2024
DOI: 10.14569/ijacsa.2024.0150484
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A Hybrid Approach with Xception and NasNet for Early Breast Cancer Detection

Yassin Benajiba,
Mohamed Chrayah,
Yassine Al-Amrani

Abstract: Breast cancer is the most common cancer in women, accounting for 12.5% of global cancer cases in 2020, and the leading cause of cancer deaths in women worldwide. Early detection is therefore crucial to reducing deaths, and recent studies suggest that deep learning techniques can detect breast cancer more accurately than experienced doctors. Experienced doctors can detect breast cancer with only 79% accuracy, while machine learning techniques can achieve up to 91% accuracy (and sometimes up to 97%). To improve … Show more

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