Department of Otolaryngology-Head and Neck Surgery, Stanford University School of Medicine, 801 Welch Road, Palo Alto, CA, 94304, USA.
Institute of Metrology and Biomedical Engineering, Faculty of Mechatronics, Warsaw University of Technology, Warsaw, Poland.
Sci Rep. 2021 Jun 15;11(1):12509. doi: 10.1038/s41598-021-91736-9.
Otitis media, a common disease marked by the presence of fluid within the middle ear space, imparts a significant global health and economic burden. Identifying an effusion through the tympanic membrane is critical to diagnostic success but remains challenging due to the inherent limitations of visible light otoscopy and user interpretation. Here we describe a powerful diagnostic approach to otitis media utilizing advancements in otoscopy and machine learning. We developed an otoscope that visualizes middle ear structures and fluid in the shortwave infrared region, holding several advantages over traditional approaches. Images were captured in vivo and then processed by a novel machine learning based algorithm. The model predicts the presence of effusions with greater accuracy than current techniques, offering specificity and sensitivity over 90%. This platform has the potential to reduce costs and resources associated with otitis media, especially as improvements are made in shortwave imaging and machine learning.
中耳炎是一种常见疾病,其特征是中耳腔内存在液体,给全球健康和经济带来了重大负担。通过鼓膜识别积液对诊断成功至关重要,但由于可见光耳镜和用户解释的固有局限性,这仍然具有挑战性。在这里,我们描述了一种利用耳镜和机器学习进展的强大中耳炎诊断方法。我们开发了一种可以在短波红外区域可视化中耳结构和液体的耳镜,与传统方法相比具有多个优势。图像在体内捕获,然后由基于新型机器学习的算法进行处理。该模型预测积液的存在比当前技术更准确,特异性和敏感性超过 90%。随着短波成像和机器学习的改进,该平台有可能降低与中耳炎相关的成本和资源。