Improvement of breast cancer relapse prediction in high risk intervals using artificial neural networks
- 28 October 2005
- journal article
- research article
- Published by Springer Nature in Breast Cancer Research and Treatment
- Vol. 94 (3) , 265-272
- https://doi.org/10.1007/s10549-005-9013-y
Abstract
The objective of this study is to compare the predictive accuracy of a neural network (NN) model versus the standard Cox proportional hazard model. Data about the 3811 patients included in this study were collected within the ‘El Álamo’ Project, the largest dataset on breast cancer (BC) in Spain. The best prognostic model generated by the NN contains as covariates age, tumour size, lymph node status, tumour grade and type of treatment. These same variables were considered as having prognostic significance within the Cox model analysis. Nevertheless, the predictions made by the NN were statistically significant more accurate than those from the Cox model (p<0.0001). Seven different time intervals were also analyzed to find that the NN predictions were much more accurate than those from the Cox model in particular in the early intervals between 1–10 and 11–20 months, and in the later one considered from 61 months to maximum follow-up time (MFT). Interestingly, these intervals contain regions of high relapse risk that have been observed in different studies and that are also present in the analyzed dataset.Keywords
This publication has 38 references indexed in Scilit:
- Updating of covariates and choice of time origin in survival analysis: problems with vaguely defined disease statesStatistics in Medicine, 2002
- A Comparison of Machine Learning Methods for the Diagnosis of Pigmented Skin LesionsJournal of Biomedical Informatics, 2001
- Re: Dormancy of Mammary Carcinoma After MastectomyJNCI Journal of the National Cancer Institute, 2000
- On the use of artificial neural networks for the analysis of survival dataIEEE Transactions on Neural Networks, 1997
- Bayesian Neural Network Models for Censored DataBiometrical Journal, 1997
- Time distribution of the recurrence risk for breast cancer patients undergoing mastectomy: Further support about the concept of tumor dormancyBreast Cancer Research and Treatment, 1996
- A technique for using neural network analysis to perform survival analysis of censored dataCancer Letters, 1994
- A demonstration that breast cancer recurrence can be predicted by Neural Network analysisBreast Cancer Research and Treatment, 1992
- Regression modelling strategies for improved prognostic predictionStatistics in Medicine, 1984