa163f2/MOL2-12-2136-g001.jpg

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