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Main Authors: Nguyen, Nhi Ngoc-Yen, Tu, Le-Huy, Nguyen, Dieu-Phuong, Do, Nhat-Tan, Thai, Minh Triet, Nguyen-Tat, Bao-Thien
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.00391
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author Nguyen, Nhi Ngoc-Yen
Tu, Le-Huy
Nguyen, Dieu-Phuong
Do, Nhat-Tan
Thai, Minh Triet
Nguyen-Tat, Bao-Thien
author_facet Nguyen, Nhi Ngoc-Yen
Tu, Le-Huy
Nguyen, Dieu-Phuong
Do, Nhat-Tan
Thai, Minh Triet
Nguyen-Tat, Bao-Thien
contents Purpose: Our study presents an enhanced approach to medical image caption generation by integrating concept detection into attention mechanisms. Method: This method utilizes sophisticated models to identify critical concepts within medical images, which are then refined and incorporated into the caption generation process. Results: Our concept detection task, which employed the Swin-V2 model, achieved an F1 score of 0.58944 on the validation set and 0.61998 on the private test set, securing the third position. For the caption prediction task, our BEiT+BioBart model, enhanced with concept integration and post-processing techniques, attained a BERTScore of 0.60589 on the validation set and 0.5794 on the private test set, placing ninth. Conclusion: These results underscore the efficacy of concept-aware algorithms in generating precise and contextually appropriate medical descriptions. The findings demonstrate that our approach significantly improves the quality of medical image captions, highlighting its potential to enhance medical image interpretation and documentation, thereby contributing to improved healthcare outcomes.
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id arxiv_https___arxiv_org_abs_2406_00391
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle DS@BioMed at ImageCLEFmedical Caption 2024: Enhanced Attention Mechanisms in Medical Caption Generation through Concept Detection Integration
Nguyen, Nhi Ngoc-Yen
Tu, Le-Huy
Nguyen, Dieu-Phuong
Do, Nhat-Tan
Thai, Minh Triet
Nguyen-Tat, Bao-Thien
Computer Vision and Pattern Recognition
Purpose: Our study presents an enhanced approach to medical image caption generation by integrating concept detection into attention mechanisms. Method: This method utilizes sophisticated models to identify critical concepts within medical images, which are then refined and incorporated into the caption generation process. Results: Our concept detection task, which employed the Swin-V2 model, achieved an F1 score of 0.58944 on the validation set and 0.61998 on the private test set, securing the third position. For the caption prediction task, our BEiT+BioBart model, enhanced with concept integration and post-processing techniques, attained a BERTScore of 0.60589 on the validation set and 0.5794 on the private test set, placing ninth. Conclusion: These results underscore the efficacy of concept-aware algorithms in generating precise and contextually appropriate medical descriptions. The findings demonstrate that our approach significantly improves the quality of medical image captions, highlighting its potential to enhance medical image interpretation and documentation, thereby contributing to improved healthcare outcomes.
title DS@BioMed at ImageCLEFmedical Caption 2024: Enhanced Attention Mechanisms in Medical Caption Generation through Concept Detection Integration
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.00391