scholarly journals SkinNet: A Deep Learning Framework for Skin Lesion Segmentation

Author(s):  
Sulaiman Vesal ◽  
Nishant Ravikumar ◽  
Andreas Maier
2021 ◽  
Vol 7 (4) ◽  
pp. 67
Author(s):  
Lina Liu ◽  
Ying Y. Tsui ◽  
Mrinal Mandal

Skin lesion segmentation is a primary step for skin lesion analysis, which can benefit the subsequent classification task. It is a challenging task since the boundaries of pigment regions may be fuzzy and the entire lesion may share a similar color. Prevalent deep learning methods for skin lesion segmentation make predictions by ensembling different convolutional neural networks (CNN), aggregating multi-scale information, or by multi-task learning framework. The main purpose of doing so is trying to make use of as much information as possible so as to make robust predictions. A multi-task learning framework has been proved to be beneficial for the skin lesion segmentation task, which is usually incorporated with the skin lesion classification task. However, multi-task learning requires extra labeling information which may not be available for the skin lesion images. In this paper, a novel CNN architecture using auxiliary information is proposed. Edge prediction, as an auxiliary task, is performed simultaneously with the segmentation task. A cross-connection layer module is proposed, where the intermediate feature maps of each task are fed into the subblocks of the other task which can implicitly guide the neural network to focus on the boundary region of the segmentation task. In addition, a multi-scale feature aggregation module is proposed, which makes use of features of different scales and enhances the performance of the proposed method. Experimental results show that the proposed method obtains a better performance compared with the state-of-the-art methods with a Jaccard Index (JA) of 79.46, Accuracy (ACC) of 94.32, SEN of 88.76 with only one integrated model, which can be learned in an end-to-end manner.


Author(s):  
M.H. Jafari ◽  
N. Karimi ◽  
E. Nasr-Esfahani ◽  
S. Samavi ◽  
S.M.R. Soroushmehr ◽  
...  

Author(s):  
Sohaib Najat Hasan ◽  
Murat Gezer ◽  
Raghad Abdulaali Azeez ◽  
Sevinc Gulsecen

Diagnostics ◽  
2021 ◽  
Vol 12 (1) ◽  
pp. 36
Author(s):  
Rafaela Carvalho ◽  
Ana C. Morgado ◽  
Catarina Andrade ◽  
Tudor Nedelcu ◽  
André Carreiro ◽  
...  

Teledermatology has developed rapidly in recent years and is nowadays an essential tool for early diagnosis. In this work, we aim to improve existing Teledermatology processes for skin lesion diagnosis by developing a deep learning approach for risk prioritization with a dataset of retrospective data from referral requests of the Portuguese National Health System. Given the high complexity of this task, we propose a new prioritization pipeline guided and inspired by domain knowledge. We explored automatic lesion segmentation and tested different learning schemes, namely hierarchical classification and curriculum learning approaches, optionally including additional patient metadata. The final priority level prediction can then be obtained by combining predicted diagnosis and a baseline priority level accounting for explicit expert knowledge. In both the differential diagnosis and prioritization branches, lesion segmentation with 30% tolerance for contextual information was shown to improve classification when compared with a flat baseline model trained on original images; furthermore, the addition of patient information was not beneficial for most experiments. Curriculum learning delivered better results than a flat or hierarchical approach. The combination of diagnosis information and a knowledge map, created in collaboration with dermatologists, together with the priority achieved interesting results (best macro F1 of 43.93% for a validated test set), paving the way for new data-centric and knowledge-driven approaches.


2022 ◽  
Vol 71 (2) ◽  
pp. 2477-2495
Author(s):  
Amina Bibi ◽  
Muhamamd Attique Khan ◽  
Muhammad Younus Javed ◽  
Usman Tariq ◽  
Byeong-Gwon Kang ◽  
...  

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