基于集成卷积神经网络的中耳胆脂瘤计算机辅助诊断模型

Q4 Medicine
Y T Zhao, R X Ma, H L Ren, N Y Feng, N Zhang, L Wang, Y C Li, X L Shen, J He
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引用次数: 0

摘要

目的:中耳胆脂瘤是一种常见的耳鼻喉科疾病,传统的诊断方法存在一定的局限性。本研究旨在构建基于集成卷积神经网络(cnn)的中耳胆脂瘤计算机辅助诊断模型,以提高诊断准确率和效率。方法:首先,收集2020年1月至2021年12月银川市第一人民医院耳鼻咽喉头颈外科就诊的患者数据。收集颞骨CT图像8 000张,其中病理诊断为中耳胆脂瘤5 000张,正常3 000张。采用五重交叉验证方法将数据集划分为训练集和测试集。接下来,使用迁移学习方法初始化模型参数,并对AlexNet、GoogleNet和ResNet网络进行预训练,从图像中提取深度特征。然后,应用Softmax分类算法对特征进行分类,得到三个独立的分类器。这些分类器使用集成学习方法与加权投票方法相结合,以获得最终的诊断结果。最后,通过将集成分类器与个体分类器进行比较,评估其准确性、精密度、敏感性、特异性和诊断时间,并与中低、高经验医师组进行比较,综合评估模型的诊断性能。结果:实验结果表明,该模型准确率为88.8%(178/200),精密度为92.9%,灵敏度为89.8%(108/120),特异性为88.1%(70/80)。单个患者颞骨CT图像的平均诊断时间缩短至2-3秒。与中低、高经验医师组的诊断结果相比,该模型显示出明显的优势,能够有效地帮助临床医生快速准确地诊断中耳胆脂瘤。结论:所建立的基于集成卷积神经网络的中耳胆脂瘤诊断模型识别准确率高,诊断速度快,显著提高了临床诊断效率,特别是在早期筛查和辅助诊断方面,具有相当的临床应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[The computer-aided diagnosis model of middle ear cholesteatoma based on integrated convolutional neural networks].

Objective: Middle ear cholesteatoma is a common otolaryngological disease, and traditional diagnostic methods have certain limitations. This study aims to construct a computer-aided diagnosis model for middle ear cholesteatoma based on integrated convolutional neural networks (CNNs) to improve diagnostic accuracy and efficiency. Methods: Firstly, Data were collected from patients who visited the Department of Otorhinolaryngology Head and Neck Surgery at the First People's Hospital of Yinchuan between January 2020 and December 2021. 8 000 temporal bone CT images were collected, including 5 000 images diagnosed pathologically as middle ear cholesteatoma and 3 000 normal images. A five-fold cross-validation method was used to divide the dataset into training and testing sets. Next, a transfer learning approach was used to initialize model parameters, and the AlexNet, GoogleNet, and ResNet networks were pre-trained to extract deep features from the images. Then, the Softmax classification algorithm was applied to classify the features, resulting in three independent classifiers. These classifiers were combined using an ensemble learning method with a weighted voting approach to obtain the final diagnostic results. Finally, the model was evaluated by comparing the ensemble classifier with individual classifiers to assess its accuracy, precision, sensitivity, specificity, and diagnostic time, and a comparison with low-mid-and high-experience physician groups was conducted to comprehensively evaluate the model's diagnostic performance. Results: The experimental results showed that the model achieved an accuracy of 88.8%(178/200), precision of 92.9%,(112/120) sensitivity of 89.8%(108/120), and specificity of 88.1%(70/80). The average diagnostic time for individual patient temporal bone CT images was reduced to 2-3 seconds. Compared to the diagnostic results from low-mid-and high-experience physician groups, the model demonstrated significant advantages and effectively assisted clinicians in making rapid and accurate middle ear cholesteatoma diagnoses. Conclusion: The proposed middle ear cholesteatoma diagnostic model based on integrated convolutional neural networks exhibits high recognition accuracy and rapid diagnostic speed, significantly improving clinical diagnostic efficiency, especially in early screening and auxiliary diagnosis, making it of considerable value in clinical practice.

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来源期刊
CiteScore
0.40
自引率
0.00%
发文量
12432
期刊介绍: Chinese journal of otorhinolaryngology head and neck surgery is a high-level medical science and technology journal sponsored and published directly by the Chinese Medical Association, reflecting the significant research progress in the field of otorhinolaryngology head and neck surgery in China, and striving to promote the domestic and international academic exchanges for the purpose of running the journal. Over the years, the journal has been ranked first in the total citation frequency list of national scientific and technical journals published by the Documentation and Intelligence Center of the Chinese Academy of Sciences and the China Science Citation Database, and has always ranked first among the scientific and technical journals in the related fields. Chinese journal of otorhinolaryngology head and neck surgery has been included in the authoritative databases PubMed, Chinese core journals, CSCD.
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