Cargando…

Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries

BACKGROUND: Surgical therapy of breast cancer and bone metastasis can effectively improve the prognosis of breast cancer. However, after the first operation, the relationship between preoperative indicators and outcomes in patients who underwent metastatic bone surgery remained to be studied. Purpos...

Descripción completa

Detalles Bibliográficos
Autores principales: Mou, Haochen, Wang, Zhan, Zhang, Wenkan, Li, Guoqi, Zhou, Hao, Yinwang, Eloy, Wang, Fangqian, Sun, Hangxiang, Xue, Yucheng, Wang, Zenan, Chen, Tao, Chai, Xupeng, Qu, Hao, Lin, Peng, Teng, Wangsiyuan, Li, Binghao, Ye, Zhaoming
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8484887/
https://www.ncbi.nlm.nih.gov/pubmed/34604031
http://dx.doi.org/10.3389/fonc.2021.693689
_version_ 1784577418688724992
author Mou, Haochen
Wang, Zhan
Zhang, Wenkan
Li, Guoqi
Zhou, Hao
Yinwang, Eloy
Wang, Fangqian
Sun, Hangxiang
Xue, Yucheng
Wang, Zenan
Chen, Tao
Chai, Xupeng
Qu, Hao
Lin, Peng
Teng, Wangsiyuan
Li, Binghao
Ye, Zhaoming
author_facet Mou, Haochen
Wang, Zhan
Zhang, Wenkan
Li, Guoqi
Zhou, Hao
Yinwang, Eloy
Wang, Fangqian
Sun, Hangxiang
Xue, Yucheng
Wang, Zenan
Chen, Tao
Chai, Xupeng
Qu, Hao
Lin, Peng
Teng, Wangsiyuan
Li, Binghao
Ye, Zhaoming
author_sort Mou, Haochen
collection PubMed
description BACKGROUND: Surgical therapy of breast cancer and bone metastasis can effectively improve the prognosis of breast cancer. However, after the first operation, the relationship between preoperative indicators and outcomes in patients who underwent metastatic bone surgery remained to be studied. Purpose 1. Recognize clinical and laboratory prognosis factors available to clinical doctors before the operation for bone metastatic breast cancer patients. 2. Develop a risk prediction model for 3-year postoperative survival in patients with breast cancer bone metastasis. METHODS: From 2014 to 2020, patients who suffered from breast cancer bone metastasis and received therapeutic procedures in our institution were included for analyses (n=145). For patients who underwent both breast cancer radical surgery and bone metastasis surgery, comprehensive datasets of the parameters of interest (clinical features, laboratory factors, and patient prognoses) were collected (n=69). We performed Multivariate Cox regression to identify factors that were associated with postoperative outcome. 3-year survival prediction model and nomograms were established by 100 bootstrapping. Its benefit was evaluated by calibration plot, C-index, and decision curve analysis. The Surveillance, Epidemiology, and End Results database was also used for external validation. RESULTS: Radiotherapy for primary cancer, pathological type of metastatic breast cancer, lymph node metastasis, elevated serum alkaline phosphatase, lactate dehydrogenase were associated with postoperative prognosis. Pathological types of metastatic breast cancer, multiple bone metastasis, organ metastases, and elevated serum lactate dehydrogenase were associated with 3-year survival. Then those significant variables and serum alkaline phosphatase counts were integrated to construct nomograms for 3-year survival. The C-statistic of the established predictive model was 0.83. The calibration plot presents a graphical representation of calibration. In the decision curve analysis, the benefits are higher than those of the extreme curve. The receiver operating characteristic of the external validation of the model was 0.82, indicating a favored fitting degree of the two models. CONCLUSION: Our study suggests that several clinical features and serological markers can predict the overall survival among the patients who are about to receive bone metastasis surgery after breast cancer surgery. The model can guide the preoperative evaluation and clinical decision-making for patients. Level of evidence Level III, prognostic study.
format Online
Article
Text
id pubmed-8484887
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-84848872021-10-02 Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries Mou, Haochen Wang, Zhan Zhang, Wenkan Li, Guoqi Zhou, Hao Yinwang, Eloy Wang, Fangqian Sun, Hangxiang Xue, Yucheng Wang, Zenan Chen, Tao Chai, Xupeng Qu, Hao Lin, Peng Teng, Wangsiyuan Li, Binghao Ye, Zhaoming Front Oncol Oncology BACKGROUND: Surgical therapy of breast cancer and bone metastasis can effectively improve the prognosis of breast cancer. However, after the first operation, the relationship between preoperative indicators and outcomes in patients who underwent metastatic bone surgery remained to be studied. Purpose 1. Recognize clinical and laboratory prognosis factors available to clinical doctors before the operation for bone metastatic breast cancer patients. 