Title :
Effect of Compensation in Partial Logistic Artificial Neural Networks for Medical Survival Analysis
Author :
Aung, M.S.H. ; Lisboa, P.J.G. ; Arsene, C.T.C.
Author_Institution :
School of Computing and Mathematical Sciences, Liverpool John Moores University, Liverpool, United Kingdom. m.s.aung@ljmu.ac.uk
Abstract :
The performance of the non-linear prognostic model `Partial Logistic Artificial Neural Network with Automatic Relevance Determination´ (PLANN-ARD) is observed here and compared to a variant of the model that is trained using a compensating mechanism to account for the skewed distribution in the neural network target vector. The application dataset in this survival analysis is cancer patient information namely diagnosed with Intra-Ocular Melanoma. The outcomes of the two models are compared with the empirical cumulative hazard curve derived from the Kaplan-Meier survival function for a particular population. Three forms of out-come from both the compensated and non compensated models are obtained: the network output itself, marginalised network output and the median of the network output distribution.
Keywords :
Intra-Ocular Melanoma and Compensation; Marginalisation; Partial Logistic Artificial Neural Networks; Survival Analysis;
Conference_Titel :
Advances in Medical, Signal and Information Processing, 2006. MEDSIP 2006. IET 3rd International Conference On
Conference_Location :
Glasgow, UK
Print_ISBN :
978-0-86341-658-3