Detection of Breast Cancer from Histopathology Images Using Deep Learning

Authors

  • Anjali Madhwani  School of Computer Science and Engineering, Sandip University, Nashik, Maharashtra, India
  • Pankaj Kumar  School of Computer Science and Engineering, Sandip University, Nashik, Maharashtra, India
  • Anurag Dubey  School of Computer Science and Engineering, Sandip University, Nashik, Maharashtra, India
  • Umakant Mandawkar  School of Computer Science and Engineering, Sandip University, Nashik, Maharashtra, India

DOI:

https://doi.org//10.32628/CSEIT2183215

Keywords:

Convolutional Neural Network, Breast cancer, Dense NET201, Transfer learning, Breakhis

Abstract

The stated system presents pre-trained Convolution Neutral Network (CNN) model which is convolutional Neutral Network to verify pre-segmented Breast Cancer mass mammogram tumour as benign or malignant. Based on detailed researched and analysis, to overcome the limitations of infrequency of available training datasets, Data augmentation, particular pre-processing & transfer learning is applied to achieve results. To tackle the classification issues noted above, this processed system is built on a modified version of DESNET 201. The suggested architecture has undergone extensive training and testing. The Convolution Neutral Network (CNN) was trained using data from the RGB colour model, which included 2480 benign and 5429 malignant cases. The achieved accuracy is 0.97%, the precision achieved for benign is 0.99% and recall rate is 0.83%. An achieved precision for malignant 0.83% following recall rate is 0.99 %. Overall, the presented DENSENET201 model excelled the previously proposed method for this system in terms of accuracy.

References

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Published

2021-06-30

Issue

Section

Research Articles

How to Cite

[1]
Anjali Madhwani, Pankaj Kumar, Anurag Dubey, Umakant Mandawkar, " Detection of Breast Cancer from Histopathology Images Using Deep Learning, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 7, Issue 3, pp.509-541, May-June-2021. Available at doi : https://doi.org/10.32628/CSEIT2183215