Image Data collection and implementation of deep learning-based model in detecting Monkeypox disease using modified VGG16
Md Manjurul Ahsan, Muhammad Ramiz Uddin, Mithila Farjana, Ahmed Nazmus, Sakib, Khondhaker Al Momin, and Shahana Akter Luna

TL;DR
This paper introduces a new Monkeypox image dataset and a modified VGG16 deep learning model that achieves high accuracy in detecting Monkeypox from skin images, aiding early diagnosis and pandemic prevention.
Contribution
The study presents a publicly available Monkeypox dataset and a modified VGG16 model with improved detection accuracy for Monkeypox skin lesions.
Findings
Achieved 97% accuracy in Study One
Achieved 88% accuracy in Study Two
Provided interpretability using LIME explanations
Abstract
While the world is still attempting to recover from the damage caused by the broad spread of COVID-19, the Monkeypox virus poses a new threat of becoming a global pandemic. Although the Monkeypox virus itself is not deadly and contagious as COVID-19, still every day, new patients case has been reported from many nations. Therefore, it will be no surprise if the world ever faces another global pandemic due to the lack of proper precautious steps. Recently, Machine learning (ML) has demonstrated huge potential in image-based diagnoses such as cancer detection, tumor cell identification, and COVID-19 patient detection. Therefore, a similar application can be adopted to diagnose the Monkeypox-related disease as it infected the human skin, which image can be acquired and further used in diagnosing the disease. Considering this opportunity, in this work, we introduce a newly developed…
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Taxonomy
TopicsPoxvirus research and outbreaks · AI in cancer detection · Virus-based gene therapy research
