Park Yong Soon, Jeon Jun Ho, Kong Tae Hoon, Chung Tae Yun, Seo Young Joon
Gang-won Research Institute of ICT Convergence, Gangneung-Wonju National University, Gangneung, Korea.
Department of Otorhinolaryngology, Yonsei University Wonju College of Medicine, Wonju, Korea.
Clin Exp Otorhinolaryngol. 2023 Feb;16(1):28-36. doi: 10.21053/ceo.2022.00675. Epub 2022 Oct 31.
Otitis media is a common infection worldwide. Owing to the limited number of ear specialists and rapid development of telemedicine, several trials have been conducted to develop novel diagnostic strategies to improve the diagnostic accuracy and screening of patients with otologic diseases based on abnormal otoscopic findings. Although these strategies have demonstrated high diagnostic accuracy for the tympanic membrane (TM), the insufficient explainability of these techniques limits their deployment in clinical practice.
We used a deep convolutional neural network (CNN) model based on the segmentation of a normal TM into five substructures (malleus, umbo, cone of light, pars flaccida, and annulus) to identify abnormalities in otoscopic ear images. The mask R-CNN algorithm learned the labeled images. Subsequently, we evaluated the diagnostic performance of combinations of the five substructures using a three-layer fully connected neural network to determine whether ear disease was present.
We obtained the receiver operating characteristic (ROC) curve of the optimal conditions for the presence or absence of eardrum diseases according to each substructure separately or combinations of substructures. The highest area under the curve (0.911) was found for a combination of the malleus, cone of light, and umbo, compared with the corresponding areas under the curve of 0.737-0.873 for each substructure. Thus, an algorithm using these five important normal anatomical structures could prove to be explainable and effective in screening abnormal TMs.
This automated algorithm can improve diagnostic accuracy by discriminating between normal and abnormal TMs and can facilitate appropriate and timely referral consultations to improve patients' quality of life in the context of primary care.
中耳炎是一种全球常见的感染性疾病。由于耳部专科医生数量有限以及远程医疗的迅速发展,已开展了多项试验以开发新的诊断策略,从而基于耳镜检查异常结果提高耳科疾病患者的诊断准确性和筛查效率。尽管这些策略已证明对鼓膜(TM)具有较高的诊断准确性,但这些技术的解释性不足限制了它们在临床实践中的应用。
我们使用了一种深度卷积神经网络(CNN)模型,该模型基于将正常鼓膜分割为五个子结构(锤骨、鼓膜脐、光锥、松弛部和鼓环)来识别耳镜图像中的异常情况。掩膜区域卷积神经网络(Mask R-CNN)算法学习标记图像。随后,我们使用三层全连接神经网络评估这五个子结构组合的诊断性能,以确定是否存在耳部疾病。
我们分别根据每个子结构或子结构组合获得了鼓膜疾病存在与否的最佳条件下的受试者操作特征(ROC)曲线。锤骨、光锥和鼓膜脐组合的曲线下面积最高(0.911),相比之下,每个子结构的曲线下面积为0.737 - 0.873。因此,使用这五个重要正常解剖结构的算法在筛查异常鼓膜方面可能具有可解释性且有效。
这种自动化算法可以通过区分正常和异常鼓膜来提高诊断准确性,并有助于在初级保健背景下进行适当及时的转诊咨询,以改善患者的生活质量。