...
首页> 外文期刊>Clinical Chemistry: Journal of the American Association for Clinical Chemists >Agreement in Breast Cancer Classification between Microarray and Quantitative Reverse Transcription PCR from Fresh-Frozen and Formalin-Fixed, Paraffin-Embedded Tissues
【24h】

Agreement in Breast Cancer Classification between Microarray and Quantitative Reverse Transcription PCR from Fresh-Frozen and Formalin-Fixed, Paraffin-Embedded Tissues

机译:冷冻和福尔马林固定,石蜡包埋组织的微阵列和定量逆转录PCR之间的乳腺癌分类协议

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Background: Microarray studies have identified different molecular subtypes of breast cancer with prognostic significance. To transition these classifications into the clinical laboratory, we have developed a real-time quantitative reverse transcription (qRT)-PCR assay to diagnose the biological subtypes of breast cancer from fresh-frozen (FF) and formalin-fixed, paraffin-embedded (FFPE) tissues.Methods: We used microarray data from 124 breast samples as a training set for classifying tumors into 4 previously defined molecular subtypes: Luminal, HER2+/ER?, basal-like, and normal-like. We used the training set data in 2 different centroid-based algorithms to predict sample class on 35 breast tumors (test set) procured as FF and FFPE tissues (70 samples). We classified samples on the basis of large and minimized gene sets. We used the minimized gene set in a real-time qRT-PCR assay to predict sample subtype from the FF and FFPE tissues. We evaluated primer set performance between procurement methods by use of several measures of agreement.Results: The centroid-based algorithms were in complete agreement in classification from FFPE tissues by use of qRT-PCR and the minimized “intrinsic” gene set (40 classifiers). There was 94% (33 of 35) concordance between the diagnostic algorithms when comparing subtype classification from FF tissue by use of microarray (large and minimized gene set) and qRT-PCR data. We found that the ratio of the diagonal SD to the dynamic range was the best method for assessing agreement on a gene-by-gene basis.Conclusions: Centroid-based algorithms are robust classifiers for breast cancer subtype assignment across platforms and procurement conditions.
机译:背景:微阵列研究已鉴定出具有预后意义的乳腺癌的不同分子亚型。为了将这些分类转移到临床实验室,我们开发了一种实时定量逆转录(qRT)-PCR检测试剂盒,以诊断新鲜冷冻(FF)和福尔马林固定,石蜡包埋(FFPE)的乳腺癌的生物学亚型方法:我们使用来自124个乳腺样品的微阵列数据作为训练集,将肿瘤分为4种先前定义的分子亚型:Luminal,HER2 + /ERα,基底样和正常样。我们在2种不同的基于质心的算法中使用了训练集数据,以FF和FFPE组织(70个样本)采购的35个乳腺肿瘤(测试集)预测了样本类别。我们根据大型和最小化的基因集对样本进行分类。我们在实时qRT-PCR分析中使用最小化的基因集来预测FF和FFPE组织的样品亚型。我们通过几种协议措施评估了采购方法之间的引物组性能。结果:基于质心的算法通过使用qRT-PCR和最小化的“内在”基因组(40个分类器)对FFPE组织进行分类完全一致。当通过使用微阵列(大型基因组和最小化基因组)和FFRT-PCR数据比较FF组织的亚型分类时,诊断算法之间的一致性为94%(35个中的33个)。我们发现对角线SD与动态范围的比率是基于基因逐个评估一致性的最佳方法。结论:基于质心的算法是跨平台和采购条件分配乳腺癌亚型的可靠分类器。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号