Novel tumor sampling strategies to enable microarray gene expression signatures in breast cancer: a study to determine feasibility and reproducibility in the context of clinical care

被引:0
作者
Christopher L. Tebbit
Jun Zhai
Brian R. Untch
Matthew J. Ellis
Holly K. Dressman
Rex C. Bentley
Jay A. Baker
Paul K. Marcom
Joseph R. Nevins
Jeffrey R. Marks
John A. Olson
机构
[1] Duke University Medical Center,Department of Surgery
[2] Duke University,Institute of Genome Sciences and Policy
[3] Washington University School of Medicine,Department of Medicine
[4] Duke University Medical Center,Department of Pathology
[5] Duke University Medical Center,Department of Radiology
[6] Duke University School of Medicine,Department of Medicine
来源
Breast Cancer Research and Treatment | 2009年 / 118卷
关键词
Breast cancer; Tissue aquisition; Genomics; Genomic testing;
D O I
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中图分类号
学科分类号
摘要
Feasibility and reproducibility of microarray biomarkers in clinical settings are doubted because of reliance on fresh frozen tissue. We sought to develop and validate a paradigm of frozen tissue collection from early breast tumors to enable use of microarray in oncology practice. Frozen core needle biopsies (CNBx) were collected from 150 clinical stage I patients during image-guided diagnostic biopsy and/or surgery. Histology and tumor content from frozen cores were compared to diagnostic specimens. Twenty-eight patients had microarray analysis to examine accuracy and reproducibility of predictive gene signatures developed for estrogen receptor (ER) and HER2. One hundred twenty-seven (85%) of 150 patients had at least one frozen core containing cancer suitable for microarray analysis. Larger tumor size, ex vivo biopsy, and use of a new specimen device increased the likelihood of obtaining adequate specimens. Sufficient quality RNA was obtained from 90% of tumor cores. Microarray signatures predicting ER and HER2 expression were developed in training sets of up to 363 surgical samples and were applied to microarray data obtained from core samples collected in clinical settings. In these samples, prediction of ER and HER2 expression achieved a sensitivity/specificity of 94%/100%, and 82%/72%, respectively. Predictions were reproducible in 83–100% of paired samples. Frozen CNBx can be readily obtained from most breast cancers without interfering with pathologic evaluation in routine clinical settings. Collection of tumor tissue at diagnostic biopsy and/or at surgery from lumpectomy specimens using image guidance resulted in sufficient samples for array analysis from over 90% of patients. Sampling of breast cancer for microarray data is reproducible and feasible in clinical practice and can yield signatures predictive of multiple breast cancer phenotypes.
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页码:635 / 643
页数:8
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