Title of article
Application of Artificial Neural Network in Predicting the Survival Rate of Gastric Cancer Patients
Author/Authors
Biglarian, A Dept. of Biostatistics - University of Social Welfare and Rehabilitation Sciences (USWRS), Tehran , Hajizadeh, E Dept. of Biostatistics - Faculty of Medical Science - Tarbiat Modares University, Tehran , Kazemnejad, A Dept. of Biostatistics - Faculty of Medical Science - Tarbiat Modares University, Tehran , Zali, MR Research Center for Gastroenterology and Liver Disease - Shahid Beheshti University - M.C., Tehran
Pages
7
From page
80
To page
86
Abstract
Background: The aim of this study was to predict the survival rate of Iranian gastric cancer patients using the Cox
proportional hazard and artificial neural network models as well as comparing the ability of these approaches in
predicting the survival of these patients.
Methods: In this historical cohort study, the data gathered from 436 registered gastric cancer patients who have had
surgery between 2002 and 2007 at the Taleghani Hospital (a referral center for gastrointestinal cancers), Tehran, Iran, to
predict the survival time using Cox proportional hazard and artificial neural network techniques.
Results: The estimated one-year, two-year, three-year, four-year and five-year survival rates of the patients were 77.9%,
53.1%, 40.8%, 32.0%, and 17.4%, respectively. The Cox regression analysis revealed that the age at diagnosis, high-risk
behaviors, extent of wall penetration, distant metastasis and tumor stage were significantly associated with the survival
rate of the patients. The true prediction of neural network was 83.1%, and for Cox regression model, 75.0%.
Conclusion: The present study shows that neural network model is a more powerful statistical tool in predicting the
survival rate of the gastric cancer patients compared to Cox proportional hazard regression model. Therefore, this model
recommended for the predicting the survival rate of these patients.
Keywords
Gastric cancer , Survival analysis , Cox regression , Artifitial neural network
Journal title
Astroparticle Physics
Serial Year
2011
Record number
2440514
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