Comparison of artificial neural network and Cox regression models in survival prediction of gastric cancer patients

AuthorAkbar Biglarianen
AuthorEbrahim HajiZadehen
AuthorAnoshirvan Kazemnejaden
OrcidEbrahim HajiZadeh [0000-0001-7863-4837]en
OrcidAnoshirvan Kazemnejad [0000-0002-3162-1526]en
Issued Date2010-06-30en
AbstractIntroduction: Cox regression model is one of the statistical methods in survival analysis. Proportionality of hazard rate is an assumption of this model. In the recent decades, artificial neural network (ANN) model has increasingly used in survival prediction. This study aimed to predict the survival probability of Gastric cancer patients using Cox regression and ANN models. Materials and Methods: In this historical-cohort study, information of total of 436 gastric cancer patients with adenocarcinomas pathology who underwent surgery at the Taleghani hospital of Tehran between 2002 and 2007 were included. Data were divided to training and testing (or validation) groups, randomly. The Cox regression model (semi-parametric model) and a three layer ANN model were used for analyzing of database. Furthermore, the area under receiver operating characteristic curve (AUROC) and classification accuracy were used to compare these models. Results: Prediction accuracy of ANN and Cox regression models were 81.51% and 72.60%, respectively. In addition, AUROC of ANN and Cox regression models were 0.826 and 0.754, respectively. Conclusions: ANN was better than Cox regression model in terms of AUROC and accuracy of prediction. Therefore, ANN model is recommended for prediction of survival probability. These finding are very important in health research, particularly in allocation of medical resources for patients who predicted as high-risksen
DOIhttps://doi.org/en
KeywordArtificial neural networken
KeywordSurvival analysisen
KeywordPredictionen
KeywordCox regressionen
KeywordGastric canceren
PublisherBrieflandsen
TitleComparison of artificial neural network and Cox regression models in survival prediction of gastric cancer patientsen
TypeResearch Articleen

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