Title of article :
A Framework for Automatic Burn Image Segmentation and Burn Depth Diagnosis Using Deep Learning
Author/Authors :
Liu, Hao Hangzhou Dianzi University - Zhejiang, China , Yue, Keqiang Hangzhou Dianzi University - Zhejiang, China , Cheng, Siyi Hangzhou Dianzi University - Zhejiang, China , Li, Wenjun Hangzhou Dianzi University - Zhejiang, China , Fu, Zhihui People’s Hospital of Jianggan District - Hangzhou - Zhejiang, China
Abstract :
Burn is a common traumatic disease with high morbidity and mortality. The treatment of burns requires accurate and reliable
diagnosis of burn wounds and burn depth, which can save lives in some cases. However, due to the complexity of burn wounds,
the early diagnosis of burns lacks accuracy and difference. Therefore, we use deep learning technology to automate and
standardize burn diagnosis to reduce human errors and improve burn diagnosis. First, the burn dataset with detailed burn area
segmentation and burn depth labelling is created. Then, an end-to-end framework based on deep learning method for advanced
burn area segmentation and burn depth diagnosis is proposed. The framework is firstly used to segment the burn area in the
burn images. On this basis, the calculation of the percentage of the burn area in the total body surface area (TBSA) can be
realized by extending the network output structure and the labels of the burn dataset. Then, the framework is used to segment
multiple burn depth areas. Finally, the network achieves the best result with IOU of 0.8467 for the segmentation of burn and no
burn area. and for multiple burn depth areas segmentation, the best average IOU is 0.5144.
Keywords :
Automatic , Segmentation , IOU , COCO
Journal title :
Computational and Mathematical Methods in Medicine