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基于深度学习的图像分析在眼睑下垂术前术后眼睑形态自动测量中的应用。

Deep learning-based image analysis for automated measurement of eyelid morphology before and after blepharoptosis surgery.

机构信息

Department of Ophthalmology, School of Medicine, The Second Affiliated Hospital of Zhejiang University, Hangzhou, China.

College of Media Engineering, Communication University of Zhejiang, Hangzhou, China.

出版信息

Ann Med. 2021 Dec;53(1):2278-2285. doi: 10.1080/07853890.2021.2009127.

Abstract

BACKGROUND AND AIM

Eyelid position and contour abnormality could lead to various diseases, such as blepharoptosis, which is a common eyelid disease. Accurate assessment of eyelid morphology is important in the management of blepharoptosis. We aimed to proposed a novel deep learning-based image analysis to automatically measure eyelid morphological properties before and after blepharoptosis surgery.

METHODS

This study included 135 ptotic eyes of 103 patients who underwent blepharoptosis surgery. Facial photographs were taken preoperatively and postoperatively. Margin reflex distance (MRD) 1 and 2 of the operated eyes were manually measured by a senior surgeon. Multiple eyelid morphological parameters, such as MRD1, MRD2, upper eyelid length and corneal area, were automatically measured by our deep learning-based image analysis. Agreement between manual and automated measurements, as well as two repeated automated measurements of MRDs were analysed. Preoperative and postoperative eyelid morphological parameters were compared. Postoperative eyelid contour symmetry was evaluated using multiple mid-pupil lid distances (MPLDs).

RESULTS

The intraclass correlation coefficients (ICCs) between manual and automated measurements of MRDs ranged from 0.934 to 0.971 ( < .001), and the bias ranged from 0.09 mm to 0.15 mm. The ICCs between two repeated automated measurements were up to 0.999 ( < .001), and the bias was no more than 0.002 mm. After surgery, MRD1 increased significantly from 0.31 ± 1.17 mm to 2.89 ± 1.06 mm, upper eyelid length from 19.94 ± 3.61 mm to 21.40 ± 2.40 mm, and corneal area from 52.72 ± 15.97 mm to 76.31 ± 11.31mm (all  < .001). Postoperative binocular MPLDs at different angles (from 0° to 180°) showed no significant differences in the patients.

CONCLUSION

This technique had high accuracy and repeatability for automatically measuring eyelid morphology, which allows objective assessment of blepharoptosis surgical outcomes. Using only patients' photographs, this technique has great potential in diagnosis and management of other eyelid-related diseases.

摘要

背景与目的

眼睑位置和轮廓异常可导致各种疾病,如上睑下垂,这是一种常见的眼睑疾病。准确评估眼睑形态对于上睑下垂的治疗非常重要。我们旨在提出一种新的基于深度学习的图像分析方法,以自动测量上睑下垂手术后的眼睑形态特征。

方法

本研究纳入了 103 例 135 只上睑下垂手术的患者。术前和术后均拍摄面部照片。由一名资深外科医生手动测量术眼的睑缘反射距离(MRD)1 和 2。通过我们的基于深度学习的图像分析自动测量多个眼睑形态参数,如 MRD1、MRD2、上睑长度和角膜面积。分析手动和自动测量之间的一致性,以及两次重复的 MRD 自动测量。比较术前和术后的眼睑形态参数。使用多个瞳孔距离(MPLD)评估术后眼睑轮廓对称性。

结果

MRD 的手动和自动测量之间的组内相关系数(ICC)范围为 0.934 至 0.971( < .001),偏差范围为 0.09 mm 至 0.15 mm。两次重复自动测量之间的 ICC 高达 0.999( < .001),偏差不超过 0.002 mm。手术后,MRD1 从 0.31 ± 1.17 mm 显著增加至 2.89 ± 1.06 mm,上睑长度从 19.94 ± 3.61 mm 增加至 21.40 ± 2.40 mm,角膜面积从 52.72 ± 15.97 mm 增加至 76.31 ± 11.31mm(均 < .001)。不同角度(0°至 180°)的术后双眼 MPLD 无显著差异。

结论

该技术在自动测量眼睑形态方面具有高精度和可重复性,可客观评估上睑下垂手术效果。该技术仅使用患者的照片,在诊断和治疗其他眼睑相关疾病方面具有巨大潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6b3f/8805858/4f37a1e34e3c/IANN_A_2009127_F0001_C.jpg

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