Ping An Healthcare Technology, Beijing, China.
Department of Ophthalmology, Beijing Friendship Hospital, Capital Medical University, Beijing, China.
Retina. 2022 Mar 1;42(3):456-464. doi: 10.1097/IAE.0000000000003325.
To develop and validate an artificial intelligence framework for identifying multiple retinal lesions at image level and performing an explainable macular disease diagnosis at eye level in optical coherence tomography images.
A total of 26,815 optical coherence tomography images were collected from 865 eyes, and 9 retinal lesions and 3 macular diseases were labeled by ophthalmologists, including diabetic macular edema and dry/wet age-related macular degeneration. We applied deep learning to classify retinal lesions at image level and random forests to achieve an explainable disease diagnosis at eye level. The performance of the integrated two-stage framework was evaluated and compared with human experts.
On testing data set of 2,480 optical coherence tomography images from 80 eyes, the deep learning model achieved an average area under curve of 0.978 (95% confidence interval, 0.971-0.983) for lesion classification. In addition, random forests performed accurate disease diagnosis with a 0% error rate, which achieved the same accuracy as one of the human experts and was better than the other three experts. It also revealed that the detection of specific lesions in the center of macular region had more contribution to macular disease diagnosis.
The integrated method achieved high accuracy and interpretability in retinal lesion classification and macular disease diagnosis in optical coherence tomography images and could have the potential to facilitate the clinical diagnosis.
开发并验证一种人工智能框架,以在图像级别识别多种视网膜病变,并在光学相干断层扫描图像中进行可解释的黄斑疾病诊断。
共收集了来自 865 只眼的 26815 张光学相干断层扫描图像,眼科医生对 9 种视网膜病变和 3 种黄斑疾病进行了标记,包括糖尿病性黄斑水肿和湿性/干性年龄相关性黄斑变性。我们应用深度学习对视网膜病变进行图像级分类,并应用随机森林实现可解释的眼部疾病诊断。评估了集成的两阶段框架的性能,并与人类专家进行了比较。
在 80 只眼的 2480 张光学相干断层扫描图像测试数据集上,深度学习模型对病变分类的平均曲线下面积为 0.978(95%置信区间,0.971-0.983)。此外,随机森林实现了准确的疾病诊断,错误率为 0%,其准确性与一位人类专家相同,优于其他三位专家。研究还表明,黄斑中心特定病变的检测对黄斑疾病诊断的贡献更大。
该集成方法在光学相干断层扫描图像的视网膜病变分类和黄斑疾病诊断中实现了高精度和可解释性,有可能有助于临床诊断。