Balasubramani, S. and Prabhavathi Neelakandan, Renjith and Kavisankar, L. and Rajavel, Rajkumar and Malarvel, Muthukumaran and Shankar, Achyut (2025) A Quantum-Enhanced Artificial Neural Network Model for Efficient Medical Image Compression. IEEE Access, 13. 31809 - 31828. ISSN 21693536
Full text not available from this repository.Abstract
This study presents a Quantum-enhanced Artificial Neural Network (QANN) model for medical image compression, preserving essential details in MRI, CT, and X-ray scans. The approach converts classical data into quantum states, manipulates them via parameterized quantum circuits, and measures outcomes to produce enhanced feature vectors, which are then input into a classical neural network. QANN improves reconstructed image quality, reduces file size, and increases storage efficiency, achieving size reductions of 73.3% for MRI, 74.1% for X-ray, and 71.8% for CT scans. The framework demonstrates how quantum computing can enhance medical image processing and optimize healthcare data management.
| Item Type: | Article |
|---|---|
| Additional Information: | Cited by: 4; All Open Access; Gold Open Access |
| Uncontrolled Keywords: | Computerized tomography; Data compression ratio; Electroencephalography; Image coding; Image enhancement; Image reconstruction; Magnetic resonance imaging; Medical image processing; Quantum electronics; Self-supervised learning; Semi-supervised learning; Artificial neural network modeling; Features extraction; Images compression; Machine-learning; Multi-class classifier; Quantum feature extraction; Quantum features; Quantum machine learning; Quantum machines; Quantum multiclass classifier; Image compression |
| Subjects: | Computer Science > Artificial Intelligence |
| Divisions: | Arts and Science > Vinayaka Mission's Kirupananda Variyar Arts & Science College, Salem > Computer Science |
| Depositing User: | Unnamed user with email techsupport@mosys.org |
| Date Deposited: | 26 Nov 2025 09:17 |
| Last Modified: | 26 Nov 2025 09:17 |
| URI: | https://vmuir.mosys.org/id/eprint/324 |
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