School of Information Engineering, Huzhou University, Huzhou 313000, China.
Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou University, Huzhou 313000, China.
Dis Markers. 2021 Jul 29;2021:7651462. doi: 10.1155/2021/7651462. eCollection 2021.
The lack of primary ophthalmologists in China results in the inability of basic-level hospitals to diagnose pterygium patients. To solve this problem, an intelligent-assisted lightweight pterygium diagnosis model based on anterior segment images is proposed in this study.
Pterygium is a common and frequently occurring disease in ophthalmology, and fibrous tissue hyperplasia is both a diagnostic biomarker and a surgical biomarker. The model diagnosed pterygium based on biomarkers of pterygium. First, a total of 436 anterior segment images were collected; then, two intelligent-assisted lightweight pterygium diagnosis models (MobileNet 1 and MobileNet 2) based on raw data and augmented data were trained via transfer learning. The results of the lightweight models were compared with the clinical results. The classic models (AlexNet, VGG16 and ResNet18) were also used for training and testing, and their results were compared with the lightweight models. A total of 188 anterior segment images were used for testing. Sensitivity, specificity, F1-score, accuracy, kappa, area under the concentration-time curve (AUC), 95% CI, size, and parameters are the evaluation indicators in this study.
There are 188 anterior segment images that were used for testing the five intelligent-assisted pterygium diagnosis models. The overall evaluation index for the MobileNet2 model was the best. The sensitivity, specificity, F1-score, and AUC of the MobileNet2 model for the normal anterior segment image diagnosis were 96.72%, 98.43%, 96.72%, and 0976, respectively; for the pterygium observation period anterior segment image diagnosis, the sensitivity, specificity, F1-score, and AUC were 83.7%, 90.48%, 82.54%, and 0.872, respectively; for the surgery period anterior segment image diagnosis, the sensitivity, specificity, F1-score, and AUC were 84.62%, 93.50%, 85.94%, and 0.891, respectively. The kappa value of the MobileNet2 model was 77.64%, the accuracy was 85.11%, the model size was 13.5 M, and the parameter size was 4.2 M.
This study used deep learning methods to propose a three-category intelligent lightweight-assisted pterygium diagnosis model. The developed model can be used to screen patients for pterygium problems initially, provide reasonable suggestions, and provide timely referrals. It can help primary doctors improve pterygium diagnoses, confer social benefits, and lay the foundation for future models to be embedded in mobile devices.
中国缺乏初级眼科医生,导致基层医院无法诊断翼状胬肉患者。为了解决这个问题,本研究提出了一种基于眼前段图像的智能辅助轻量级翼状胬肉诊断模型。
翼状胬肉是眼科常见的多发病,纤维组织增生既是诊断标志物,也是手术标志物。该模型基于翼状胬肉的生物标志物诊断翼状胬肉。首先,共采集 436 例眼前段图像;然后,通过迁移学习训练两种基于原始数据和增强数据的智能辅助轻量级翼状胬肉诊断模型(MobileNet1 和 MobileNet2)。将轻量级模型的结果与临床结果进行比较。还使用经典模型(AlexNet、VGG16 和 ResNet18)进行训练和测试,并将它们的结果与轻量级模型进行比较。共使用 188 例眼前段图像进行测试。本研究的评价指标包括灵敏度、特异性、F1 评分、准确性、kappa、浓度-时间曲线下面积(AUC)、95%置信区间(CI)、大小和参数。
共有 188 例眼前段图像用于测试五种智能辅助翼状胬肉诊断模型。MobileNet2 模型的整体评价指标最好。MobileNet2 模型对正常眼前段图像诊断的灵敏度、特异性、F1 评分和 AUC 分别为 96.72%、98.43%、96.72%和 0.976;对翼状胬肉观察期眼前段图像诊断的灵敏度、特异性、F1 评分和 AUC 分别为 83.7%、90.48%、82.54%和 0.872;对手术期眼前段图像诊断的灵敏度、特异性、F1 评分和 AUC 分别为 84.62%、93.50%、85.94%和 0.891。MobileNet2 模型的 Kappa 值为 77.64%,准确率为 85.11%,模型大小为 13.5M,参数大小为 4.2M。
本研究采用深度学习方法提出了一种三分类智能轻量级辅助翼状胬肉诊断模型。所开发的模型可用于初步筛查翼状胬肉患者,提供合理建议,并及时转介。它可以帮助初级医生提高对翼状胬肉的诊断,带来社会效益,并为未来的模型嵌入移动设备奠定基础。