2. Develop a risk prediction model for 3-year postoperative survival in patients with breast cancer bone metastasis. METHODS: From 2014 to 2020, patients who suffered from breast cancer bone metastasis and received therapeutic procedures in our institution were included for analyses (n=145). For patients who underwent both breast cancer radical surgery and bone metastasis surgery, comprehensive datasets of the parameters of interest (clinical features, laboratory factors, and patient prognoses) were collected (n=69). We performed Multivariate Cox regression to identify factors that were associated with postoperative outcome. 3-year survival prediction model and nomograms were established by 100 bootstrapping. Its benefit was evaluated by calibration plot, C-index, and decision curve analysis. The Surveillance, Epidemiology, and End Results database was also used for external validation. RESULTS: Radiotherapy for primary cancer, pathological type of metastatic breast cancer, lymph node metastasis, elevated serum alkaline phosphatase, lactate dehydrogenase were associated with postoperative prognosis. Pathological types of metastatic breast cancer, multiple bone metastasis, organ metastases, and elevated serum lactate dehydrogenase were associated with 3-year survival. Then those significant variables and serum alkaline phosphatase counts were integrated to construct nomograms for 3-year survival. The C-statistic of the established predictive model was 0.83. The calibration plot presents a graphical representation of calibration. In the decision curve analysis, the benefits are higher than those of the extreme curve. The receiver operating characteristic of the external validation of the model was 0.82, indicating a favored fitting degree of the two models. CONCLUSION: Our study suggests that several clinical features and serological markers can predict the overall survival among the patients who are about to receive bone metastasis surgery after breast cancer surgery. The model can guide the preoperative evaluation and clinical decision-making for patients. Level of evidence Level III, prognostic study. Frontiers Media S.A. 2021-09-17 /pmc/articles/PMC8484887/ /pubmed/34604031 http://dx.doi.org/10.3389/fonc.2021.693689 Text en Copyright © 2021 Mou, Wang, Zhang, Li, Zhou, Yinwang, Wang, Sun, Xue, Wang, Chen, Chai, Qu, Lin, Teng, Li and Ye https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Mou, Haochen
Wang, Zhan
Zhang, Wenkan
Li, Guoqi
Zhou, Hao
Yinwang, Eloy
Wang, Fangqian
Sun, Hangxiang
Xue, Yucheng
Wang, Zenan
Chen, Tao
Chai, Xupeng
Qu, Hao
Lin, Peng
Teng, Wangsiyuan
Li, Binghao
Ye, Zhaoming
Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries
title Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries
title_full Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries
title_fullStr Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries
title_full_unstemmed Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries
title_short Clinical Features and Serological Markers Risk Model Predicts Overall Survival in Patients Undergoing Breast Cancer and Bone Metastasis Surgeries
title_sort clinical features and serological markers risk model predicts overall survival in patients undergoing breast cancer and bone metastasis surgeries
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8484887/
https://www.ncbi.nlm.nih.gov/pubmed/34604031
http://dx.doi.org/10.3389/fonc.2021.693689
work_keys_str_mv AT mouhaochen clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT wangzhan clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT zhangwenkan clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT liguoqi clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT zhouhao clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT yinwangeloy clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT wangfangqian clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT sunhangxiang clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT xueyucheng clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT wangzenan clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT chentao clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT chaixupeng clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT quhao clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT linpeng clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT tengwangsiyuan clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT libinghao clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries
AT yezhaoming clinicalfeaturesandserologicalmarkersriskmodelpredictsoverallsurvivalinpatientsundergoingbreastcancerandbonemetastasissurgeries