Deep learning for automated diagnosis and differentiation of otitis media on temporal bone CT.

IF 3.2 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yong Tang, Weixuan Fan, Zhitao Cheng, Yanlin Leng, Yuhang Liu, Tingfang Wu, Song Su, Jing Fei, Leiji Li
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引用次数: 0

Abstract

Background: The accurate diagnosis of otitis media (OM) has long been a challenge for clinicians (especially for less experienced clinicians) due to the variety of types and the complex anatomical structures of the middle ear. Although deep learning (DL) based on different examination methods (mostly otoscopy) has been applied to the diagnosis of single species OM in previous studies, DL using temporal bone computed tomography (TBCT) images to diagnose OM and simultaneously differentiate between chronic otitis media (COM) and otitis media with effusion (OME) has not been investigated in depth. This study aimed to develop and evaluate a DL framework for the automated diagnosis of OM and identifying OME and COM with or without cholesteatoma using TBCT images.

Methods: Our team created a unique large dataset of 2011 TBCT images from 1200 patients who were diagnosed with OM, which was determined the regions of interest (ROI) for middle ear (ME) by experienced experts. Then, a DL model was trained to detect the MEs in TBCT images and determine the OM status with this dataset of pre-processed images. Five-fold cross-validation was utilized for training and selecting the models. Finally, we evaluated the model using 406 images and verified the effectiveness of model-assisted diagnosis for different levels of clinicians in a comparative study.

Results: In the detection of the ME, the DL model achieved a detection ratio of 98.53%. The model showed satisfying performance in the classification of normal middle ear (NME), OME, and COM with an accuracy of 0.9238. With the assistance of the DL, the diagnostic accuracies were significantly improved from 81.53% to 93.60% (junior clinician) and from 87.93% to 95.57% (senior clinician), respectively.

Conclusions: The findings suggested that the DL model could accurately identify MEs in TBCT images and classify NME, OME, and COM with satisfying accuracy. DL could also effectively assist clinicians in TBCT interpretation for OM diagnosis.

颞骨CT中耳炎的深度学习自动诊断与鉴别。
背景:中耳炎(otitis media, OM)类型多样,且中耳解剖结构复杂,因此准确诊断中耳炎一直是临床医生(尤其是经验不足的临床医生)面临的挑战。虽然以往的研究已将基于不同检查方法(主要是耳镜检查)的深度学习(DL)应用于单一种类OM的诊断,但利用颞骨计算机断层扫描(TBCT)图像进行深度学习诊断OM并同时区分慢性中耳炎(COM)和积液性中耳炎(OME)的研究尚未深入。本研究旨在开发和评估一种DL框架,用于OM的自动诊断,并使用TBCT图像识别OME和COM伴或不伴胆脂瘤。方法:我们的团队创建了一个独特的大数据集,其中包括1200例诊断为OM的患者的2011年TBCT图像,由经验丰富的专家确定中耳(ME)的感兴趣区域(ROI)。然后,训练DL模型检测TBCT图像中的MEs,并利用该预处理图像数据集确定OM状态。采用五重交叉验证对模型进行训练和选择。最后,我们使用406张图像对模型进行了评估,并通过对比研究验证了模型辅助诊断对不同水平临床医生的有效性。结果:在ME的检测中,DL模型的检出率达到了98.53%。该模型对正常中耳(NME)、中耳(OME)和中耳(COM)的分类准确率为0.9238,具有较好的分类效果。在DL的帮助下,诊断准确率从初级临床医生的81.53%提高到93.60%,从高级临床医生的87.93%提高到95.57%。结论:DL模型能准确识别TBCT图像中的MEs,并对NME、OME和COM进行分类,准确率令人满意。DL也能有效地协助临床医生在诊断OM时进行TBCT解读。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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