Multi-task Explainable Skin Lesion Classification
- URL: http://arxiv.org/abs/2310.07209v1
- Date: Wed, 11 Oct 2023 05:49:47 GMT
- Title: Multi-task Explainable Skin Lesion Classification
- Authors: Mahapara Khurshid, Mayank Vatsa, Richa Singh
- Abstract summary: We propose a few-shot-based approach for skin lesions that generalizes well with few labelled data.
The proposed approach comprises a fusion of a segmentation network that acts as an attention module and classification network.
- Score: 54.76511683427566
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Skin cancer is one of the deadliest diseases and has a high mortality rate if
left untreated. The diagnosis generally starts with visual screening and is
followed by a biopsy or histopathological examination. Early detection can aid
in lowering mortality rates. Visual screening can be limited by the experience
of the doctor. Due to the long tail distribution of dermatological datasets and
significant intra-variability between classes, automatic classification
utilizing computer-aided methods becomes challenging. In this work, we propose
a multitask few-shot-based approach for skin lesions that generalizes well with
few labelled data to address the small sample space challenge. The proposed
approach comprises a fusion of a segmentation network that acts as an attention
module and classification network. The output of the segmentation network helps
to focus on the most discriminatory features while making a decision by the
classification network. To further enhance the classification performance, we
have combined segmentation and classification loss in a weighted manner. We
have also included the visualization results that explain the decisions made by
the algorithm. Three dermatological datasets are used to evaluate the proposed
method thoroughly. We also conducted cross-database experiments to ensure that
the proposed approach is generalizable across similar datasets. Experimental
results demonstrate the efficacy of the proposed work.
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