Detection and diagnosis of skin diseases by using snake algorithm and neural networks

Main Article Content

Ramadan Mahmood Ramo

Abstract

This research presents a medical application to diagnose types of skin diseases based on the axis of dermatology, where a computer intelligent system was built based on identifying and diagnosing the type of skin inflammation, and this system called (SANN) (Snake Algorithm Neural Network). The system consists of two stages, the first stage is the axis of locating the presence of skin inflammation and distinguish it from uninfected skin by performing the initial processing of the image using the snake algorithm. while the second stage using neural networks to diagnose types of skin disease that were identified in the first stage by adding some improvements to the neural networks to work more efficiently for diagnosis. The suggested SANN system was applied to 250 images, and the accuracy and execution time were calculated. The results showed that using the system based on the snake algorithm and neural networks in the process of identifying and diagnosing types of dermatitis (psoriasis or Spider birthmark) achieves high performance and accuracy, and gave a diagnosis rate of 88.9%


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Article Details

How to Cite
Ramo, R. (2022). Detection and diagnosis of skin diseases by using snake algorithm and neural networks. Technium: Romanian Journal of Applied Sciences and Technology, 4(10), 104–114. https://doi.org/10.47577/technium.v4i10.7840
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Articles

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