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Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients

The notion of personalized medicine demands proper prognostic biomarkers to guide the optimal therapy for an invasive breast cancer patient. However, various risk prediction models based on conventional clinicopathological factors and emergent molecular assays have been frequently limited by either...

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Autores principales: Xi, Gangqin, Guo, Wenhui, Kang, Deyong, Ma, Jianli, Fu, Fangmeng, Qiu, Lida, Zheng, Liqin, He, Jiajia, Fang, Na, Chen, Jianhua, Li, Jingtong, Zhuo, Shuangmu, Liao, Xiaoxia, Tu, Haohua, Li, Lianhuang, Zhang, Qingyuan, Wang, Chuan, Boppart, Stephen A., Chen, Jianxin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ivyspring International Publisher 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7847696/
https://www.ncbi.nlm.nih.gov/pubmed/33537084
http://dx.doi.org/10.7150/thno.55921
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author Xi, Gangqin
Guo, Wenhui
Kang, Deyong
Ma, Jianli
Fu, Fangmeng
Qiu, Lida
Zheng, Liqin
He, Jiajia
Fang, Na
Chen, Jianhua
Li, Jingtong
Zhuo, Shuangmu
Liao, Xiaoxia
Tu, Haohua
Li, Lianhuang
Zhang, Qingyuan
Wang, Chuan
Boppart, Stephen A.
Chen, Jianxin
author_facet Xi, Gangqin
Guo, Wenhui
Kang, Deyong
Ma, Jianli
Fu, Fangmeng
Qiu, Lida
Zheng, Liqin
He, Jiajia
Fang, Na
Chen, Jianhua
Li, Jingtong
Zhuo, Shuangmu
Liao, Xiaoxia
Tu, Haohua
Li, Lianhuang
Zhang, Qingyuan
Wang, Chuan
Boppart, Stephen A.
Chen, Jianxin
author_sort Xi, Gangqin
collection PubMed
description The notion of personalized medicine demands proper prognostic biomarkers to guide the optimal therapy for an invasive breast cancer patient. However, various risk prediction models based on conventional clinicopathological factors and emergent molecular assays have been frequently limited by either a low strength of prognosis or restricted applicability to specific types of patients. Therefore, there is a critical need to develop a strong and general prognosticator. Methods: We observed five large-scale tumor-associated collagen signatures (TACS4-8) obtained by multiphoton microscopy at the invasion front of the breast primary tumor, which contrasted with the three tumor-associated collagen signatures (TACS1-3) discovered by Keely and coworkers at a smaller scale. Highly concordant TACS1-8 classifications were obtained by three independent observers. Using the ridge regression analysis, we obtained a TACS-score for each patient based on the combined TACS1-8 and established a risk prediction model based on the TACS-score. In a blind fashion, consistent retrospective prognosis was obtained from 995 breast cancer patients in both a training cohort (n= 431) and an internal validation cohort (n = 300) collected from one clinical center, and in an external validation cohort (n = 264) collected from a different clinical center. Results: TACS1-8 model alone competed favorably with all reported models in predicting disease-free survival (AUC: 0.838, [0.800-0.872]; 0.827, [0.779-0.868]; 0.807, [0.754-0.853] in the three cohorts) and stratifying low- and high-risk patients (HR 7.032, [4.869-10.158]; 6.846, [4.370-10.726], 4.423, [2.917-6.708]). The combination of these factors with the TACS-score into a nomogram model further improved the prognosis (AUC: 0.865, [0.829-0.896]; 0.861, [0.816-0.898]; 0.854, [0.805-0.894]; HR 7.882, [5.487-11.323]; 9.176, [5.683-14.816], and 5.548, [3.705-8.307]). The nomogram identified 72 of 357 (~20%) patients with unsuccessful 5-year disease-free survival that might have been undertreated postoperatively. Conclusions: The risk prediction model based on TACS1-8 considerably outperforms the contextual clinical model and may thus convince pathologists to pursue a TACS-based breast cancer prognosis. Our methodology identifies a significant portion of patients susceptible to undertreatment (high-risk patients), in contrast to the multigene assays that often strive to mitigate overtreatment. The compatibility of our methodology with standard histology using traditional (non-tissue-microarray) formalin-fixed paraffin-embedded (FFPE) tissue sections could simplify subsequent clinical translation.
