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Deep learning in diabetic foot ulcers detection: A comprehensive evaluation

Authors :
Yap, MH
Hachiuma, R
Alavi, A
Brungel, R
Cassidy, B
Goyal, M
Zhu, H
Ruckert, J
Olshansky, M
Huang, X
Saito, H
Hassanpour, S
Friedrich, CM
Ascher, D
Song, A
Kajita, H
Gillespie, D
Reeves, ND
Pappachan, J
O'Shea, C
Frank, E
Yap, MH
Hachiuma, R
Alavi, A
Brungel, R
Cassidy, B
Goyal, M
Zhu, H
Ruckert, J
Olshansky, M
Huang, X
Saito, H
Hassanpour, S
Friedrich, CM
Ascher, D
Song, A
Kajita, H
Gillespie, D
Reeves, ND
Pappachan, J
O'Shea, C
Frank, E
Publication Year :
2021

Abstract

There has been a substantial amount of research involving computer methods and technology for the detection and recognition of diabetic foot ulcers (DFUs), but there is a lack of systematic comparisons of state-of-the-art deep learning object detection frameworks applied to this problem. DFUC2020 provided participants with a comprehensive dataset consisting of 2,000 images for training and 2,000 images for testing. This paper summarizes the results of DFUC2020 by comparing the deep learning-based algorithms proposed by the winning teams: Faster R-CNN, three variants of Faster R-CNN and an ensemble method; YOLOv3; YOLOv5; EfficientDet; and a new Cascade Attention Network. For each deep learning method, we provide a detailed description of model architecture, parameter settings for training and additional stages including pre-processing, data augmentation and post-processing. We provide a comprehensive evaluation for each method. All the methods required a data augmentation stage to increase the number of images available for training and a post-processing stage to remove false positives. The best performance was obtained from Deformable Convolution, a variant of Faster R-CNN, with a mean average precision (mAP) of 0.6940 and an F1-Score of 0.7434. Finally, we demonstrate that the ensemble method based on different deep learning methods can enhance the F1-Score but not the mAP.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1315674552
Document Type :
Electronic Resource