Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomes

In order to increase awareness of the importance of nail care in preventing disease and enhancing quality of life, this study investigates the use of convolutional neural networks, or CNNs. Onychomycosis and other nail disorders are quite prevalent worldwide and are associated with inadequate person...

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Main Authors: Ardianto Rian, Yusuf Dede, Sumantri Raden Bagus Bambang, Febrina Dina, Al-Hakim Rosyid R., Ariyanto Arif Setia Sandi
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:BIO Web of Conferences
Online Access:https://www.bio-conferences.org/articles/bioconf/pdf/2025/03/bioconf_ichbs2025_01024.pdf
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author Ardianto Rian
Yusuf Dede
Sumantri Raden Bagus Bambang
Febrina Dina
Al-Hakim Rosyid R.
Ariyanto Arif Setia Sandi
author_facet Ardianto Rian
Yusuf Dede
Sumantri Raden Bagus Bambang
Febrina Dina
Al-Hakim Rosyid R.
Ariyanto Arif Setia Sandi
author_sort Ardianto Rian
collection DOAJ
description In order to increase awareness of the importance of nail care in preventing disease and enhancing quality of life, this study investigates the use of convolutional neural networks, or CNNs. Onychomycosis and other nail disorders are quite prevalent worldwide and are associated with inadequate personal cleanliness. The study used a dataset of 655 nail photos that had been pre-processed to 224x224 pixel resolution and categorized into 17categories. The CNN model performed well in identifying illnesses like “Leukonychia,” achieving an overall accuracy of 83%; however, it needs to be improved for underrepresented classifications like “Pale Nail.” The study recommends data augmentation, model parameter optimization, and dataset expansion to improve accuracy. To confirm dependability in practical contexts, testing with clinical datasets is also advised. A user-friendly interface for wider accessibility is one of the future aims, which will allow for prompt and precise preliminary diagnosis. This study shows how CNN-based technologies can be used to quickly and easily identify nail disorders, improving access to treatment and preventing disease
format Article
id doaj-art-4e5b84397a0048278c418ecf68d6a371
institution Kabale University
issn 2117-4458
language English
publishDate 2025-01-01
publisher EDP Sciences
record_format Article
series BIO Web of Conferences
spelling doaj-art-4e5b84397a0048278c418ecf68d6a3712025-02-05T10:42:50ZengEDP SciencesBIO Web of Conferences2117-44582025-01-011520102410.1051/bioconf/202515201024bioconf_ichbs2025_01024Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomesArdianto Rian0Yusuf Dede1Sumantri Raden Bagus Bambang2Febrina Dina3Al-Hakim Rosyid R.4Ariyanto Arif Setia Sandi5Department of Informatics, Universitas Harapan Bangsa, Karangklesem Purwokerto SelatanDepartment of Informatics, Universitas Al-Irsyad Cilacap, Wanasari Sidanegara Cilacap TengahDepartment of Informatics, Universitas Al-Irsyad Cilacap, Wanasari Sidanegara Cilacap TengahDepartment of Pharmacy, Universitas Harapan Bangsa, Raden Patah Ledug BanyumasDepartment of Information System, Universitas Harapan BangsaDepartment of Information System, Universitas Harapan BangsaIn order to increase awareness of the importance of nail care in preventing disease and enhancing quality of life, this study investigates the use of convolutional neural networks, or CNNs. Onychomycosis and other nail disorders are quite prevalent worldwide and are associated with inadequate personal cleanliness. The study used a dataset of 655 nail photos that had been pre-processed to 224x224 pixel resolution and categorized into 17categories. The CNN model performed well in identifying illnesses like “Leukonychia,” achieving an overall accuracy of 83%; however, it needs to be improved for underrepresented classifications like “Pale Nail.” The study recommends data augmentation, model parameter optimization, and dataset expansion to improve accuracy. To confirm dependability in practical contexts, testing with clinical datasets is also advised. A user-friendly interface for wider accessibility is one of the future aims, which will allow for prompt and precise preliminary diagnosis. This study shows how CNN-based technologies can be used to quickly and easily identify nail disorders, improving access to treatment and preventing diseasehttps://www.bio-conferences.org/articles/bioconf/pdf/2025/03/bioconf_ichbs2025_01024.pdf
spellingShingle Ardianto Rian
Yusuf Dede
Sumantri Raden Bagus Bambang
Febrina Dina
Al-Hakim Rosyid R.
Ariyanto Arif Setia Sandi
Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomes
BIO Web of Conferences
title Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomes
title_full Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomes
title_fullStr Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomes
title_full_unstemmed Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomes
title_short Bioinformatics-driven deep learning for nail disease diagnosis: A novel approach to improve healthcare outcomes
title_sort bioinformatics driven deep learning for nail disease diagnosis a novel approach to improve healthcare outcomes
url https://www.bio-conferences.org/articles/bioconf/pdf/2025/03/bioconf_ichbs2025_01024.pdf
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