Author:
Vu Van Giap,Hoang Anh Duc,Phan Thu Phuong,Nguyen Ngoc Du,Nguyen Thanh Thuy,Nguyen Duc Nghia,Dao Ngoc Phu,Doan Thi Phuong Lan,Nguyen Thi Thanh Huyen,Trinh Thi Huong,Pham Thi Le Quyen,Le Thi Thu Trang,Thi Hanh Phan,Pham Van Tuyen,Tran Van Chuong,Vu Dang Luu,Tran Van Luong,Nguyen Thi Thu Thao,Pham Cam Phuong,Pham Gia Linh,Luong Son Ba,Pham Trung-Dung,Nguyen Duy-Phuc,Truong Thi Kieu Anh,Nguyen Quang Minh,Tran Truong-Thuy,Dang Tran Binh,Ta Viet-Cuong,Tran Quoc Long,Le Duc-Trong,Vinh Le Sy
Abstract
AbstractFlexible bronchoscopy has revolutionized respiratory disease diagnosis. It offers direct visualization and detection of airway abnormalities, including lung cancer lesions. Accurate identification of airway lesions during flexible bronchoscopy plays an important role in the lung cancer diagnosis. The application of artificial intelligence (AI) aims to support physicians in recognizing anatomical landmarks and lung cancer lesions within bronchoscopic imagery. This work described the development of BM-BronchoLC, a rich bronchoscopy dataset encompassing 106 lung cancer and 102 non-lung cancer patients. The dataset incorporates detailed localization and categorical annotations for both anatomical landmarks and lesions, meticulously conducted by senior doctors at Bach Mai Hospital, Vietnam. To assess the dataset’s quality, we evaluate two prevalent AI backbone models, namely UNet++ and ESFPNet, on the image segmentation and classification tasks with single-task and multi-task learning paradigms. We present BM-BronchoLC as a reference dataset in developing AI models to assist diagnostic accuracy for anatomical landmarks and lung cancer lesions in bronchoscopy data.
Funder
Ministry of Science and Technology
Publisher
Springer Science and Business Media LLC