Deep learning based detection of monkeypox virus using skin lesion images

Q3 Medicine
Tushar Nayak , Krishnaraj Chadaga , Niranjana Sampathila , Hilda Mayrose , Nitila Gokulkrishnan , Muralidhar Bairy G , Srikanth Prabhu , Swathi K. S , Shashikiran Umakanth
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引用次数: 5

Abstract

As we set into the second half of 2022, the world is still recovering from the two-year COVID-19 pandemic. However, over the past three months, the outbreak of the Monkeypox Virus (MPV) has led to fifty-two thousand confirmed cases and over one hundred deaths. This caused the World Health Organisation to declare the outbreak a Public Health Emergency of International Concern (PHEIC). If this outbreak worsens, we could be looking at the Monkeypox virus causing the next global pandemic. As Monkeypox affects the human skin, the symptoms can be captured with regular imaging. Large samples of these images can be used as a training dataset for machine learning-based detection tools. Using a regular camera to capture the skin image of the infected person and running it against computer vision models is beneficial. In this research, we use deep learning to diagnose monkeypox from skin lesion images. Using a publicly available dataset, we tested the dataset on five pre-trained deep neural networks: GoogLeNet, Places365-GoogLeNet, SqueezeNet, AlexNet and ResNet-18. Hyperparameter was done to choose the best parameters. Performance metrics such as accuracy, precision, recall, f1-score and AUC were considered. Among the above models, ResNet18 was able to obtain the highest accuracy of 99.49%. The modified models obtained validation accuracies above 95%. The results prove that deep learning models such as the proposed model based on ResNet-18 can be deployed and can be crucial in battling the monkeypox virus. Since the used networks are optimized for efficiency, they can be used on performance limited devices such as smartphones with cameras. The addition of explainable artificial intelligence techniques LIME and GradCAM enables visual interpretation of the prediction made, helping health professionals using the model.

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基于深度学习的皮肤病变图像猴痘病毒检测
随着2022年下半年的到来,世界仍在从为期两年的新冠肺炎疫情中复苏。然而,在过去的三个月里,猴痘病毒(MPV)的爆发已导致5.2万例确诊病例和100多人死亡。这导致世界卫生组织宣布此次疫情为国际关注的突发公共卫生事件。如果疫情恶化,我们可能会看到猴痘病毒导致下一次全球大流行。由于猴痘会影响人体皮肤,因此可以通过定期成像来捕捉症状。这些图像的大样本可以用作基于机器学习的检测工具的训练数据集。使用普通相机捕捉感染者的皮肤图像并将其与计算机视觉模型进行对比是有益的。在这项研究中,我们使用深度学习从皮肤病变图像中诊断猴痘。使用公开的数据集,我们在五个预先训练的深度神经网络上测试了数据集:GoogLeNet、Places365 GoogLeNet、SqueezeNet、AlexNet和ResNet-18。进行Hyperparameter以选择最佳参数。性能指标如准确度、精密度、召回率、f1评分和AUC都被考虑在内。在上述模型中,ResNet18能够获得99.49%的最高准确度。修改后的模型获得了95%以上的验证准确度。结果证明,深度学习模型(如所提出的基于ResNet-18的模型)可以部署,并且在对抗猴痘病毒方面至关重要。由于使用的网络经过了效率优化,因此可以在性能有限的设备上使用,如带摄像头的智能手机。添加了可解释的人工智能技术LIME和GradCAM,可以对所做的预测进行可视化解释,帮助卫生专业人员使用该模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Medicine in Novel Technology and Devices
Medicine in Novel Technology and Devices Medicine-Medicine (miscellaneous)
CiteScore
3.00
自引率
0.00%
发文量
74
审稿时长
64 days
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