top of page
Closeup of a Petri Dish

Deep learning-based Breast Histopathology analysis

December 12, 2018

This work addresses the problem of intra-class classification of Breast Histopathology images into Eight (8)
classes of either Benign or Malignant Cell. Current manual features extraction and classification is fraught with inaccuracies leading to high rate false negatives with attendant mortality. Deep Convolutional Neural Networks (DCNN) have been shown to be effective in the classification of Images.
We adopted a DCNN architecture combined with Ensemble learning method using TensorFlow Framework with Backpropagation training and ReLU activation function to achieve accurate automated classification of these Images. We achieved inter-class classification accuracy of 91.5% with
the BreakHis dataset.

Deep learning-based Breast Histopathology analysis: Research
bottom of page