Application of Deep Learning Algorithms Based on the Multilayer Y0L0v8 Neural Network to Identify Fungal Keratitis.

Sovremennye tekhnologii v meditsine Pub Date : 2024-01-01 Epub Date: 2024-08-30 DOI:10.17691/stm2024.16.4.01
A V Sitnova, E R Valitov, S N Svetozarskiy
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引用次数: 0

Abstract

The aim of the study is to develop a method for diagnosing fungal keratitis based on the analysis of photographs of the anterior segment of the eye using deep learning algorithms with subsequent evaluation of sensitivity and specificity of the method on a test data set in comparison with the results of practicing ophthalmologists.

Materials and methods: The study has included the stages of data acquisition, image pre-training and markup, selection of training approach and neural network architecture, training with input data augmentation, validation with hyperparameter correction, evaluation of algorithm performance on a test sample, and determination of sensitivity and specificity of fungal keratitis detection by practicing doctors. A total of 274 anterior segment images were used, including 130 photographs of the eyes affected by fungal keratitis and 144 photographs illustrating normal eyes, keratitis of other etiologies, and various anterior segment pathologies. Photographs taken after the treatment onset, illustrations of keratitis of mixed etiology and corneal perforation were excluded from the study. Images of the training sample were marked up using the VGG Image Annotator web application and then used to train the YOLOv8 convolutional neural network. Images from the test data set were also offered to practicing ophthalmologists to determine the diagnostic accuracy of fungal keratitis.

Results: The sensitivity of the model was 56.0%, the specificity level reached 96.1%, and the proportion of correct answers of the algorithm was 76.5%. The accuracy of image recognition by practicing ophthalmologists was 50.0%, specificity - 41.7%, sensitivity - 57.7%.

Conclusion: The study showed the high potential of deep learning algorithms in the diagnosis of fungal keratitis and its advantages in accuracy compared to expert judgment in the absence of metadata. The use of computer vision technologies may find application as a complementary diagnostic method in decision making in complex cases and in telemedicine care settings. Further research is required to compare the developed model with alternative approaches, to expand and standardize databases.

本研究的目的是利用深度学习算法,在分析眼球前段照片的基础上,开发一种诊断真菌性角膜炎的方法,随后在测试数据集上评估该方法的灵敏度和特异性,并与眼科医生的实践结果进行比较:研究包括数据采集、图像预训练和标记、选择训练方法和神经网络架构、输入数据增强训练、超参数校正验证、在测试样本上评估算法性能以及确定执业医生检测真菌性角膜炎的灵敏度和特异性等阶段。共使用了 274 张眼前节图像,包括 130 张受真菌性角膜炎影响的眼睛照片和 144 张说明正常眼睛、其他病因引起的角膜炎以及各种眼前节病变的照片。研究不包括治疗开始后拍摄的照片、混合病因角膜炎和角膜穿孔的图片。使用 VGG 图像注释器网络应用程序对训练样本的图像进行标记,然后用于训练 YOLOv8 卷积神经网络。测试数据集中的图像也提供给了执业眼科医生,以确定真菌性角膜炎的诊断准确性:结果:模型的灵敏度为 56.0%,特异度达到 96.1%,算法的正确答案比例为 76.5%。眼科医生的图像识别准确率为 50.0%,特异性为 41.7%,灵敏度为 57.7%:该研究表明,深度学习算法在诊断真菌性角膜炎方面潜力巨大,在缺乏元数据的情况下,其准确性比专家判断更具优势。计算机视觉技术可作为一种辅助诊断方法,应用于复杂病例的决策和远程医疗护理环境中。还需要进一步研究,将所开发的模型与其他方法进行比较,扩大数据库并使其标准化。
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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