[Performance evaluation results of an artificial neural network developed for the purpose of classifying otoendoscopic images].

Q3 Medicine
A I Kryukov, E V Garov, P A Sudarev, V N Zelenkova, V E Kiselyus, N G Shevyrina, V A Korotaeva, U E Petrashko
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引用次数: 0

Abstract

The article describes an attempt to implement an automated approach in the diagnosis of ear diseases using a convolutional neural network. In the course of the work, a dataset consisting of 8791 images obtained during human otoendoscopic examination was formed, labelled and uploaded. The neural network was trained and tested. To organize the work of the algorithm, a tree of diagnoses was created and classes of images were defined: normal, defect of the unstretched section of the tympanic membrane, adhesive otitis media, foreign body of the external auditory canal, neotympanic membrane, sulfur plug, shunt, exudative otitis media, exostoses and neoplasms of the external auditory canal, diffuse otitis media, defect of the unstretched section of the tympanic membrane. The developed and trained artificial neural network demonstrated an accuracy of 91.2% in recognising different nosological classes related to the middle ear and diseases of external auditory canal. The proposed technology can be further used in medical practice to control and improve the quality of diagnostics of ear pathologies.

[用于耳内窥镜图像分类的人工神经网络的性能评估结果]。
本文描述了使用卷积神经网络实现耳部疾病诊断的自动化方法的尝试。在工作过程中,形成了一个由人类耳内窥镜检查期间获得的8791张图像组成的数据集,并对其进行了标记和上传。对神经网络进行了训练和测试。为了组织算法的工作,我们创建了一个诊断树,并定义了图像的分类:正常、鼓膜未拉伸部分缺损、粘连性中耳炎、外耳道异物、新鼓膜、苏塞、分流、渗出性中耳炎、外耳道外生瘤和肿瘤、弥漫性中耳炎、鼓膜未拉伸部分缺损。开发和训练的人工神经网络在识别与中耳和外耳道疾病相关的不同病种分类方面的准确率为91.2%。该技术可进一步应用于医学实践,以控制和提高耳部病理诊断的质量。
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
Vestnik otorinolaringologii
Vestnik otorinolaringologii Medicine-Otorhinolaryngology
CiteScore
0.80
自引率
0.00%
发文量
69
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