journal article Open Access Jun 01, 2026

A synergic approach integrating deep learning models for enhanced multi-class classification of ultrasound images

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Published
Jun 01, 2026
Vol/Issue
11
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100217
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Sushi Sushanki, Ashish Kumar Bhandari (2026). A synergic approach integrating deep learning models for enhanced multi-class classification of ultrasound images. Biomedical Engineering Advances, 11, 100217. https://doi.org/10.1016/j.bea.2026.100217