Six skin diseases classification using deep convolutional neural network

Smart imaging-based medical classification systems help the human diagnose the diseases and make better decisions about patient health. Recently, computer-aided classification of skin diseases has been a popular research area due to its importance in the early detection of skin diseases. This paper...

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Veröffentlicht in:International journal of electrical and computer engineering (Malacca, Malacca) Malacca), 2022-06, Vol.12 (3), p.3072
Hauptverfasser: Saifan, Ramzi, Jubair, Fahed
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Jubair, Fahed
description Smart imaging-based medical classification systems help the human diagnose the diseases and make better decisions about patient health. Recently, computer-aided classification of skin diseases has been a popular research area due to its importance in the early detection of skin diseases. This paper presents at its core, a system that exploits convolutional neural networks to classify color images of skin lesions. It relies on a pre-trained deep convolutional neural network to classify between six skin diseases: acne, athlete’s foot, chickenpox, eczema, skin cancer, and vitiligo. Additionally, we constructed a dataset of 3000 colored images from several online datasets and the Internet. Experimental results are encouraging, where the proposed model achieved an accuracy of 81.75%, which is higher than the state of the art researches in this field. This accuracy was calculated using the holdout method, where 90% of the images were used for training, and 10% of the images were used for out-of-sample accuracy testing.
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subjects Accuracy
Artificial neural networks
Color imagery
Computer aided decision processes
Datasets
Image classification
Medical imaging
Model accuracy
Neural networks
Skin diseases
title Six skin diseases classification using deep convolutional neural network
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