Chu Xiaoran, Wang Xin, Zhang Chen, Liu Hui, Li Fei, Li Guangxu, Zhao Shaozhen
Department of Cornea and Refractive Surgery, Tianjin Key Laboratory of Retinal Functions and Diseases, Tianjin Branch of National Clinical Research Center for Ocular Disease, Eye Institute and School of Optometry, Tianjin Medical University Eye Hospital, Tianjin, China.
School of Electronics and Information Engineering, Tiangong University, Tianjin, China.
Quant Imaging Med Surg. 2023 Oct 1;13(10):6778-6788. doi: 10.21037/qims-23-99. Epub 2023 Aug 25.
Corneal neovascularization (CoNV) is a common sign in anterior segment eye diseases, the level of which can indicate condition changes. Current CoNV evaluation methods are time-consuming and some of them rely on equipment which is not widely available in hospitals. Thus, a fast and efficient evaluation method is now urgently required. In this study, a deep learning (DL)-based model was developed to automatically segment and evaluate CoNV using anterior segment images from a slit-lamp microscope.
A total of 80 cornea slit-lamp photographs (from 80 patients) with clinically manifested CoNV were collected from December 2021 to July 2022 at Tianjin Medical University Eye Hospital. Of these, 60 images were manually labelled by ophthalmologists using ImageJ software to train the vessel segmentation network IterNet. To evaluate the performance of this automated model, evaluation metrics including accuracy, precision, area under the receiver operating characteristic (ROC) curve (AUC), and score were calculated between the manually labelled ground truth and the automatic segmentations of CoNV of 20 anterior segment images. Furthermore, the vessels pixel count was automatically calculated and compared with the manually labelled results to evaluate clinical usability of the automated segmentation network.
The IterNet model achieved an AUC of 0.989, accuracy of 0.988, sensitivity of 0.879, specificity of 0.993, area under precision-recall of 0.921, and score of 0.879. The Bland-Altman plot between manually labelled ground truth and automated segmentation results produced a concordance correlation coefficient of 0.989, 95% limits of agreement between 865.4 and -562.4, and the vessels pixel count's Pearson coefficient of correlation was 0.981 (P<0.01).
The fully automated network model IterNet provides a time-saving and efficient method to make a quantitative evaluation of CoNV using slit-lamp anterior segment images. This method demonstrates great value and clinical application potential for patient care and future research.
角膜新生血管化(CoNV)是眼前段眼部疾病的常见体征,其程度可指示病情变化。当前的CoNV评估方法耗时且其中一些依赖于医院中未广泛使用的设备。因此,迫切需要一种快速有效的评估方法。在本研究中,开发了一种基于深度学习(DL)的模型,以使用裂隙灯显微镜的眼前段图像自动分割和评估CoNV。
2021年12月至2022年7月期间,在天津医科大学眼科医院收集了80例有临床表现的CoNV患者的80张角膜裂隙灯照片。其中,60张图像由眼科医生使用ImageJ软件进行手动标注,以训练血管分割网络IterNet。为了评估该自动化模型的性能,计算了手动标注的真值与20张眼前段图像的CoNV自动分割结果之间的评估指标,包括准确率、精确率、受试者工作特征(ROC)曲线下面积(AUC)和 分数。此外,自动计算血管像素计数并与手动标注结果进行比较,以评估自动分割网络的临床可用性。
IterNet模型的AUC为0.989,准确率为0.988,灵敏度为0.879,特异性为0.993,精确率-召回率曲线下面积为0.921, 分数为0.879。手动标注的真值与自动分割结果之间的Bland-Altman图产生的一致性相关系数为0.989,95%一致性界限在865.4和-562.4之间,血管像素计数的Pearson相关系数为0.981(P<0.01)。
全自动网络模型IterNet提供了一种省时高效的方法,可使用裂隙灯眼前段图像对CoNV进行定量评估。该方法在患者护理和未来研究中显示出巨大价值和临床应用潜力。