journal article Open Access Jun 01, 2025

QuantumNet: An enhanced diabetic retinopathy detection model using classical deep learning-quantum transfer learning

MethodsX Vol. 14 pp. 103185 · Elsevier BV
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Published
Jun 01, 2025
Vol/Issue
14
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103185
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Manish Bali, Ved Prakash Mishra, Anuradha Yenkikar, et al. (2025). QuantumNet: An enhanced diabetic retinopathy detection model using classical deep learning-quantum transfer learning. MethodsX, 14, 103185. https://doi.org/10.1016/j.mex.2025.103185