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Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer

BACKGROUND: Current predictive model is not developed by inflammation‐related genes to evaluate clinical outcome of breast cancer patients. METHODS: With mRNA expression profiling, we identified 3 mRNAs with significant expression between 15 normal samples and 669 breast cancer patients. Using 7 cel...

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Autores principales: Zhao, Shuangtao, Shen, Wenzhi, Du, Renle, Luo, Xiaohe, Yu, Jiangyong, Zhou, Wei, Dong, Xiaoli, Gao, Ruifang, Wang, Chaobin, Yang, Houpu, Wang, Shu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6382731/
https://www.ncbi.nlm.nih.gov/pubmed/30632703
http://dx.doi.org/10.1002/cam4.1962
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author Zhao, Shuangtao
Shen, Wenzhi
Du, Renle
Luo, Xiaohe
Yu, Jiangyong
Zhou, Wei
Dong, Xiaoli
Gao, Ruifang
Wang, Chaobin
Yang, Houpu
Wang, Shu
author_facet Zhao, Shuangtao
Shen, Wenzhi
Du, Renle
Luo, Xiaohe
Yu, Jiangyong
Zhou, Wei
Dong, Xiaoli
Gao, Ruifang
Wang, Chaobin
Yang, Houpu
Wang, Shu
author_sort Zhao, Shuangtao
collection PubMed
description BACKGROUND: Current predictive model is not developed by inflammation‐related genes to evaluate clinical outcome of breast cancer patients. METHODS: With mRNA expression profiling, we identified 3 mRNAs with significant expression between 15 normal samples and 669 breast cancer patients. Using 7 cell lines and 150 paraffin‐embedded specimens, we verified the expression pattern by bio‐experiments. Then, we constructed a three‐mRNA model by Cox regression method and approved its predictive accuracy in both training set (n = 1095) and 4 testing sets (n = 703). RESULTS: We developed a three‐mRNA (TBX21, TGIF2, and CYCS) model to stratify patients into high‐ and low‐risk subgroup with significantly different prognosis. In training set, 5‐year OS rate was 84.5% (78.8%‐90.5%) vs 73.1% (65.9%‐81.2%) for the low‐ and high‐risk group (HR = 1.573 (1.090‐2.271); P = 0.016). The predictive value was similar in four independent testing sets (HR>1.600; P < 0.05). This model could assess survival independently with better predictive power compared with single clinicopathological risk factors and any of the three mRNAs. Patients with both low‐risk values and any poor prognostic factors had more favorable survival from nonmetastatic status (HR = 1.740 (1.028‐2.945), P = 0.039). We established two nomograms for clinical application that integrated this model and another three significant risk factors to forecast survival rates precisely in patients with or without metastasis. CONCLUSIONS: This model is a dependable tool to predict the disease recurrence precisely and could improve the predictive accuracy of survival probability for breast cancer patients with or without metastasis.
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spelling pubmed-63827312019-03-01 Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer Zhao, Shuangtao Shen, Wenzhi Du, Renle Luo, Xiaohe Yu, Jiangyong Zhou, Wei Dong, Xiaoli Gao, Ruifang Wang, Chaobin Yang, Houpu Wang, Shu Cancer Med Clinical Cancer Research BACKGROUND: Current predictive model is not developed by inflammation‐related genes to evaluate clinical outcome of breast cancer patients. METHODS: With mRNA expression profiling, we identified 3 mRNAs with significant expression between 15 normal samples and 669 breast cancer patients. Using 7 cell lines and 150 paraffin‐embedded specimens, we verified the expression pattern by bio‐experiments. Then, we constructed a three‐mRNA model by Cox regression method and approved its predictive accuracy in both training set (n = 1095) and 4 testing sets (n = 703). RESULTS: We developed a three‐mRNA (TBX21, TGIF2, and CYCS) model to stratify patients into high‐ and low‐risk subgroup with significantly different prognosis. In training set, 5‐year OS rate was 84.5% (78.8%‐90.5%) vs 73.1% (65.9%‐81.2%) for the low‐ and high‐risk group (HR = 1.573 (1.090‐2.271); P = 0.016). The predictive value was similar in four independent testing sets (HR>1.600; P < 0.05). This model could assess survival independently with better predictive power compared with single clinicopathological risk factors and any of the three mRNAs. Patients with both low‐risk values and any poor prognostic factors had more favorable survival from nonmetastatic status (HR = 1.740 (1.028‐2.945), P = 0.039). We established two nomograms for clinical application that integrated this model and another three significant risk factors to forecast survival rates precisely in patients with or without metastasis. CONCLUSIONS: This model is a dependable tool to predict the disease recurrence precisely and could improve the predictive accuracy of survival probability for breast cancer patients with or without metastasis. John Wiley and Sons Inc. 2019-01-11 /pmc/articles/PMC6382731/ /pubmed/30632703 http://dx.doi.org/10.1002/cam4.1962 Text en © 2019 The Authors. Cancer Medicine published by John Wiley & Sons Ltd. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Clinical Cancer Research
Zhao, Shuangtao
Shen, Wenzhi
Du, Renle
Luo, Xiaohe
Yu, Jiangyong
Zhou, Wei
Dong, Xiaoli
Gao, Ruifang
Wang, Chaobin
Yang, Houpu
Wang, Shu
Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer
title Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer
title_full Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer
title_fullStr Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer
title_full_unstemmed Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer
title_short Three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer
title_sort three inflammation‐related genes could predict risk in prognosis and metastasis of patients with breast cancer
topic Clinical Cancer Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6382731/
https://www.ncbi.nlm.nih.gov/pubmed/30632703
http://dx.doi.org/10.1002/cam4.1962
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