基于深度学习和多元数据集注意力模型的猴痘病增强诊断

Shivangi Surati, Himani Trivedi, B. Shrimali, Chintan M. Bhatt, C. Travieso-González
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引用次数: 0

摘要

随着猴痘的广泛传播和每周报告病例数的增加,观察到这一疫情继续使人类处于危险之中。这种疾病的早期发现和报告将有助于监测和控制其传播,从而支持为此进行的国际协调。为此,本文的目的是基于提供的图像数据集,使用训练好的独立深度学习模型(InceptionV3, EfficientNet, VGG16)和Squeeze and Excitation Network (SENet) Attention model对猴痘、水痘和麻疹三种疾病进行分类。实现这种方法的第一步是搜索、收集和聚合(如果需要的话)经过验证的现有数据集。据我们所知,这是第一篇提出在猴痘分类任务中使用基于SENet的注意力模型的论文,并且还旨在聚合来自不同来源的两个不同数据集,以提高性能参数。未开发的SENet注意力体系结构与InceptionV3 (SENet+InceptionV3)、EfficientNet (SENet+EfficientNet)和VGG16 (SENet+VGG16)的主干分支相结合,这些体系结构显著提高了猴痘分类任务的准确性。在三个数据集上的综合实验表明,本文所提出的方法在准确率、精密度、召回率和f1分数方面都取得了相当高的结果,从而提高了分类的整体性能。因此,提出的研究工作有利于加强猴痘的诊断和分类,可以进一步利用卫生保健专家和研究人员来应对其蔓延。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Enhanced Diagnosis of Monkeypox Disease Using Deep Learning and a Novel Attention Model Senet on Diversified Dataset
With the widespread of Monkeypox and increase in the weekly reported number of cases, it is observed that this outbreak continues to put the human beings in risk. The early detection and reporting of this disease will help monitoring and controlling the spread of it and hence, supporting international coordination for the same. For this purpose, the aim of this paper is to classify three diseases viz. Monkeypox, Chikenpox and Measles based on provided image dataset using trained standalone DL models (InceptionV3, EfficientNet, VGG16) and Squeeze and Excitation Network (SENet) Attention model. The first step to implement this approach is to search, collect and aggregate (if require) verified existing dataset(s). To the best of our knowledge, this is the first paper which has proposed the use of SENet based attention models in the classification task of Monkeypox and also targets to aggregate two different datasets from distinct sources in order to improve the performance parameters. The unexplored SENet attention architecture is incorporated with the trunk branch of InceptionV3 (SENet+InceptionV3), EfficientNet (SENet+EfficientNet) and VGG16 (SENet+VGG16) and these architectures improve the accuracy of the Monkeypox classification task significantly. Comprehensive experiments on three datasets depict that the proposed work achieves considerably high results with regard to accuracy, precision, recall and F1-score and hence, improving the overall performance of classification. Thus, the proposed research work is advantageous in enhanced diagnosis and classification of Monkeypox that can be utilized further by healthcare experts and researchers to confront its outspread.
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