利用基于图像的深度学习,按年龄和性别自动测量和比较正常眼睑轮廓

IF 3.2 Q1 OPHTHALMOLOGY Ophthalmology science Pub Date : 2024-03-21 DOI:10.1016/j.xops.2024.100518
Ji Shao MD , Jing Cao MD , Changjun Wang MD, Peifang Xu MD, Lixia Lou MD, PhD, Juan Ye MD, PhD
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引用次数: 0

摘要

目的 本研究旨在提出一种全自动眼睑测量系统,并根据年龄和性别比较正常人上下眼睑的轮廓。方法 使用主要注视位置的面部图像来训练和测试所提出的眼球识别和眼球分割自动系统。主要结果测量基于深度学习(DL)的系统自动测量了所有参与者每15°的瞳中睑距离(MPLD),男女各30人,每个年龄组各30人。通过类内相关系数(ICC)来评估自动和手动边缘反射距离(MRDs)之间的一致性。使用MPLD、颞鼻MPLD比值和内外眦角分别分析了眼睑轮廓、眼睑不对称和睑裂斜度。结果自动系统测量的MRD与专家测量的MRD非常一致,ICC在0.863到0.886之间。随着参试者年龄的增长,二三十岁参试者的多普勒眼底测量值达到顶峰,然后在各个角度逐渐下降。颞部的 MPLDs 变化大于鼻部,女性的变化比男性明显。男女睑裂斜度的最大值均出现在 10 岁以前,20 岁以后保持相对稳定(P > 0.05)。对眼睑形状量化的改进将有利于未来对眼部整形手术前和手术后的客观评估。
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Automatic Measurement and Comparison of Normal Eyelid Contour by Age and Gender Using Image-Based Deep Learning

Purpose

This study aimed to propose a fully automatic eyelid measurement system and compare the contours of both the upper and lower eyelids of normal individuals according to age and gender.

Design

Prospective study.

Participants

Five hundred and forty healthy Chinese aged 0 to 79 years in a tertiary hospital were included.

Methods

Facial images in the primary gazing position were used to train and test the proposed automatic system for eye recognition and eye segmentation. According to the 10-millimeter diameter circular marker, measurements were transformed from pixel sizes into factual distances.

Main Outcome Measures

Midpupil lid distances (MPLDs) every 15° of all participants were automatically measured in both genders (30 males and 30 females in each age group) by the proposed deep learning (DL)-based system. Intraclass correlation coefficients (ICCs) were performed to assess the agreement between the automatic and manual margin reflex distances (MRDs). The eyelid contour, eyelid asymmetry, and palpebral fissure obliquity were analyzed using MPLD, temporal-versus-nasal MPLD ratio, and the angle between the inner and outer canthi, respectively.

Results

The measurement of MRDs by the automatic system excellently agreed with that of the expert, with ICCs ranging from 0.863 to 0.886. As the age of the participants increased, the values of MPLDs reached a peak in those in their 20s or 30s and then gradually decreased at all angles. The temporal sector showed greater changes in MPLDs than the nasal sector, and the changes were more significant in females than in males. The maximum value of palpebral fissure obliquity appeared before 10 years in both genders and remained relatively stable after the 20s (P > 0.05).

Conclusions

The proposed DL-based eyelid analysis system allowed automatic, accurate, and comprehensive measurement of the eyelid contour. The refinement of eyelid shape quantification could be beneficial for future objective assessment preocular and postocular plastic surgery.

Financial Disclosure(s)

The authors have no proprietary or commercial interest in any materials discussed in this article.

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来源期刊
Ophthalmology science
Ophthalmology science Ophthalmology
CiteScore
3.40
自引率
0.00%
发文量
0
审稿时长
89 days
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Barriers to Extracting and Harmonizing Glaucoma Testing Data: Gaps, Shortcomings, and the Pursuit of FAIRness Severity Scale of Diabetic Macular Ischemia Based on the Distribution of Capillary Nonperfusion in OCT Angiography Editorial Board Table of Contents Cover
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