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眼周形态的多维定量表征:通过深度学习网络区分内斜视与内眦赘皮。

Multidimensional quantitative characterization of periocular morphology: distinguishing esotropia from epicanthus by deep learning network.

作者信息

Li Huimin, Shi Shengqiang, Lou Lixia, Cao Jing, Zhou Ziying, Huang Xingru, Ye Juan

机构信息

Eye Center, The Second Affiliated Hospital of Zhejiang University, School of Medicine, Zhejiang Provincial Key Laboratory of Ophthalmology, Zhejiang Provincial Clinical Research Center for Eye Diseases, Zhejiang Provincial Engineering Institute on Eye Diseases, Hangzhou, China.

School of Communication Engineering, Hangzhou Dianzi University, Hangzhou, China.

出版信息

Quant Imaging Med Surg. 2024 Sep 1;14(9):6273-6284. doi: 10.21037/qims-24-155. Epub 2024 Jul 29.

Abstract

BACKGROUND

Prominent epicanthus could not only diminish the eyes' aesthetics but may be deceptive for its typical appearance of pseudo-esotropia. This study aims to apply a deep learning model to characterize the periocular morphology for preliminary identification.

METHODS

This prospective study consecutively included 300 subjects visiting the ophthalmology department in a tertiary referral hospital. Children aged 7-18 years with simple epicanthus or concomitant esotropia and healthy volunteers who were age- and gender-matched were eligible for inclusion. Multiple metrics were extracted automatically and manually from facial images to characterize the periocular morphology and binocular symmetry. The dice coefficient (Dice), intraclass correlation coefficient (ICC), and Bland-Altman biases were calculated to evaluate their consistency. The receiver operating characteristic (ROC) curve determined the cut-off values of symmetry indexes (SIs) for distinguishing concomitant esotropia subjects from epicanthus ones.

RESULTS

The Dice for eyelid and cornea segmentation were 0.949 and 0.944, respectively. The ICCs of the two measurements ranged from 0.898 to 0.983. Biases ranged from 0.16 to 0.74 mm. The periocular morphology of epicanthus eyes was significantly different from the normal ones, including palpebral fissure width (21.41±1.53 24.45±1.82 mm; P<0.01), and palpebral fissure height (8.91±1.37 9.60±1.25 mm; P<0.01). The ROC analysis yielded an area under the curve of 0.971 [95% confidence interval (CI): 0.950-0.991] with SI for distinguishing esotropia subjects. Its optimal cut-off value was 1.296 with 0.920 sensitivity and 0.910 specificity.

CONCLUSIONS

Our study established a standard deep learning system for characterizing the periocular morphology of epicanthus and esotropia eyes with great accuracy. This objective method could be generalized to other periocular morphological assessments for clinical care.

摘要

背景

明显的内眦赘皮不仅会降低眼睛的美观度,还可能因其典型的假性内斜视外观而造成误诊。本研究旨在应用深度学习模型来表征眼周形态以进行初步识别。

方法

这项前瞻性研究连续纳入了300名到一家三级转诊医院眼科就诊的受试者。年龄在7至18岁、患有单纯内眦赘皮或伴有内斜视的儿童以及年龄和性别匹配的健康志愿者符合纳入标准。从面部图像中自动和手动提取多个指标,以表征眼周形态和双眼对称性。计算骰子系数(Dice)、组内相关系数(ICC)和布兰德-奥特曼偏差以评估它们的一致性。采用受试者操作特征(ROC)曲线确定区分伴有内斜视受试者和内眦赘皮受试者的对称指数(SI)的临界值。

结果

眼睑和角膜分割的Dice系数分别为0.949和0.944。两次测量的ICC范围为0.898至0.983。偏差范围为0.16至0.74毫米。内眦赘皮眼睛的眼周形态与正常眼睛有显著差异,包括睑裂宽度(21.41±1.53对24.45±1.82毫米;P<0.01)和睑裂高度(8.91±1.37对9.60±1.25毫米;P<0.01)。ROC分析得出区分内斜视受试者的曲线下面积为0.971[95%置信区间(CI):0.9

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1064/11400697/8b56c8734bb9/qims-14-09-6273-f1.jpg

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