Hu Yijun, Xiao Yu, Quan Wuxiu, Zhang Bin, Wu Yuqing, Wu Qiaowei, Liu Baoyi, Zeng Xiaomin, Fang Ying, Hu Yu, Feng Songfu, Yuan Ling, Li Tao, Cai Hongmin, Yu Honghua
Guangdong Eye Institute, Department of Ophthalmology, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, The Second School of Clinical Medicine, Southern Medical University, Guangzhou, China.
Aier Institute of Refractive Surgery, Refractive Surgery Center, Guangzhou Aier Eye Hospital, Guangzhou, China.
Ann Transl Med. 2021 Jan;9(1):51. doi: 10.21037/atm-20-1789.
To develop a deep learning (DL) model for prediction of idiopathic macular hole (MH) status after vitrectomy and internal limiting membrane peeling (VILMP) based on optical coherence tomography (OCT) images from four ophthalmic centers.
Eyes followed up at 1 month after VILMP for full-thickness MH were included. In the internal training set, 920 preoperative macular OCT images (as the input) and post-operative status of MH (closed or open, as the output) of 256 eyes from two ophthalmic centers were used to train the DL model using VGG16 algorithm. In the external validation set, 72 preoperative macular OCT images of 36 MH eyes treated by VILMP from another two ophthalmic centers were used to validate the prediction accuracy of the DL model.
In internal training, the mean of overall accuracy for prediction of MH status after VILMP was 84.6% with a mean area under the receiver operating characteristic (ROC) curve (AUC) of 91.04% (sensitivity 85.37% and specificity 81.99%). In external validation, the overall accuracy of predicting MH status after VILMP was 84.7% with an AUC of 89.32% (sensitivity 83.33% and specificity 87.50%). The heatmaps showed that the area critical for prediction was at the central macula, mainly at the MH and its adjacent retina.
The DL model trained by preoperative macular OCT images can be used to predict postoperative MH status after VILMP. The prediction accuracy of our DL model has been validated by multiple ophthalmic centers.
基于来自四个眼科中心的光学相干断层扫描(OCT)图像,开发一种深度学习(DL)模型,用于预测玻璃体切割术联合内界膜剥除术(VILMP)后特发性黄斑裂孔(MH)的状态。
纳入VILMP术后1个月随访的全层MH患者的眼睛。在内部训练集中,使用来自两个眼科中心的256只眼睛的920张术前黄斑OCT图像(作为输入)和MH的术后状态(闭合或开放,作为输出),采用VGG16算法训练DL模型。在外部验证集中,使用来自另外两个眼科中心的36只接受VILMP治疗的MH眼睛的72张术前黄斑OCT图像来验证DL模型的预测准确性。
在内部训练中,VILMP后预测MH状态的总体准确率平均为84.6%,受试者操作特征(ROC)曲线下的平均面积(AUC)为91.04%(敏感性85.37%,特异性81.99%)。在外部验证中,VILMP后预测MH状态的总体准确率为84.7%,AUC为89.32%(敏感性83.33%,特异性87.50%)。热图显示,预测的关键区域位于黄斑中心,主要在MH及其相邻视网膜处。
由术前黄斑OCT图像训练的DL模型可用于预测VILMP术后的MH状态。我们的DL模型的预测准确性已得到多个眼科中心的验证。