Assessing the Effect of Quantitative and Qualitative Predictors on Gastric Cancer Individuals Survival Using Hierarchical Artificial Neural Network Models

Background There are numerous unanswered questions in the application of artificial neural network models for analysis of survival data. In most studies, independent variables have been studied as qualitative dichotomous variables, and results of using discrete and continuous quantitative, ordinal, or multinomial categorical predictive variables in these models are not well understood in comparison to conventional models. Objectives This study was designed and conducted to examine the application of these models in order to determine the survival of gastric cancer patients, in comparison to the Cox proportional hazards model. Patients and Methods We studied the postoperative survival of 330 gastric cancer patients who suffered surgery at a surgical unit of the Iran Cancer Institute over a five-year period. Covariates of age, gender, history of substance abuse, cancer site, type of pathology, presence of metastasis, stage, and number of complementary treatments were entered in the models, and survival probabilities were calculated at 6, 12, 18, 24, 36, 48, and 60 months using the Cox proportional hazards and neural network models. We estimated coefficients of the Cox model and the weights in the neural network (with 3, 5, and 7 nodes in the hidden layer) in the training group, and used them to derive predictions in the study group. Predictions with these two methods were compared with those of the Kaplan-Meier product limit estimator as the gold standard. Comparisons were performed with the Friedman and Kruskal-Wallis tests. Results Survival probabilities at different times were determined using the Cox proportional hazards and a neural network with three nodes in the hidden layer; the ratios of standard errors with these two methods to the Kaplan-Meier method were 1.1593 and 1.0071, respectively, revealed a significant difference between Cox and Kaplan-Meier (P < 0.05) and no significant difference between Cox and the neural network, and the neural network and the standard (Kaplan-Meier), as well as better accuracy for the neural network (with 3 nodes in the hidden layer). Probabilities of survival were calculated using three neural network models with 3, 5, and 7 nodes in the hidden layer, and it has been observed that none of the predictions was significantly different from results with the Kaplan-Meier method and they appeared more comparable towards the last months (fifth year). However, we observed better accuracy using the neural network with 5 nodes in the hidden layer. Using the Cox proportional hazards and a neural network with 3 nodes in the hidden layer, we found enhanced accuracy with the neural network model. Conclusions Neural networks can provide more accurate predictions for survival probabilities compared to the Cox proportional hazards mode, especially now that advances in computer sciences have eliminated limitations associated with complex computations. It is not recommended in order to adding too many hidden layer nodes because sample size related effects can reduce the accuracy. We recommend increasing the number of nodes to a point that increased accuracy continues (decrease in mean standard error), however increasing nodes should cease when a change in this trend is observed.

[1]  Anthony C. Fisher,et al.  An artificial neural network improves prediction of observed survival in patients with laryngeal squamous carcinoma , 2006, European Archives of Oto-Rhino-Laryngology and Head & Neck.

[2]  L Ohno-Machado,et al.  Sequential use of neural networks for survival prediction in AIDS. , 1996, Proceedings : a conference of the American Medical Informatics Association. AMIA Fall Symposium.

[3]  S Mitchell,et al.  Predicting Outcomes After Liver Transplantation A Connectionist Approach , 1994, Annals of surgery.

[4]  M. Ebell Artificial neural networks for predicting failure to survive following in-hospital cardiopulmonary resuscitation. , 1993, The Journal of family practice.

[5]  Richard Dybowski,et al.  Clinical applications of artificial neural networks: Theory , 2001 .

[6]  W. Baxt Use of an artificial neural network for the diagnosis of myocardial infarction. , 1991, Annals of internal medicine.

[7]  Hojjat Zeraati,et al.  Postoperative life expectancy in gastric cancer patients and its associated factors. , 2005, Saudi medical journal.

[8]  Lionel Tarassenko,et al.  Non‐linear survival analysis using neural networks , 2004, Statistics in medicine.

[9]  Brian D. Ripley,et al.  Clinical applications of artificial neural networks: Neural networks as statistical methods in survival analysis , 2001 .

[10]  Akbar Fotouhi,et al.  Assessment of gastric cancer survival: using an artificial hierarchical neural network. , 2008, Pakistan journal of biological sciences : PJBS.

[11]  E Biganzoli,et al.  Prognosis in node-negative primary breast cancer: a neural network analysis of risk profiles using routinely assessed factors. , 2003, Annals of oncology : official journal of the European Society for Medical Oncology.

[12]  K. Mehrotra,et al.  Prediction criteria for successful weaning from respiratory support: Statistical and connectionist analyses , 1992, Critical care medicine.

[13]  H. Burke,et al.  Artificial neural networks for cancer research: outcome prediction. , 1994, Seminars in surgical oncology.

[14]  G. Clark,et al.  A practical application of neural network analysis for predicting outcome of individual breast cancer patients , 2005, Breast Cancer Research and Treatment.

[15]  W. McGuire,et al.  A demonstration that breast cancer recurrence can be predicted by Neural Network analysis , 2005, Breast Cancer Research and Treatment.

[16]  Takumi Ichimura,et al.  Comparison of Proportional Hazard Model and Neural Network Models in a real data set of intensive care unit patients , 2004, MedInfo.

[17]  Jeremy Wyatt,et al.  Clinical applications of artificial neural networks: Artificial neural networks: practical considerations for clinical application , 2001 .

[18]  W. Baxt Analysis of the clinical variables driving decision in an artificial neural network trained to identify the presence of myocardial infarction. , 1992, Annals of emergency medicine.

[19]  Zsolt Tulassay,et al.  Application of neural networks in medicine - a review , 1998 .