Zhao Xiaoqian, Lyu Long, Zhang Li
Department of Dermatology, The First Hospital of China Medical University, Shenyang, China.
Key Laboratory of Immunodermatology, Ministry of Education, and National Health Commission, National Joint Engineering Research Center for Theranostics of Immunological Skin Diseases, Shen Yang, China.
Front Microbiol. 2025 Aug 11;16:1627311. doi: 10.3389/fmicb.2025.1627311. eCollection 2025.
On July 23, 2022, the World Health Organization (WHO) officially declared the Mpox outbreak a "Public Health Emergency of International Concern" (PHEIC), highlighting the urgent need for effective prevention and control measures worldwide. To assist healthcare managers and medical professionals in efficiently and accurately identifying Mpox cases from similar conditions, this study proposes a lightweight deep learning model. The model uses EfficientNet as the backbone network and employs transfer learning techniques to transfer the pre-trained EfficientNet parameters, originally trained on the ImageNet dataset, into this model. This approach allows the model to have strong generalization capabilities while controlling the number of parameters and computational complexity. Experimental results show that, compared to existing advanced methods, the proposed method not only has a lower number of parameters (only 4.14 M), but also achieves optimal values in most performance metrics, including (95.92%), (95.69%), score (95.80%), (0.998), and (0.999). Furthermore, statistical analysis shows that the cross-validation results of this model have no significant differences ( > 0.05), which verifies the robustness of the method in Mpox identification task. Additionally, ablation experiments demonstrate that as the version of EfficientNet's expanded network increases, the model complexity rises, with performance showing a trend of initially increasing before decreasing. In conclusion, the model proposed in this study effectively balances model's complexity and inference accuracy. In practical applications, model selection should be based on the specific needs of decision-makers.
2022年7月23日,世界卫生组织(WHO)正式宣布猴痘疫情为“国际关注的突发公共卫生事件”(PHEIC),凸显了全球范围内采取有效防控措施的迫切需求。为协助医疗管理人员和医学专业人员从相似病症中高效准确地识别猴痘病例,本研究提出了一种轻量级深度学习模型。该模型以EfficientNet作为骨干网络,并采用迁移学习技术,将最初在ImageNet数据集上训练的预训练EfficientNet参数迁移到本模型中。这种方法使模型在控制参数数量和计算复杂度的同时具备强大的泛化能力。实验结果表明,与现有先进方法相比,所提方法不仅参数数量更少(仅414万个),而且在大多数性能指标上都达到了最优值,包括准确率(95.92%)、召回率(95.69%)、F1分数(95.80%)、精确率(0.998)和特异度(0.999)。此外,统计分析表明,该模型的交叉验证结果无显著差异(P>0.05),这验证了该方法在猴痘识别任务中的稳健性。另外,消融实验表明,随着EfficientNet扩展网络版本的增加,模型复杂度上升,性能呈现出先上升后下降的趋势。总之,本研究提出的模型有效地平衡了模型复杂度和推理准确率。在实际应用中,应根据决策者的具体需求选择模型。