Breast Cancer Detection Using Deep Learning

Authors

  • ahmed Abed Maeedi Iraqi Commission for Computers & Informatics
  • Dalal Abdulmohsin Hammood Middle Technical University
  • Shatha Mezher Hasan Iraqi Commission for Computers and Informatics

DOI:

https://doi.org/10.25195/ijci.v50i2.500

Keywords:

Breast Cancer, Deep Learning, CNN, Neural Networks, Hybrid LSTM-CNN.

Abstract

This research aims to develop an image classification model by integrating long short-term memory (LSTM) with a convolutional neural network (CNN). LSTM, which is a type of neural network, can retain and retrieve long-term dependencies and improves the feature extraction capabilities of CNN when used in a multi-layer setting. The proposed approach outperforms typical CNN classifiers in image classification. The model’s high accuracy is due to the data passing through two stages and multiple layers: first the LSTM layer, followed by the CNN layer for accurate classification. Convolutional and recurrent neural networks are combined in the recommended model, which demonstrates exceptional performance on various classification tasks. The model achieved a training accuracy of 0.9899 and testing accuracy of 0.9463 using real data, which indicates its success and applicability compared with other models.

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Author Biographies

ahmed Abed Maeedi, Iraqi Commission for Computers & Informatics

Informatics Institute for Postgraduate Studies

Dalal Abdulmohsin Hammood, Middle Technical University

Cybersecurity Engineering Technology Department
Electrical Engineering Technical College

Shatha Mezher Hasan, Iraqi Commission for Computers and Informatics

Informatics Institute for Postgraduate Studies

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Published

2024-12-30