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spelling pubmed-78476962021-02-02 Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients Xi, Gangqin Guo, Wenhui Kang, Deyong Ma, Jianli Fu, Fangmeng Qiu, Lida Zheng, Liqin He, Jiajia Fang, Na Chen, Jianhua Li, Jingtong Zhuo, Shuangmu Liao, Xiaoxia Tu, Haohua Li, Lianhuang Zhang, Qingyuan Wang, Chuan Boppart, Stephen A. Chen, Jianxin Theranostics Research Paper The notion of personalized medicine demands proper prognostic biomarkers to guide the optimal therapy for an invasive breast cancer patient. However, various risk prediction models based on conventional clinicopathological factors and emergent molecular assays have been frequently limited by either a low strength of prognosis or restricted applicability to specific types of patients. Therefore, there is a critical need to develop a strong and general prognosticator. Methods: We observed five large-scale tumor-associated collagen signatures (TACS4-8) obtained by multiphoton microscopy at the invasion front of the breast primary tumor, which contrasted with the three tumor-associated collagen signatures (TACS1-3) discovered by Keely and coworkers at a smaller scale. Highly concordant TACS1-8 classifications were obtained by three independent observers. Using the ridge regression analysis, we obtained a TACS-score for each patient based on the combined TACS1-8 and established a risk prediction model based on the TACS-score. In a blind fashion, consistent retrospective prognosis was obtained from 995 breast cancer patients in both a training cohort (n= 431) and an internal validation cohort (n = 300) collected from one clinical center, and in an external validation cohort (n = 264) collected from a different clinical center. Results: TACS1-8 model alone competed favorably with all reported models in predicting disease-free survival (AUC: 0.838, [0.800-0.872]; 0.827, [0.779-0.868]; 0.807, [0.754-0.853] in the three cohorts) and stratifying low- and high-risk patients (HR 7.032, [4.869-10.158]; 6.846, [4.370-10.726], 4.423, [2.917-6.708]). The combination of these factors with the TACS-score into a nomogram model further improved the prognosis (AUC: 0.865, [0.829-0.896]; 0.861, [0.816-0.898]; 0.854, [0.805-0.894]; HR 7.882, [5.487-11.323]; 9.176, [5.683-14.816], and 5.548, [3.705-8.307]). The nomogram identified 72 of 357 (~20%) patients with unsuccessful 5-year disease-free survival that might have been undertreated postoperatively. Conclusions: The risk prediction model based on TACS1-8 considerably outperforms the contextual clinical model and may thus convince pathologists to pursue a TACS-based breast cancer prognosis. Our methodology identifies a significant portion of patients susceptible to undertreatment (high-risk patients), in contrast to the multigene assays that often strive to mitigate overtreatment. The compatibility of our methodology with standard histology using traditional (non-tissue-microarray) formalin-fixed paraffin-embedded (FFPE) tissue sections could simplify subsequent clinical translation. Ivyspring International Publisher 2021-01-01 /pmc/articles/PMC7847696/ /pubmed/33537084 http://dx.doi.org/10.7150/thno.55921 Text en © The author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/). See http://ivyspring.com/terms for full terms and conditions.
spellingShingle Research Paper
Xi, Gangqin
Guo, Wenhui
Kang, Deyong
Ma, Jianli
Fu, Fangmeng
Qiu, Lida
Zheng, Liqin
He, Jiajia
Fang, Na
Chen, Jianhua
Li, Jingtong
Zhuo, Shuangmu
Liao, Xiaoxia
Tu, Haohua
Li, Lianhuang
Zhang, Qingyuan
Wang, Chuan
Boppart, Stephen A.
Chen, Jianxin
Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients
title Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients
title_full Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients
title_fullStr Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients
title_full_unstemmed Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients
title_short Large-scale tumor-associated collagen signatures identify high-risk breast cancer patients
title_sort large-scale tumor-associated collagen signatures identify high-risk breast cancer patients
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7847696/
https://www.ncbi.nlm.nih.gov/pubmed/33537084
http://dx.doi.org/10.7150/thno.55921
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