Mao Chenggang, Li Aimin, Hu Jing, Wang Pengjun, Peng Dan, Wang Juehui, Sun Yi
Department of Otolaryngology Head and Neck Surgery, Jingzhou Hospital Affiliated to Yangtze University, Jingzhou, Hubei, China.
Department of Pediatrics, Jingzhou Hospital Affiliated to Yangtze University, Jingzhou, Hubei, China.
Front Mol Biosci. 2022 Aug 19;9:951432. doi: 10.3389/fmolb.2022.951432. eCollection 2022.
Otomycosis accounts for over 15% of cases of external otitis worldwide. It is common in humid regions and Chinese cultures with ear-cleaning custom. and are the major pathogens causing long-term infection. Early endoscopic and microbiological examinations, performed by otologists and microbiologists, respectively, are important for the appropriate medical treatment of otomycosis. The deep-learning model is a novel automatic diagnostic program that provides quick and accurate diagnoses using a large database of images acquired in clinical settings. The aim of the present study was to introduce a machine-learning model to accurately and quickly diagnose otomycosis caused by and . We propose a computer-aided decision-making system based on a deep-learning model comprising two subsystems: Java web application and image classification. The web application subsystem provides a user-friendly webpage to collect consulted images and display the calculation results. The image classification subsystem mainly trained neural network models for end-to-end data inference. The end user uploads a few images obtained with the ear endoscope, and the system returns the classification results to the user in the form of category probability values. To accurately diagnose otomycosis, we used otoendoscopic images and fungal culture secretion. Fungal fluorescence, culture, and DNA sequencing were performed to confirm the pathogens or spp. In addition, impacted cerumen, external otitis, and normal external auditory canal endoscopic images were retained for reference. We merged these four types of images into an otoendoscopic image gallery. To achieve better accuracy and generalization abilities after model-training, we selected 2,182 of approximately 4,000 ear endoscopic images as training samples and 475 as validation samples. After selecting the deep neural network models, we tested the ResNet, SENet, and EfficientNet neural network models with different numbers of layers. Considering the accuracy and operation speed, we finally chose the EfficientNetB6 model, and the probability values of the four categories of otomycosis, impacted cerumen, external otitis, and normal cases were outputted. After multiple model training iterations, the average accuracy of the overall validation sample reached 92.42%. The results suggest that the system could be used as a reference for general practitioners to obtain more accurate diagnoses of otomycosis.
外耳道真菌病占全球外耳道炎病例的15%以上。在潮湿地区以及有耳部清洁习俗的中国文化中较为常见。 和 是导致长期感染的主要病原体。分别由耳科医生和微生物学家进行的早期内镜检查和微生物学检查,对外耳道真菌病的恰当药物治疗很重要。深度学习模型是一种新颖的自动诊断程序,它利用临床环境中获取的大量图像数据库提供快速准确的诊断。本研究的目的是引入一种机器学习模型,以准确快速地诊断由 和 引起的外耳道真菌病。我们提出了一种基于深度学习模型的计算机辅助决策系统,该系统由两个子系统组成:Java Web应用程序和图像分类。Web应用程序子系统提供一个用户友好的网页,用于收集咨询图像并显示计算结果。图像分类子系统主要训练神经网络模型以进行端到端的数据推理。最终用户上传几张通过耳内镜获得的图像,系统以类别概率值的形式将分类结果返回给用户。为了准确诊断外耳道真菌病,我们使用了耳内镜图像和真菌培养分泌物。进行真菌荧光、培养和DNA测序以确认病原体 或 属。此外,保留了耵聍栓塞、外耳道炎和正常外耳道内镜图像以供参考。我们将这四种类型的图像合并成一个耳内镜图像库。为了在模型训练后获得更好的准确性和泛化能力,我们从大约4000张耳内镜图像中选择了2182张作为训练样本,475张作为验证样本。在选择了深度神经网络模型后,我们测试了不同层数的ResNet、SENet和EfficientNet神经网络模型。考虑到准确性和运算速度,我们最终选择了EfficientNetB6模型,并输出了外耳道真菌病、耵聍栓塞、外耳道炎和正常病例这四类的概率值。经过多次模型训练迭代,整个验证样本的平均准确率达到了92.42%。结果表明,该系统可作为全科医生获得更准确的外耳道真菌病诊断的参考。