Cargando…

A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery

Nearly 20% patients with stage II A colon cancer will develop recurrent disease post-operatively. The present study aims to develop a scoring system based on Artificial Neural Network (ANN) model for predicting 10-year survival outcome. The clinical and molecular data of 117 stage II A colon cancer...

Descripción completa

Detalles Bibliográficos
Autores principales: Peng, Jian-Hong, Fang, Yu-Jing, Li, Cai-Xia, Ou, Qing-Jian, Jiang, Wu, Lu, Shi-Xun, Lu, Zhen-Hai, Li, Pei-Xing, Yun, Jing-Ping, Zhang, Rong-Xin, Pan, Zhi-Zhong, Wan, De-Sen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5008413/
https://www.ncbi.nlm.nih.gov/pubmed/27008710
http://dx.doi.org/10.18632/oncotarget.8217
_version_ 1782451369449357312
author Peng, Jian-Hong
Fang, Yu-Jing
Li, Cai-Xia
Ou, Qing-Jian
Jiang, Wu
Lu, Shi-Xun
Lu, Zhen-Hai
Li, Pei-Xing
Yun, Jing-Ping
Zhang, Rong-Xin
Pan, Zhi-Zhong
Wan, De-Sen
author_facet Peng, Jian-Hong
Fang, Yu-Jing
Li, Cai-Xia
Ou, Qing-Jian
Jiang, Wu
Lu, Shi-Xun
Lu, Zhen-Hai
Li, Pei-Xing
Yun, Jing-Ping
Zhang, Rong-Xin
Pan, Zhi-Zhong
Wan, De-Sen
author_sort Peng, Jian-Hong
collection PubMed
description Nearly 20% patients with stage II A colon cancer will develop recurrent disease post-operatively. The present study aims to develop a scoring system based on Artificial Neural Network (ANN) model for predicting 10-year survival outcome. The clinical and molecular data of 117 stage II A colon cancer patients from Sun Yat-sen University Cancer Center were used for training set and test set; poor pathological grading (score 49), reduced expression of TGFBR2 (score 33), over-expression of TGF-β (score 45), MAPK (score 32), pin1 (score 100), β-catenin in tumor tissue (score 50) and reduced expression of TGF-β in normal mucosa (score 22) were selected as the prognostic risk predictors. According to the developed scoring system, the patients were divided into 3 subgroups, which were supposed with higher, moderate and lower risk levels. As a result, for the 3 subgroups, the 10-year overall survival (OS) rates were 16.7%, 62.9% and 100% (P < 0.001); and the 10-year disease free survival (DFS) rates were 16.7%, 61.8% and 98.8% (P < 0.001) respectively. It showed that this scoring system for stage II A colon cancer could help to predict long-term survival and screen out high-risk individuals for more vigorous treatment.
format Online
Article
Text
id pubmed-5008413
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher Impact Journals LLC
record_format MEDLINE/PubMed
spelling pubmed-50084132016-09-12 A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery Peng, Jian-Hong Fang, Yu-Jing Li, Cai-Xia Ou, Qing-Jian Jiang, Wu Lu, Shi-Xun Lu, Zhen-Hai Li, Pei-Xing Yun, Jing-Ping Zhang, Rong-Xin Pan, Zhi-Zhong Wan, De-Sen Oncotarget Clinical Research Paper Nearly 20% patients with stage II A colon cancer will develop recurrent disease post-operatively. The present study aims to develop a scoring system based on Artificial Neural Network (ANN) model for predicting 10-year survival outcome. The clinical and molecular data of 117 stage II A colon cancer patients from Sun Yat-sen University Cancer Center were used for training set and test set; poor pathological grading (score 49), reduced expression of TGFBR2 (score 33), over-expression of TGF-β (score 45), MAPK (score 32), pin1 (score 100), β-catenin in tumor tissue (score 50) and reduced expression of TGF-β in normal mucosa (score 22) were selected as the prognostic risk predictors. According to the developed scoring system, the patients were divided into 3 subgroups, which were supposed with higher, moderate and lower risk levels. As a result, for the 3 subgroups, the 10-year overall survival (OS) rates were 16.7%, 62.9% and 100% (P < 0.001); and the 10-year disease free survival (DFS) rates were 16.7%, 61.8% and 98.8% (P < 0.001) respectively. It showed that this scoring system for stage II A colon cancer could help to predict long-term survival and screen out high-risk individuals for more vigorous treatment. Impact Journals LLC 2016-03-20 /pmc/articles/PMC5008413/ /pubmed/27008710 http://dx.doi.org/10.18632/oncotarget.8217 Text en Copyright: © 2016 Peng 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 Clinical Research Paper
Peng, Jian-Hong
Fang, Yu-Jing
Li, Cai-Xia
Ou, Qing-Jian
Jiang, Wu
Lu, Shi-Xun
Lu, Zhen-Hai
Li, Pei-Xing
Yun, Jing-Ping
Zhang, Rong-Xin
Pan, Zhi-Zhong
Wan, De-Sen
A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery
title A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery
title_full A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery
title_fullStr A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery
title_full_unstemmed A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery
title_short A scoring system based on artificial neural network for predicting 10-year survival in stage II A colon cancer patients after radical surgery
title_sort scoring system based on artificial neural network for predicting 10-year survival in stage ii a colon cancer patients after radical surgery
topic Clinical Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5008413/
https://www.ncbi.nlm.nih.gov/pubmed/27008710
http://dx.doi.org/10.18632/oncotarget.8217
work_keys_str_mv AT pengjianhong ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT fangyujing ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT licaixia ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT ouqingjian ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT jiangwu ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT lushixun ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT luzhenhai ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT lipeixing ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT yunjingping ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT zhangrongxin ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT panzhizhong ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT wandesen ascoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT pengjianhong scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT fangyujing scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT licaixia scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT ouqingjian scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT jiangwu scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT lushixun scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT luzhenhai scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT lipeixing scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT yunjingping scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT zhangrongxin scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT panzhizhong scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery
AT wandesen scoringsystembasedonartificialneuralnetworkforpredicting10yearsurvivalinstageiiacoloncancerpatientsafterradicalsurgery