Tiia Ikonen, Harri Niska, Billy Braithwaite, I. Pöllänen, Keijo Haataja, Pekka J. Toivanen, T. Tolonen, J. Isola
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Computer-assisted image analysis of histopathological breast cancer images using step-DTOCS
In this paper, we address the epidemiology and morphology questions of breast cancer with special focus on different cell features created by lesions. In addition, we provide an insight into feature extraction and classification schemes in the image analysis pipeline. Based on our conducted research work, a novel feature extraction approach, a modification of Distance Transform on Curved Space (DTOCS), is proposed for analysis and classification of breast cancer images. The first experimental results suggest that the Step-DTOCS-based MLP-network is capable of discriminating different cell structures in a respectable way. The obtained results are presented and analyzed, and further research ideas are discussed.