AES-CSFS:基于深度学习的角膜荧光素钠染色自动评价系统。

IF 3.3 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Shaopan Wang, Jiezhou He, Xin He, Yuwen Liu, Xiang Lin, Changsheng Xu, Linfangzi Zhu, Jie Kang, Yuqian Wang, Yong Li, Shujia Guo, Yunuo Zhang, Zhiming Luo, Zuguo Liu
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引用次数: 2

摘要

背景:角膜荧光素钠染色是一种有价值的诊断各种眼表疾病的方法。然而,检查结果在很大程度上取决于眼科医生的主观经验。目的:开发一种基于深度学习的人工智能系统,为角膜上皮斑状缺损的荧光素钠染色评分和大小提供准确的定量评估。设计:前瞻性研究。方法:提出了一种基于角膜荧光素钠染色图像的人工智能系统,用于自动评估角膜染色评分和准确测量斑块性角膜上皮缺陷。该设计结合了两个分割模型和一个分类模型来预测和评估染色图像。同时,我们比较评估结果从系统与不同专业知识的眼科医生。结果:对于角膜边界和角膜上皮斑状缺陷区域的分割任务,与手工标记的金标准相比,我们提出的方法可以实现骰子相似系数(DSC)为0.98/0.97,豪斯多夫距离(HD)为3.60/8.39的性能。该方法明显优于四种主流算法(Unet、Unet++、swan -Unet和TransUnet)。对于分类任务,我们的算法在准确率、查全率和f1分数上的表现最好,分别为91.2%、78.6%和79.2%。我们开发的系统在分类任务方面的性能超过了7种不同的方法(Inception, ShuffleNet, Xception, EfficientNet_B7, DenseNet, ResNet和VIT)。此外,选择三名眼科医生对角膜染色图像进行评分。结果表明,我们的人工智能系统的表现明显优于初级医生。结论:该系统为角膜荧光素染色提供了一种很有前景的自动化评估方法,减少了因眼科医生主观差异和知识有限而导致的不正确评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

AES-CSFS: an automatic evaluation system for corneal sodium fluorescein staining based on deep learning.

AES-CSFS: an automatic evaluation system for corneal sodium fluorescein staining based on deep learning.

AES-CSFS: an automatic evaluation system for corneal sodium fluorescein staining based on deep learning.

AES-CSFS: an automatic evaluation system for corneal sodium fluorescein staining based on deep learning.

Background: Corneal fluorescein sodium staining is a valuable diagnostic method for various ocular surface diseases. However, the examination results are highly dependent on the subjective experience of ophthalmologists.

Objectives: To develop an artificial intelligence system based on deep learning to provide an accurate quantitative assessment of sodium fluorescein staining score and the size of cornea epithelial patchy defect.

Design: A prospective study.

Methods: We proposed an artificial intelligence system for automatically evaluating corneal staining scores and accurately measuring patchy corneal epithelial defects based on corneal fluorescein sodium staining images. The design incorporates two segmentation models and a classification model to forecast and assess the stained images. Meanwhile, we compare the evaluation findings from the system with ophthalmologists with varying expertise.

Results: For the segmentation task of cornea boundary and cornea epithelial patchy defect area, our proposed method can achieve the performance of dice similarity coefficient (DSC) is 0.98/0.97 and Hausdorff distance (HD) is 3.60/8.39, respectively, when compared with the manually labeled gold standard. This method significantly outperforms the four leading algorithms (Unet, Unet++, Swin-Unet, and TransUnet). For the classification task, our algorithm achieves the best performance in accuracy, recall, and F1-score, which are 91.2%, 78.6%, and 79.2%, respectively. The performance of our developed system exceeds seven different approaches (Inception, ShuffleNet, Xception, EfficientNet_B7, DenseNet, ResNet, and VIT) in classification tasks. In addition, three ophthalmologists were selected to rate corneal staining images. The results showed that the performance of our artificial intelligence system significantly outperformed the junior doctors.

Conclusion: The system offers a promising automated assessment method for corneal fluorescein staining, decreasing incorrect evaluations caused by ophthalmologists' subjective variance and limited knowledge.

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来源期刊
Therapeutic Advances in Chronic Disease
Therapeutic Advances in Chronic Disease Medicine-Medicine (miscellaneous)
CiteScore
6.20
自引率
0.00%
发文量
108
审稿时长
12 weeks
期刊介绍: Therapeutic Advances in Chronic Disease publishes the highest quality peer-reviewed research, reviews and scholarly comment in the drug treatment of all chronic diseases. The journal has a strong clinical and pharmacological focus and is aimed at clinicians and researchers involved in the medical treatment of chronic disease, providing a forum in print and online for publishing the highest quality articles in this area.
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