\textlesstitle\textgreaterClassification of cancerous cells based on the one-class problem approach\textless/title\textgreater

\textlesstitle\textgreaterClassification of cancerous cells based on the one-class problem approach\textless/title\textgreater

Murshed, Nabeel A. and Bortolozzi, Flavio and Sabourin, Robert

Applications and Science of Artificial Neural Networks II 1996

Abstract : One of the most important factors in reducing the effect of cancerous diseases is the early diagnosis, which requires a good and a robust method. With the advancement of computer technologies and digital image processing, the development of a computer-based system has become feasible. In this paper, we introduce a new approach for the detection of cancerous cells. This approach is based on the one-class problem approach, through which the classification system need only be trained with patterns of cancerous cells. This reduces the burden of the training task by about 50%. Based on this approach, a computer-based classification system is developed, based on the Fuzzy ARTMAP neural networks. Experimental results were performed using a set of 542 patterns taken from a sample of breast cancer. Results of the experiment show 98% correct identification of cancerous cells and 95% correct identification of non-cancerous cells.