Cargando…

Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention

Breast cancer screening has led to a dramatic increase in the detection of pre-invasive breast lesions. While mastectomy is almost guaranteed to treat the disease, more conservative approaches could be as effective if patients can be stratified based on risk of co-existing or recurrent invasive dise...

Descripción completa

Detalles Bibliográficos
Autores principales: Buckley, Niamh, Boyle, David, McArt, Darragh, Irwin, Gareth, Harkin, D. Paul, Lioe, Tong, McQuaid, Stephen, James, Jacqueline A., Maxwell, Perry, Hamilton, Peter, Mullan, Paul B., Salto-Tellez, Manuel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4791229/
https://www.ncbi.nlm.nih.gov/pubmed/26657114
_version_ 1782421049615319040
author Buckley, Niamh
Boyle, David
McArt, Darragh
Irwin, Gareth
Harkin, D. Paul
Lioe, Tong
McQuaid, Stephen
James, Jacqueline A.
Maxwell, Perry
Hamilton, Peter
Mullan, Paul B.
Salto-Tellez, Manuel
author_facet Buckley, Niamh
Boyle, David
McArt, Darragh
Irwin, Gareth
Harkin, D. Paul
Lioe, Tong
McQuaid, Stephen
James, Jacqueline A.
Maxwell, Perry
Hamilton, Peter
Mullan, Paul B.
Salto-Tellez, Manuel
author_sort Buckley, Niamh
collection PubMed
description Breast cancer screening has led to a dramatic increase in the detection of pre-invasive breast lesions. While mastectomy is almost guaranteed to treat the disease, more conservative approaches could be as effective if patients can be stratified based on risk of co-existing or recurrent invasive disease. Here we use a range of biomarkers to interrogate and classify purely non-invasive lesions (PNL) and those with co-existing invasive breast cancer (CEIN). Apart from Ductal Carcinoma in situ (DCIS), relative homogeneity is observed. DCIS contained a greater spread of molecular subtypes. Interestingly, high expression of p-mTOR was observed in all PNL with lower expression in DCIS and invasive carcinoma while the opposite expression pattern was observed for TOP2A. Comparing PNL with CEIN, we have identified p53 and Ki67 as predictors of CEIN with a combined PPV and NPV of 90.48% and 43.3% respectively. Furthermore, HER2 expression showed the best concordance between DCIS and its invasive counterpart. We propose that these biomarkers can be used to improve the management of patients with pre-invasive breast lesions following further validation and clinical trials. p53 and Ki67 could be used to stratify patients into low and high-risk groups for co-existing disease. Knowledge of expression of more actionable targets such as HER2 or TOP2A can be used to design chemoprevention or neo-adjuvant strategies. Increased knowledge of the molecular profile of pre-invasive lesions can only serve to enhance our understanding of the disease and, in the era of personalised medicine, bring us closer to improving breast cancer care.
format Online
Article
Text
id pubmed-4791229
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher Impact Journals LLC
record_format MEDLINE/PubMed
spelling pubmed-47912292016-03-28 Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention Buckley, Niamh Boyle, David McArt, Darragh Irwin, Gareth Harkin, D. Paul Lioe, Tong McQuaid, Stephen James, Jacqueline A. Maxwell, Perry Hamilton, Peter Mullan, Paul B. Salto-Tellez, Manuel Oncotarget Research Paper: Pathology Breast cancer screening has led to a dramatic increase in the detection of pre-invasive breast lesions. While mastectomy is almost guaranteed to treat the disease, more conservative approaches could be as effective if patients can be stratified based on risk of co-existing or recurrent invasive disease. Here we use a range of biomarkers to interrogate and classify purely non-invasive lesions (PNL) and those with co-existing invasive breast cancer (CEIN). Apart from Ductal Carcinoma in situ (DCIS), relative homogeneity is observed. DCIS contained a greater spread of molecular subtypes. Interestingly, high expression of p-mTOR was observed in all PNL with lower expression in DCIS and invasive carcinoma while the opposite expression pattern was observed for TOP2A. Comparing PNL with CEIN, we have identified p53 and Ki67 as predictors of CEIN with a combined PPV and NPV of 90.48% and 43.3% respectively. Furthermore, HER2 expression showed the best concordance between DCIS and its invasive counterpart. We propose that these biomarkers can be used to improve the management of patients with pre-invasive breast lesions following further validation and clinical trials. p53 and Ki67 could be used to stratify patients into low and high-risk groups for co-existing disease. Knowledge of expression of more actionable targets such as HER2 or TOP2A can be used to design chemoprevention or neo-adjuvant strategies. Increased knowledge of the molecular profile of pre-invasive lesions can only serve to enhance our understanding of the disease and, in the era of personalised medicine, bring us closer to improving breast cancer care. Impact Journals LLC 2015-12-09 /pmc/articles/PMC4791229/ /pubmed/26657114 Text en Copyright: © 2015 Buckley et al. http://creativecommons.org/licenses/by/2.5/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Paper: Pathology
Buckley, Niamh
Boyle, David
McArt, Darragh
Irwin, Gareth
Harkin, D. Paul
Lioe, Tong
McQuaid, Stephen
James, Jacqueline A.
Maxwell, Perry
Hamilton, Peter
Mullan, Paul B.
Salto-Tellez, Manuel
Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention
title Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention
title_full Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention
title_fullStr Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention
title_full_unstemmed Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention
title_short Molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention
title_sort molecular classification of non-invasive breast lesions for personalised therapy and chemoprevention
topic Research Paper: Pathology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4791229/
https://www.ncbi.nlm.nih.gov/pubmed/26657114
work_keys_str_mv AT buckleyniamh molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT boyledavid molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT mcartdarragh molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT irwingareth molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT harkindpaul molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT lioetong molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT mcquaidstephen molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT jamesjacquelinea molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT maxwellperry molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT hamiltonpeter molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT mullanpaulb molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention
AT saltotellezmanuel molecularclassificationofnoninvasivebreastlesionsforpersonalisedtherapyandchemoprevention