基于舌象的机器学习诊断急性呼吸道感染:算法开发与验证
Tongue Image-Based Diagnosis of Acute Respiratory Tract Infection Using Machine Learning: Algorithm Development and Validation.
作者信息
Che Qianzi, Leng Yuanming, Yang Wei, Cao Xihao, Wang Zhongxia, Liu Lizheng, Xie Feibiao, Wang Ruilin
机构信息
Institute of Clinical Basic Medicine of Chinese Medicine, Chinese Academy of Traditional Chinese Medicine, No.16, Nanxiao street, Dongzhimen, Dongcheng District, Beijing, 100700, China.
Department of Biostatistics, School of Public Health, Boston University, Boston, MA, United States.
出版信息
JMIR Med Inform. 2025 Aug 25;13:e74102. doi: 10.2196/74102.
BACKGROUND
Human adenoviruses (HAdVs) and COVID-19 are prominent respiratory pathogens with overlapping clinical presentations, including fever, cough, and sore throat, posing significant diagnostic challenges without viral testing. Tongue image diagnosis, a noninvasive method used in traditional Chinese medicine, has shown correlations with specific respiratory infections, but its application remains underexplored in differentiating HAdVs from COVID-19. Advances in artificial intelligence offer opportunities to enhance tongue image analysis for more objective and accurate diagnostics.
OBJECTIVE
This study aims to develop and validate artificial intelligence-based predictive models using tongue image features to differentiate COVID-19 from adenoviral respiratory infections, thereby improving diagnostic accuracy and integrating traditional diagnostic methods with modern medical technologies.
METHODS
A total of 280 tongue images were collected from 58 patients with COVID-19, 84 patients with HAdVs, and 30 healthy controls. Deep learning methods were applied to extract tongue features, including color, coating, fissures, papillae, tooth marks, and granules. Four machine learning classifiers, logistic regression, random forest, gradient boosting model, and extreme gradient boosting, were developed to differentiate COVID-19 and HAdV infections. The key features identified by the machine learning algorithms were further visualized in a 2D space.
RESULTS
Nine tongue features showed significant differences among groups (all P<.05), including coating color (red, green, and blue), presence of tooth marks, coating crack ratio, moisture level, texture directionality, roughness, and contrast. The extreme gradient boosting model achieved the highest diagnostic performance with an area under the receiver operating characteristic curve of 0.84 (95% CI 0.78-0.90) and an area under the precision-recall curve above 0.70. Shapley additive explanations analysis indicated tongue color, moisture, and texture as key contributors.
CONCLUSIONS
Our findings demonstrate the potential of tongue diagnosis in identifying pathogens responsible for acute respiratory tract infections at the time of admission. This approach holds significant clinical implications, offering the potential to reduce clinician workloads while improving diagnostic accuracy and the overall quality of medical care.
背景
人腺病毒(HAdVs)和新型冠状病毒肺炎(COVID-19)是主要的呼吸道病原体,临床表现重叠,包括发热、咳嗽和咽痛,在未进行病毒检测的情况下带来了重大诊断挑战。舌象诊断是中医使用的一种非侵入性方法,已显示出与特定呼吸道感染的相关性,但其在区分HAdVs与COVID-19方面的应用仍未得到充分探索。人工智能的进展为增强舌象分析以实现更客观准确的诊断提供了机会。
目的
本研究旨在开发并验证基于人工智能的预测模型,利用舌象特征区分COVID-19与腺病毒呼吸道感染,从而提高诊断准确性,并将传统诊断方法与现代医学技术相结合。
方法
共收集了来自58例COVID-19患者、84例HAdVs患者和30名健康对照的280张舌象图片。应用深度学习方法提取舌象特征,包括颜色、苔质、裂纹、乳头、齿痕和颗粒。开发了四种机器学习分类器,即逻辑回归、随机森林、梯度提升模型和极端梯度提升,以区分COVID-19和HAdV感染。机器学习算法识别出的关键特征在二维空间中进一步可视化。
结果
九个舌象特征在各组之间显示出显著差异(均P<0.05),包括苔色(红、绿和蓝)、齿痕的存在、苔裂纹比例、湿度水平、纹理方向性、粗糙度和对比度。极端梯度提升模型实现了最高的诊断性能,受试者操作特征曲线下面积为0.84(95%CI 0.78-0.90),精确召回率曲线下面积高于0.70。夏普利值分析表明舌色、湿度和纹理是关键因素。
结论
我们的研究结果证明了舌诊在入院时识别急性呼吸道感染病原体方面的潜力。这种方法具有重要的临床意义,有可能减少临床医生的工作量,同时提高诊断准确性和医疗服务的整体质量。
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