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Deep Transfer Learning Approaches for Monkey Pox Disease Diagnosis

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dc.contributor.author ManjurulAhsan, Md.
dc.contributor.author Uddin, Muhammad Ramiz
dc.contributor.author Ali, Md. Shahin
dc.contributor.author Islam, Md. Khairul
dc.contributor.author Farjana, Mithila
dc.contributor.author Sakib, Ahmed Nazmus
dc.contributor.author Momin, Khondhaker Al
dc.contributor.author Luna, Shahana Akter
dc.date.accessioned 2024-05-15T06:00:21Z
dc.date.available 2024-05-15T06:00:21Z
dc.date.issued 2023-04-15
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/12337
dc.description.abstract Monkeypox has become a significant global challenge as the number of cases increases daily. Those infected with the disease often display various skin symptoms and can spread the infection through contamination. Recently, Machine Learning (ML) has shown potential in image-based diagnoses, such as detecting cancer, identifying tumor cells, and identifying coronavirus disease (COVID)-19 patients. Thus, ML could potentially be used to diagnose Monkeypox as well. In this study, we developed a Monkeypox diagnosis model using Generalization and Regularization-based Transfer Learning approaches (GRA-TLA) for binary and multiclass classification. We tested our proposed approach on ten different convolutional Neural Network (CNN) models in three separate studies. The preliminary computational results showed that our proposed approach, combined with Extreme Inception (Xception), was able to distinguish between individuals with and without Monkeypox with an accuracy ranging from 77% to 88% in Studies One and Two, while Residual Network (ResNet)-101 had the best performance for multiclass classification in Study Three, with an accuracy ranging from 84% to 99%. In addition, we found that our proposed approach was computationally efficient compared to existing TL approaches in terms of the number of parameters (NP) and Floating-Point Operations per Second (FLOPs) required. We also used Local Interpretable Model-Agnostic Explanations (LIME) to explain our model’s predictions and feature extractions, providing a deeper understanding of the specific features that may indicate the onset of Monkeypox. en_US
dc.language.iso en_US en_US
dc.publisher Elsevier en_US
dc.subject Monkeypox en_US
dc.subject Diseases en_US
dc.subject Deep learning en_US
dc.subject Machine learning en_US
dc.title Deep Transfer Learning Approaches for Monkey Pox Disease Diagnosis en_US
dc.type Article en_US


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