Setegn Gizachew Mulu, Dejene Belayneh Endalamaw
Department of Computer Science, Debark University, Debark, Ethiopian, Ethiopia.
Department of Information Science, University of Gondar, Gondar, Ethiopian, Ethiopia.
BMC Infect Dis. 2025 Mar 26;25(1):419. doi: 10.1186/s12879-025-10738-4.
Monkeypox, a viral zoonotic disease, is an emerging global health concern, with rising incidence and outbreaks extending beyond its endemic regions in Central and, West Africa and the world. The disease transmits through contact with infected animals and humans, leading to fever, rash, and lymphadenopathy symptoms. Control efforts include surveillance, contact tracing, and vaccination campaigns; however, the increasing number of cases underscores the necessity for a coordinated global response to mitigate its impact. Since monkeypox has become a public health issue, new methods for efficiently identifying cases are required. The control of monkeypox infections depends on early detection and prediction. This study aimed to utilize Symptom-Based Detection of Monkeypox using a machine-learning approach.
This research presents a machine learning approach that integrates various Explainable Artificial Intelligence (XAI) to enhance the detection of monkeypox cases based on clinical symptoms, addressing the limitations of image-based diagnostic systems. In this study, we used a publicly available dataset from GitHub containing clinical features about monkeypox disease. The data have been analysed using Random Forest, Bagging, Gradient Boosting, CatBoost, XGBoost, and LGBMClassifier to develop a robust predictive model.
The study shows that machine learning models can accurately diagnose monkeypox based on symptoms like fever, rash, lymphadenopathy and other clinical symptoms. By using XAI techniques for feature importance, the approach not only achieved high accuracy but also provided transparency in decision-making. This integration of explainable Artificial intelligence (AI) enhances trust and allows healthcare professionals to understand predictions, leading to timely interventions and improved public health responses to monkeypox outbreaks. All Machine learning methods have been compared with the evaluation matrix. The best performance was for the LGBMClassifier, with an accuracy of 89.3%. In addition, multiple Explainable Techniques tools were used to help in examining and explaining the output of the LGBMClassifier model.
Our research shows that combining explainable techniques with AI models greatly enhances the accuracy of case detection and boosts the trust of medical professionals. These models result in directly involving the reader and health care professional in the decision-making process, making informed decisions, and efficiently allocating resources by providing insight into the decision-making process. In addition, this study underscores the potential of AI in public health surveillance, particularly in enhancing responses to emerging infectious diseases such as monkeypox.
猴痘是一种病毒性人畜共患病,已成为全球日益关注的健康问题,其发病率不断上升,疫情已蔓延至中非、西非等流行地区之外及全球其他地方。该疾病通过与受感染的动物和人类接触传播,会导致发热、皮疹和淋巴结病等症状。防控措施包括监测、接触者追踪和疫苗接种运动;然而,病例数量的增加凸显了全球协调应对以减轻其影响的必要性。自从猴痘成为一个公共卫生问题以来,需要新的方法来有效识别病例。猴痘感染的控制取决于早期检测和预测。本研究旨在利用基于症状的机器学习方法检测猴痘。
本研究提出了一种机器学习方法,该方法集成了各种可解释人工智能(XAI)技术,以基于临床症状增强猴痘病例的检测,解决基于图像的诊断系统的局限性。在本研究中,我们使用了来自GitHub的一个公开可用数据集,其中包含有关猴痘疾病的临床特征。已使用随机森林、装袋法、梯度提升、CatBoost、XGBoost和LightGBM分类器对数据进行分析,以开发一个强大的预测模型。
研究表明,机器学习模型可以根据发热、皮疹、淋巴结病等症状以及其他临床症状准确诊断猴痘。通过使用XAI技术来确定特征重要性,该方法不仅实现了高精度,还在决策过程中提供了透明度。这种可解释人工智能(AI)的整合增强了可信度,并使医疗保健专业人员能够理解预测结果,从而实现及时干预并改善对猴痘疫情的公共卫生应对措施。已将所有机器学习方法与评估矩阵进行比较。性能最佳的是LightGBM分类器,准确率为89.3%。此外,还使用了多种可解释技术工具来帮助检查和解释LightGBM分类器模型的输出。
我们的研究表明,将可解释技术与人工智能模型相结合可大大提高病例检测的准确性,并增强医学专业人员的信任。这些模型可使读者和医疗保健专业人员直接参与决策过程,通过深入了解决策过程做出明智决策并有效分配资源。此外,本研究强调了人工智能在公共卫生监测中的潜力,特别是在加强对猴痘等新发传染病的应对方面。