Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast Cancer

Abnormal long non-coding RNAs (lncRNAs) expression has been documented to have oncogene or tumor suppressor functions in the development and progression of cancer, emerging as promising independent biomarkers for molecular cancer stratification and patients’ prognosis. Examining the relationship bet...

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Main Authors: Ana Carolina Pavanelli, Flavia Rotea Mangone, Luciana R. C. Barros, Juliana Machado-Rugolo, Vera L. Capelozzi, Maria A. Nagai
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Genes
Subjects:
Online Access:https://www.mdpi.com/2073-4425/12/7/996
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spelling doaj-df4c3eea9c174916bedb7bb05c5153c62021-07-23T13:41:44ZengMDPI AGGenes2073-44252021-06-011299699610.3390/genes12070996Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast CancerAna Carolina Pavanelli0Flavia Rotea Mangone1Luciana R. C. Barros2Juliana Machado-Rugolo3Vera L. Capelozzi4Maria A. Nagai5Discipline of Oncology, Department of Radiology and Oncology, Faculty of Medicine, University of São Paulo, São Paulo 01246-903, BrazilDiscipline of Oncology, Department of Radiology and Oncology, Faculty of Medicine, University of São Paulo, São Paulo 01246-903, BrazilDiscipline of Oncology, Department of Radiology and Oncology, Faculty of Medicine, University of São Paulo, São Paulo 01246-903, BrazilDepartment of Pathology, University of São Paulo Medical School (USP), São Paulo 01246-903, BrazilDepartment of Pathology, University of São Paulo Medical School (USP), São Paulo 01246-903, BrazilDiscipline of Oncology, Department of Radiology and Oncology, Faculty of Medicine, University of São Paulo, São Paulo 01246-903, BrazilAbnormal long non-coding RNAs (lncRNAs) expression has been documented to have oncogene or tumor suppressor functions in the development and progression of cancer, emerging as promising independent biomarkers for molecular cancer stratification and patients’ prognosis. Examining the relationship between lncRNAs and the survival rates in malignancies creates new scenarios for precision medicine and targeted therapy. Breast cancer (BRCA) is a heterogeneous malignancy. Despite advances in its molecular classification, there are still gaps to explain in its multifaceted presentations and a substantial lack of biomarkers that can better predict patients’ prognosis in response to different therapeutic strategies. Here, we performed a re-analysis of gene expression data generated using cDNA microarrays in a previous study of our group, aiming to identify differentially expressed lncRNAs (DELncRNAs) with a potential predictive value for response to treatment with taxanes in breast cancer patients. Results revealed 157 DELncRNAs (90 up- and 67 down-regulated). We validated these new biomarkers as having prognostic and predictive value for breast cancer using in silico analysis in public databases. Data from TCGA showed that compared to normal tissue, MIAT was up-regulated, while KCNQ1OT1, LOC100270804, and FLJ10038 were down-regulated in breast tumor tissues. KCNQ1OT1, LOC100270804, and FLJ10038 median levels were found to be significantly higher in the luminal subtype. The ROC plotter platform results showed that reduced expression of these three DElncRNAs was associated with breast cancer patients who did not respond to taxane treatment. Kaplan–Meier survival analysis revealed that a lower expression of the selected lncRNAs was significantly associated with worse relapse-free survival (RFS) in breast cancer patients. Further validation of the expression of these DELncRNAs might be helpful to better tailor breast cancer prognosis and treatment.https://www.mdpi.com/2073-4425/12/7/996breast cancerlncRNAsprognosisdocetaxelbiomarkers
collection DOAJ
language English
format Article
sources DOAJ
author Ana Carolina Pavanelli
Flavia Rotea Mangone
Luciana R. C. Barros
Juliana Machado-Rugolo
Vera L. Capelozzi
Maria A. Nagai
spellingShingle Ana Carolina Pavanelli
Flavia Rotea Mangone
Luciana R. C. Barros
Juliana Machado-Rugolo
Vera L. Capelozzi
Maria A. Nagai
Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast Cancer
Genes
breast cancer
lncRNAs
prognosis
docetaxel
biomarkers
author_facet Ana Carolina Pavanelli
Flavia Rotea Mangone
Luciana R. C. Barros
Juliana Machado-Rugolo
Vera L. Capelozzi
Maria A. Nagai
author_sort Ana Carolina Pavanelli
title Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast Cancer
title_short Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast Cancer
title_full Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast Cancer
title_fullStr Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast Cancer
title_full_unstemmed Abnormal Long Non-Coding RNAs Expression Patterns Have the Potential Ability for Predicting Survival and Treatment Response in Breast Cancer
title_sort abnormal long non-coding rnas expression patterns have the potential ability for predicting survival and treatment response in breast cancer
publisher MDPI AG
series Genes
issn 2073-4425
publishDate 2021-06-01
description Abnormal long non-coding RNAs (lncRNAs) expression has been documented to have oncogene or tumor suppressor functions in the development and progression of cancer, emerging as promising independent biomarkers for molecular cancer stratification and patients’ prognosis. Examining the relationship between lncRNAs and the survival rates in malignancies creates new scenarios for precision medicine and targeted therapy. Breast cancer (BRCA) is a heterogeneous malignancy. Despite advances in its molecular classification, there are still gaps to explain in its multifaceted presentations and a substantial lack of biomarkers that can better predict patients’ prognosis in response to different therapeutic strategies. Here, we performed a re-analysis of gene expression data generated using cDNA microarrays in a previous study of our group, aiming to identify differentially expressed lncRNAs (DELncRNAs) with a potential predictive value for response to treatment with taxanes in breast cancer patients. Results revealed 157 DELncRNAs (90 up- and 67 down-regulated). We validated these new biomarkers as having prognostic and predictive value for breast cancer using in silico analysis in public databases. Data from TCGA showed that compared to normal tissue, MIAT was up-regulated, while KCNQ1OT1, LOC100270804, and FLJ10038 were down-regulated in breast tumor tissues. KCNQ1OT1, LOC100270804, and FLJ10038 median levels were found to be significantly higher in the luminal subtype. The ROC plotter platform results showed that reduced expression of these three DElncRNAs was associated with breast cancer patients who did not respond to taxane treatment. Kaplan–Meier survival analysis revealed that a lower expression of the selected lncRNAs was significantly associated with worse relapse-free survival (RFS) in breast cancer patients. Further validation of the expression of these DELncRNAs might be helpful to better tailor breast cancer prognosis and treatment.
topic breast cancer
lncRNAs
prognosis
docetaxel
biomarkers
url https://www.mdpi.com/2073-4425/12/7/996
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