Sun Dandan, Du Yuchen, Chen Qiuying, Ye Luyao, Chen Huai, Li Menghan, He Jiangnan, Zhu Jianfeng, Wang Lisheng, Fan Ying, Xu Xun
Department of Ophthalmology, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
National Clinical Research Center for Eye Diseases, Shanghai, China.
Front Med (Lausanne). 2021 Apr 29;8:657566. doi: 10.3389/fmed.2021.657566. eCollection 2021.
To construct quantifiable models of imaging features by machine learning describing early changes of optic disc and peripapillary region, and to explore their performance as early indicators for choroidal thickness (ChT) in young myopic patients. Eight hundred and ninety six subjects were enrolled. Imaging features were extracted from fundus photographs. Macular ChT (mChT) and peripapillary ChT (pChT) were measured on swept-source optical coherence tomography scans. All participants were divided randomly into training (70%) and test (30%) sets. Imaging features correlated with ChT were selected by LASSO regression and combined into new indicators of optic disc (IODs) for mChT (IOD_mChT) and for pChT (IOD_pChT) by multivariate regression models in the training set. The performance of IODs was evaluated in the test set. A significant correlation between IOD_mChT and mChT ( = 0.650, = 0.423, < 0.001) was found in the test set. IOD_mChT was negatively associated with axial length (AL) ( = -0.562, < 0.001) and peripapillary atrophy (PPA) area ( = -0.738, < 0.001) and positively associated with ovality index ( = 0.503, < 0.001) and torsion angle ( = 0.242, < 0.001) in the test set. Every 1 × 10 μm decrease in IOD_mChT was associated with an 8.87 μm decrease in mChT. A significant correlation between IOD_pChT and pChT ( = 0.576, = 0.331, < 0.001) was found in the test set. IOD_pChT was negatively associated with AL ( = -0.478, < 0.001) and PPA area ( = -0.651, < 0.001) and positively associated with ovality index ( = 0.285, < 0.001) and torsion angle ( = 0.180, < 0.001) in the test set. Every 1 × 10 μm decrease in IOD_pChT was associated with a 9.64 μm decrease in pChT. The study introduced a machine learning approach to acquire imaging information of early changes of optic disc and peripapillary region and constructed quantitative models significantly correlated with choroidal thickness. The objective models from fundus photographs represented a new approach that offset limitations of human annotation and could be applied in other areas of fundus diseases.
通过机器学习构建可量化的成像特征模型,以描述视盘和视乳头周围区域的早期变化,并探索其作为年轻近视患者脉络膜厚度(ChT)早期指标的性能。招募了896名受试者。从眼底照片中提取成像特征。在扫频光学相干断层扫描中测量黄斑ChT(mChT)和视乳头周围ChT(pChT)。所有参与者被随机分为训练集(70%)和测试集(30%)。通过LASSO回归选择与ChT相关的成像特征,并在训练集中通过多元回归模型将其组合成用于mChT的视盘新指标(IOD_mChT)和用于pChT的视盘新指标(IOD_pChT)。在测试集中评估IODs的性能。在测试集中发现IOD_mChT与mChT之间存在显著相关性(= 0.650,= 0.423,< 0.001)。在测试集中,IOD_mChT与眼轴长度(AL)呈负相关(= -0.562,< 0.001)和视乳头周围萎缩(PPA)面积呈负相关(= -0.738,< 0.001),与椭圆率指数呈正相关(= 0.503,< 0.001)和扭转角呈正相关(= 0.242,< 0.001)。IOD_mChT每减少1×10μm,mChT就减少8.87μm。在测试集中发现IOD_pChT与pChT之间存在显著相关性(= 0.576,= 0.331,< 0.001)。在测试集中,IOD_pChT与AL呈负相关(= -0.478,< 0.001)和PPA面积呈负相关(= -0.651,< 0.001),与椭圆率指数呈正相关(= 0.285,< 0.001)和扭转角呈正相关(= 0.180,< 0.001)。IOD_pChT每减少1×10μm,pChT就减少9.64μm。该研究引入了一种机器学习方法来获取视盘和视乳头周围区域早期变化的成像信息,并构建了与脉络膜厚度显著相关的定量模型。来自眼底照片的客观模型代表了一种新方法,弥补了人工标注的局限性,可应用于眼底疾病的其他领域。