Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition
Deep learning techniques have shown their superior performance in dermatologist clinical inspection. Nevertheless, melanoma diagnosis is still a challenging task due to the difficulty of incorporating the useful dermatologist clinical knowledge into the learning process. In this paper, we propos...
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sg-ntu-dr.10356-1614192022-08-31T06:13:36Z Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition Wang, Xiaohong Jiang, Xudong Ding, Henghui Zhao, Yuqian Liu, Jun School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Melanoma Diagnosis Knowledge-Aware Deep Framework Deep learning techniques have shown their superior performance in dermatologist clinical inspection. Nevertheless, melanoma diagnosis is still a challenging task due to the difficulty of incorporating the useful dermatologist clinical knowledge into the learning process. In this paper, we propose a novel knowledge-aware deep framework that incorporates some clinical knowledge into collaborative learning of two important melanoma diagnosis tasks, i.e., skin lesion segmentation and melanoma recognition. Specifically, to exploit the knowledge of morphological expressions of the lesion region and also the periphery region for melanoma identification, a lesion-based pooling and shape extraction (LPSE) scheme is designed, which transfers the structure information obtained from skin lesion segmentation into melanoma recognition. Meanwhile, to pass the skin lesion diagnosis knowledge from melanoma recognition to skin lesion segmentation, an effective diagnosis guided feature fusion (DGFF) strategy is designed. Moreover, we propose a recursive mutual learning mechanism that further promotes the inter-task cooperation, and thus iteratively improves the joint learning capability of the model for both skin lesion segmentation and melanoma recognition. Experimental results on two publicly available skin lesion datasets show the effectiveness of the proposed method for melanoma analysis. 2022-08-31T06:13:36Z 2022-08-31T06:13:36Z 2021 Journal Article Wang, X., Jiang, X., Ding, H., Zhao, Y. & Liu, J. (2021). Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition. Pattern Recognition, 120, 108075-. https://dx.doi.org/10.1016/j.patcog.2021.108075 0031-3203 https://hdl.handle.net/10356/161419 10.1016/j.patcog.2021.108075 2-s2.0-85111176705 120 108075 en Pattern Recognition © 2021 Elsevier Ltd. All rights reserved. |
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Engineering::Electrical and electronic engineering Melanoma Diagnosis Knowledge-Aware Deep Framework Wang, Xiaohong Jiang, Xudong Ding, Henghui Zhao, Yuqian Liu, Jun Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition |
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Deep learning techniques have shown their superior performance in
dermatologist clinical inspection. Nevertheless, melanoma diagnosis is still a
challenging task due to the difficulty of incorporating the useful
dermatologist clinical knowledge into the learning process. In this paper, we
propose a novel knowledge-aware deep framework that incorporates some clinical
knowledge into collaborative learning of two important melanoma diagnosis
tasks, i.e., skin lesion segmentation and melanoma recognition. Specifically,
to exploit the knowledge of morphological expressions of the lesion region and
also the periphery region for melanoma identification, a lesion-based pooling
and shape extraction (LPSE) scheme is designed, which transfers the structure
information obtained from skin lesion segmentation into melanoma recognition.
Meanwhile, to pass the skin lesion diagnosis knowledge from melanoma
recognition to skin lesion segmentation, an effective diagnosis guided feature
fusion (DGFF) strategy is designed. Moreover, we propose a recursive mutual
learning mechanism that further promotes the inter-task cooperation, and thus
iteratively improves the joint learning capability of the model for both skin
lesion segmentation and melanoma recognition. Experimental results on two
publicly available skin lesion datasets show the effectiveness of the proposed
method for melanoma analysis. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Wang, Xiaohong Jiang, Xudong Ding, Henghui Zhao, Yuqian Liu, Jun |
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Article |
author |
Wang, Xiaohong Jiang, Xudong Ding, Henghui Zhao, Yuqian Liu, Jun |
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Wang, Xiaohong |
title |
Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition |
title_short |
Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition |
title_full |
Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition |
title_fullStr |
Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition |
title_full_unstemmed |
Knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition |
title_sort |
knowledge-aware deep framework for collaborative skin lesion segmentation and melanoma recognition |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/161419 |
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1743119528365129728 |