Cancer Detection in Breast Histopathology with Convolution Neural Network Based Approach

Autor: Mingjiang Wang, M. S. S. Malik, Tasleem Kausar
Rok vydání: 2019
Předmět:
Zdroj: AICCSA
Popis: Breast cancer is one of most common causes of mortality in women. However, few limitations, e.g., similar structure statistics in inter-class and textural variations in intra-class images make the breast histology analysis a challenging process. In this paper, the multi-class breast cancer classification is carried out with deep convolution neural network (CNN) based transfer learning approach. To explore the feasibility of transfer learning in breast histology, pre-trained deep CNN model is inherited and simultaneously a multi-scale feature concatenation strategy is used. Moreover, incorporating with stain normalization and channel color modification strategies the designed model can be effectively trained. The experiments on publicly available multi-class ICIAR 2018 breast dataset corroborated the efficiency of ou method. The designed approach outperforms the existing methods by achieving 94.3% and 97.5% accuracy on 4-class and 2-class histology image recognition respectively.
Databáze: OpenAIRE