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Quantitative Comparison of Color Asymmetry Features for Automatic Melanoma Detection.

2021 43rd Annual International Conference of the IEEE Engineering in Medicine &amp Biology Society (EMBC)(2021)

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摘要
Asymmetry assessment is an important step towards melanoma detection. This paper compares some of the color asymmetry features proposed in the literature which have been used to automatically detect melanoma from color images. A total of nine features were evaluated based on their accuracy in predicting lesion asymmetry on a dataset of 277 images. In addition, the accuracies of these features in differentiating melanoma from benign lesions were compared. Results show that simple features based on the brightness difference between the two halves of the lesion performed the best in predicting asymmetry and subsequently melanoma.Clinical relevance- The proposed work will assist researchers in choosing better performing color asymmetry features thereby improving the accuracy of automatic melanoma detection. The resulting system will reduce the workload of clinicians by screening out obviously benign cases and referring only the suspicious cases to them.
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关键词
Algorithms,Dermoscopy,Humans,Image Interpretation, Computer-Assisted,Melanoma,Skin Neoplasms
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