Article ID Journal Published Year Pages File Type
517119 Journal of Biomedical Informatics 2014 8 Pages PDF
Abstract

•We develop an effective neural network (MPI-ANN) method for biomedical prediction.•MPI-ANN directly determines the network weights without lengthy learning iteration.•Experiments conducted using simulated SNP and real cancer data by cross validation.•Results show MPI-ANN’s efficacy and significantly better performance than LASSO.•Results also show that MPI-ANN could be used for bio-marker selection.

Biomedical prediction based on clinical and genome-wide data has become increasingly important in disease diagnosis and classification. To solve the prediction problem in an effective manner for the improvement of clinical care, we develop a novel Artificial Neural Network (ANN) method based on Matrix Pseudo-Inversion (MPI) for use in biomedical applications. The MPI-ANN is constructed as a three-layer (i.e., input, hidden, and output layers) feed-forward neural network, and the weights connecting the hidden and output layers are directly determined based on MPI without a lengthy learning iteration. The LASSO (Least Absolute Shrinkage and Selection Operator) method is also presented for comparative purposes. Single Nucleotide Polymorphism (SNP) simulated data and real breast cancer data are employed to validate the performance of the MPI-ANN method via 5-fold cross validation. Experimental results demonstrate the efficacy of the developed MPI-ANN for disease classification and prediction, in view of the significantly superior accuracy (i.e., the rate of correct predictions), as compared with LASSO. The results based on the real breast cancer data also show that the MPI-ANN has better performance than other machine learning methods (including support vector machine (SVM), logistic regression (LR), and an iterative ANN). In addition, experiments demonstrate that our MPI-ANN could be used for bio-marker selection as well.

Graphical abstractFigure optionsDownload full-size imageDownload high-quality image (186 K)Download as PowerPoint slide

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
Authors
, ,