A quantum-optimized approach for breast cancer detection using SqueezeNet-SVM
Hainan Normal University · King Abdulaziz University · +2 more institutions
Abstract
Breast cancer is one of the most aggressive types of cancer, and its early diagnosis is crucial for reducing mortality rates and ensuring timely treatment. Computer-aided diagnosis systems provide automated mammography image processing, interpretation, and grading. However, since the currently existing methods suffer from such issues as overfitting, lack of adaptability, and dependence on massive annotated datasets, the present work introduces a hybrid approach to enhance breast cancer classification accuracy. The proposed Q-BGWO-SQSVM approach utilizes an improved quantum-inspired binary Grey Wolf Optimizer and combines it with SqueezeNet and Support Vector Machines to exhibit sophisticated performance.…
Citation impact
- FWCI
- 28.96
- Percentile
- 100%
- References
- 104
Authors
6- ABAnas BilalCorresponding
Hainan Normal University
- AAAli Alkhathlan
King Abdulaziz University
- FKFaris Kateb
King Abdulaziz University
- ATAlishba Tahir
Shifa Tameer-e-Millat University
- MSMuhammad Shafiq
Qujing Normal University
Topics & keywords
- Breast cancer
- Support vector machine
- Computer science
- Cancer
- Computational biology
- Artificial intelligence
- Medicine
- Internal medicine
- Good health and well-being