Sensitivity-Oriented YOLOv11 for Robust Multi-Label Lesion Detection in Chest X-rays
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Language: English
Page range: 41 - 53
Submitted on: Jan 17, 2026
Accepted on: Mar 9, 2026
Published on: Mar 23, 2026
Published by: Riga Technical University
In partnership with: Paradigm Publishing Services
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© 2026 Thi-Da-Huong Truong, Ngoc Huynh Pham, Vo-Phuong-Tam Nguyen, Thi-Thanh-Thuy Le, Hai Thanh Nguyen, published by Riga Technical University
This work is licensed under the Creative Commons Attribution 4.0 License.