ΤND: A Thyroid Nodule Detection System for Analysis of Ultrasound Images and Videos
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Dimitrios K. Iakovidis | Dimitrios E. Maroulis | Eystratios G. Keramidas | D. Maroulis | D. Iakovidis
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