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Published in: BMC Cancer 1/2019

Open Access 01-12-2019 | Breast Cancer | Research article

Efficacy of an RNA-based multigene assay with core needle biopsy samples for risk evaluation in hormone-positive early breast cancer

Authors: Jeeyeon Lee, Eun Hye Lee, Ho Yong Park, Wan Wook Kim, Ryu Kyung Lee, Yee Soo Chae, Soo Jung Lee, Jee-Eun Kim, Byeong-il Kang, Jee Young Park, Ji-Young Park, Jin Hyang Jung

Published in: BMC Cancer | Issue 1/2019

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Abstract

Background

Gene expression profiling provides key information for prognosis of breast cancer to establish treatment strategy. However, the genetic assessment should be available before induction of treatment to be useful for clinical practice. To evaluate the reliability of using needle biopsy samples for gene assays, we compared gene-expression profiling results between core needle biopsy (CNB) samples and surgical specimens in breast cancer.

Methods

Thirty-one paired, formalin-fixed, paraffin-embedded CNB and surgical specimen samples were selected from patients with hormone receptor-positive breast cancer. Total RNA was extracted from the samples and the risk classifications based on GenesWell BCT scores were compared.

Results

The BCT scores correlated between CNB samples and surgical specimens of hormone receptor-positive breast cancer (Pearson r = 0.66). The overall concordance rate of risk classification (high/low risk) was 83.9%. However, when the breast cancer does not contain intratumoral microcalcification, the concordance rate increased as 92.0%. And, when the breast cancer formed a solitary nodule (non-multifocal), the concordance rate increased up to 95.8%.

Conclusion

Risk classification using the GenesWell BCT multigene kit with CNB samples could be considered reliable, when the breast cancer is a solitary nodule without intratumoral microcalcification. Such genetic profiling results should be helpful for establishing a treatment plan for hormone receptor-positive breast cancer before treatment induction.
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Metadata
Title
Efficacy of an RNA-based multigene assay with core needle biopsy samples for risk evaluation in hormone-positive early breast cancer
Authors
Jeeyeon Lee
Eun Hye Lee
Ho Yong Park
Wan Wook Kim
Ryu Kyung Lee
Yee Soo Chae
Soo Jung Lee
Jee-Eun Kim
Byeong-il Kang
Jee Young Park
Ji-Young Park
Jin Hyang Jung
Publication date
01-12-2019
Publisher
BioMed Central
Published in
BMC Cancer / Issue 1/2019
Electronic ISSN: 1471-2407
DOI
https://doi.org/10.1186/s12885-019-5608-2

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