TY - JOUR
T1 - DETECTION OF SELECTED SKIN DISEASES USING AI
AU - Dabanka, Afia Akyaa
AU - Commodore, Derrick
AU - Okae, Percy
N1 - Publisher Copyright:
© 2006-2025 Asian Research Publishing Network (ARPN). All rights reserved.
PY - 2025
Y1 - 2025
N2 - In this work, three skin diseases, namely melanoma, psoriasis, and eczema, are detected and diagnosed using the CNN machine learning technique. They are among the most prevalent health concerns worldwide, and in deprived areas, early detection is often hindered by limited access to specialized care. These conditions can lead to severe health issues, making a timely and accurate diagnosis crucial. Traditional diagnostic methods are time-consuming and subjective, highlighting the need for automated solutions. This work developed an AI-based system by doing a comparative analysis of the results of VGG16, VGG19, and InceptionV3 architectures of Convolutional Neural Network (CNN). The system was trained on a curated dataset from sources like DermNet and ISIC, with the VGG19 architecture producing the best result of 99 % accuracy in detecting melanoma, psoriasis, and eczema. It was closely followed by the VGG16 architecture, which achieved an accuracy of 95 %, whilst the InceptionV3 achieved an accuracy of 87 %. To give patients a closer view of automated tests and results, a user-friendly web application was developed. This enabled users to upload images and receive an automatic diagnosis, with a feature that recommends consulting a doctor if inconsistencies are detected. The web application aims to address challenges by providing a machine learning-based diagnostic tool that can be accessed remotely by users. Moreover, this work represents a significant advancement in the use of artificial intelligence for healthcare applications. The integration of machine learning and image processing technologies not only enhances the accuracy of diagnoses but also exemplifies the growing trend of AI-driven solutions in medical diagnostics.
AB - In this work, three skin diseases, namely melanoma, psoriasis, and eczema, are detected and diagnosed using the CNN machine learning technique. They are among the most prevalent health concerns worldwide, and in deprived areas, early detection is often hindered by limited access to specialized care. These conditions can lead to severe health issues, making a timely and accurate diagnosis crucial. Traditional diagnostic methods are time-consuming and subjective, highlighting the need for automated solutions. This work developed an AI-based system by doing a comparative analysis of the results of VGG16, VGG19, and InceptionV3 architectures of Convolutional Neural Network (CNN). The system was trained on a curated dataset from sources like DermNet and ISIC, with the VGG19 architecture producing the best result of 99 % accuracy in detecting melanoma, psoriasis, and eczema. It was closely followed by the VGG16 architecture, which achieved an accuracy of 95 %, whilst the InceptionV3 achieved an accuracy of 87 %. To give patients a closer view of automated tests and results, a user-friendly web application was developed. This enabled users to upload images and receive an automatic diagnosis, with a feature that recommends consulting a doctor if inconsistencies are detected. The web application aims to address challenges by providing a machine learning-based diagnostic tool that can be accessed remotely by users. Moreover, this work represents a significant advancement in the use of artificial intelligence for healthcare applications. The integration of machine learning and image processing technologies not only enhances the accuracy of diagnoses but also exemplifies the growing trend of AI-driven solutions in medical diagnostics.
KW - AI
KW - convolutional neural network (CNN)
KW - eczema
KW - melanoma
KW - psoriasis
KW - skin diseases
KW - VGG19
UR - https://www.scopus.com/pages/publications/105010730257
U2 - 10.59018/032547
DO - 10.59018/032547
M3 - Article
AN - SCOPUS:105010730257
SN - 2409-5656
VL - 20
SP - 345
EP - 361
JO - ARPN Journal of Engineering and Applied Sciences
JF - ARPN Journal of Engineering and Applied Sciences
IS - 6
ER -