Multi-Class Diagnosis of Skin Lesions Using the Fourier Spectral Information of Images on Additive Color Model by Artificial Neural Network

This article presents a new methodology to diagnostics ten types of skin lesions based on the image’ s Fourier spectral information in an additive color model. All spectral information and correlation coefficients between the skin lesions classes conform the input signals to an Artificial...

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Bibliographic Details
Main Authors: Josue Aaron Lopez-Leyva, Esperanza Guerra-Rosas, Josue Alvarez-Borrego
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9363122/
Description
Summary:This article presents a new methodology to diagnostics ten types of skin lesions based on the image&#x2019; s Fourier spectral information in an additive color model. All spectral information and correlation coefficients between the skin lesions classes conform the input signals to an Artificial Neural Network. In general, the results show the well-defined classification for all the skin lesions classes based on the high values for Accuracy, Precision, Sensitivity, and Specificity metrics performance and a reduced images misclassification percentage (&#x2248;5.9&#x0025;) for the Testing sub-dataset, and less for Training (&#x2248;2.8&#x0025;) and Validation (&#x2248;5.6&#x0025;) sub-dataset even considering the strange objects, not-clarity, and black sections in some images analyzed. The general achieved classification Accuracy, Precision, Sensitivity, and Specificity percentages of the proposed method are 99.33 &#x0025;, 94.16 &#x0025;, 92.9 &#x0025;, and 99.63 &#x0025;, respectively. In particular, the skin lesions related to <italic>Basal Cell Carcinoma</italic>, <italic>Seborrhoeic Keratosis</italic>, and <italic>Melanocytic Nevus</italic> present the best performance regarding the Receiver Operating Characteristics, while the <italic>Pyogenic Granuloma</italic> was the worst classified.
ISSN:2169-3536