Đăng nhập
 
Tìm kiếm nâng cao
 
Tên bài báo
Tác giả
Năm xuất bản
Tóm tắt
Lĩnh vực
Phân loại
Số tạp chí
 

Bản tin định kỳ
Báo cáo thường niên
Tạp chí khoa học ĐHCT
Tạp chí tiếng anh ĐHCT
Tạp chí trong nước
Tạp chí quốc tế
Kỷ yếu HN trong nước
Kỷ yếu HN quốc tế
Book chapter
Tạp chí quốc tế 2024
Số tạp chí 5(2024) Trang: 676
Tạp chí: SN Computer Science

This study proposed an integrated dataset-preparation system for ML-based medical image diagnosis, offering high clinical applicability in various modalities and diagnostic purposes. With the proliferation of ML-based computer-aided diagnosis using medical images, massive datasets should be prepared. Lacking of a standard procedure, dataset-preparation may become ineffective. Besides, on-demand procedures are locked to a single image-modality and purpose. For these reasons, we introduced a dataset-preparation system applicable for a variety of modalities and purposes. The system consisted of a common part including incremental anonymization and cross annotation for preparing anonymized unprocessed data, followed by modality/subject-dependent parts for subsequent processes. The incremental anonymization was carried out in batch after the image acquisition. Cross annotation enabled collaborative medical specialists to co-generate annotation objects. For quick observation of dataset, thumbnail images were created. With anonymized images, preprocessing was accomplished by complementing manual operations with automatic operations. Finally, feature extraction was automatically performed to obtain data representation. Experimental results on two demonstrative systems dedicated to esthetic outcome evaluation of breast reconstruction surgery from 3D breast images and tumor detection from breast MRI images were provided. The proposed system successfully prepared the 3D breast-mesh closures and their geometric features from 3D breast images, as well as radiomics and likelihood features from breast MRI images. The system also enabled effective voxel-by-voxel prediction of tumor region from breast MRI images using random-forest and k-nearest-neighbors algorithms. The results confirmed the efficiency of the system in preparing dataset with high clinical applicability regardless of the image modality and diagnostic purpose.

Các bài báo khác
Số tạp chí 5(2024) Trang: 606
Tác giả: Đỗ Thanh Nghị
Tạp chí: SN Computer Science
Số tạp chí 23(2024) Trang: 139-150
Tác giả: Lý Nguyễn Bình
Tạp chí: Acta Scientiarum Polonorum Technologia Alimentaria
Số tạp chí 17(2024) Trang: 820-825
Tạp chí: Rasayan Journal of Chemistry
Số tạp chí 1(2024) Trang: 1-20
Tạp chí: Asia-Pacific Journal of Operational Research
Số tạp chí 68(2024) Trang: 543-548
Tạp chí: Periodica Polytechnica Civil Engineering
Số tạp chí 14(2024) Trang: 1877-1877
Tạp chí: Characterization and molecular identification of the lumpy skin disease virus in cattle in the Mekong Delta of Vietnam
Số tạp chí 51(2024) Trang: 82-91
Tạp chí: Journal of Hunan University Natural Sciences


Vietnamese | English






 
 
Vui lòng chờ...