Blinking characteristics analyzed by a deep learning model and the relationship with tear film stability in children with long-term use of orthokeratology.

IF 4.6 2区 生物学 Q2 CELL BIOLOGY Frontiers in Cell and Developmental Biology Pub Date : 2025-01-28 eCollection Date: 2024-01-01 DOI:10.3389/fcell.2024.1517240
Yue Wu, Siyuan Wu, Yinghai Yu, Xiaojun Hu, Ting Zhao, Yan Jiang, Bilian Ke
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Abstract

Purpose: Using deep learning model to observe the blinking characteristics and evaluate the changes and their correlation with tear film characteristics in children with long-term use of orthokeratology (ortho-K).

Methods: 31 children (58 eyes) who had used ortho-K for more than 1 year and 31 age and gender-matched controls were selected for follow-up in our ophthalmology clinic from 2021/09 to 2023/10 in this retrospective case-control study. Both groups underwent comprehensive ophthalmological examinations, including Ocular Surface Disease Index (OSDI) scoring, Keratograph 5M, and LipiView. A deep learning system based on U-Net and Swim-Transformer was proposed for the observation of blinking characteristics. The frequency of incomplete blinks (IB), complete blinks (CB) and incomplete blinking rate (IBR) within 20 s, as well as the duration of the closing, closed, and opening phases in the blink wave were calculated by our deep learning system. Relative IPH% was proposed and defined as the ratio of the mean of IPH% within 20 s to the maximum value of IPH% to indicate the extent of incomplete blinking. Furthermore, the accuracy, precision, sensitivity, specificity, F1 score of the overall U-Net-Swin-Transformer model, and its consistency with built-in algorithm were evaluated as well. Independent t-test and Mann-Whitney test was used to analyze the blinking patterns and tear film characteristics between the long-term ortho-K wearer group and the control group. Spearman's rank correlation was used to analyze the relationship between blinking patterns and tear film stability.

Results: Our deep learning system demonstrated high performance (accuracy = 98.13%, precision = 96.46%, sensitivity = 98.10%, specificity = 98.10%, F1 score = 0.9727) in the observation of blinking patterns. The OSDI scores, conjunctival redness, lipid layer thickness (LLT), and tear meniscus height did not change significantly between two groups. Notably, the ortho-K group exhibited shorter first (11.75 ± 7.42 s vs. 14.87 ± 7.93 s, p = 0.030) and average non-invasive tear break-up times (NIBUT) (13.67 ± 7.0 s vs. 16.60 ± 7.24 s, p = 0.029) compared to the control group. They demonstrated a higher IB (4.26 ± 2.98 vs. 2.36 ± 2.55, p < 0.001), IBR (0.81 ± 0.28 vs. 0.46 ± 0.39, p < 0.001), relative IPH% (0.3229 ± 0.1539 vs. 0.2233 ± 0.1960, p = 0.004) and prolonged eye-closing phase (0.18 ± 0.08 s vs. 0.15 ± 0.07 s, p = 0.032) and opening phase (0.35 ± 0.12 s vs. 0.28 ± 0.14 s, p = 0.015) compared to controls. In addition, Spearman's correlation analysis revealed a negative correlation between incomplete blinks and NIBUT (for first-NIBUT, r = -0.292, p = 0.004; for avg-NIBUT, r = -0.3512, p < 0.001) in children with long-term use of ortho-K.

Conclusion: The deep learning system based on U-net and Swim-Transformer achieved optimal performance in the observation of blinking characteristics. Children with long-term use of ortho-K presented an increase in the frequency and rate of incomplete blinks and prolonged eye closing phase and opening phase. The increased frequency of incomplete blinks was associated with decreased tear film stability, indicating the importance of monitoring children's blinking patterns as well as tear film status in clinical follow-up.

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用深度学习模型分析长期使用矫形眼镜的儿童的眨眼特征及其与泪膜稳定性的关系。
目的:应用深度学习模型观察长期使用角膜塑形镜(orthokeratology, orthok)儿童的眨眼特征,评价其变化及其与泪膜特征的相关性。方法:采用回顾性病例对照研究方法,选取2021/09 ~ 2023/10年在我院眼科门诊使用ortho-K手术1年以上的31名儿童(58只眼)和31名年龄、性别匹配的对照组进行随访。两组患者均进行了全面的眼科检查,包括眼表疾病指数(OSDI)评分、角膜摄影5M和LipiView。提出了一种基于U-Net和Swim-Transformer的深度学习系统,用于观察眨眼特征。我们的深度学习系统计算了20秒内不完全眨眼(IB)、完全眨眼(CB)和不完全眨眼率(IBR)的频率,以及眨眼波中关闭、关闭和打开阶段的持续时间。提出了相对IPH%,并将其定义为20 s内IPH%平均值与IPH%最大值之比,用以表示不完全眨眼的程度。评价了u - net - swan - transformer整体模型的准确性、精密度、灵敏度、特异性、F1评分及其与内置算法的一致性。采用独立t检验和Mann-Whitney检验分析长期佩戴k型眼镜组与对照组的眨眼模式和泪膜特征。采用Spearman秩相关分析眨眼模式与泪膜稳定性的关系。结果:深度学习系统在眨眼模式观察方面表现出较高的准确率(98.13%)、精密度(96.46%)、灵敏度(98.10%)、特异度(98.10%)和F1评分(0.9727)。两组患者的OSDI评分、结膜红度、脂质层厚度(LLT)、撕裂半月板高度无明显变化。值得注意的是,ortho-K组的首次撕裂时间(11.75±7.42 s比14.87±7.93 s, p = 0.030)和平均无创撕裂时间(NIBUT)(13.67±7.0 s比16.60±7.24 s, p = 0.029)短于对照组。与对照组相比,他们的IB(4.26±2.98比2.36±2.55,p < 0.001)、IBR(0.81±0.28比0.46±0.39,p < 0.001)、相对IPH%(0.3229±0.1539比0.2233±0.1960,p = 0.004)、闭眼期(0.18±0.08 s比0.15±0.07 s, p = 0.032)和睁眼期(0.35±0.12 s比0.28±0.14 s, p = 0.015)延长。此外,Spearman相关分析显示,不完全眨眼与NIBUT呈负相关(对于第一次NIBUT, r = -0.292, p = 0.004;avg-NIBUT, r = -0.3512, p < 0.001)。结论:基于U-net和Swim-Transformer的深度学习系统在眨眼特征观察方面取得了最优的效果。长期使用ortho-K的儿童出现不完全眨眼频率和频率增加,闭眼期和睁眼期延长。不完全眨眼的频率增加与泪膜稳定性下降有关,这表明在临床随访中监测儿童眨眼模式和泪膜状态的重要性。
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来源期刊
Frontiers in Cell and Developmental Biology
Frontiers in Cell and Developmental Biology Biochemistry, Genetics and Molecular Biology-Cell Biology
CiteScore
9.70
自引率
3.60%
发文量
2531
审稿时长
12 weeks
期刊介绍: Frontiers in Cell and Developmental Biology is a broad-scope, interdisciplinary open-access journal, focusing on the fundamental processes of life, led by Prof Amanda Fisher and supported by a geographically diverse, high-quality editorial board. The journal welcomes submissions on a wide spectrum of cell and developmental biology, covering intracellular and extracellular dynamics, with sections focusing on signaling, adhesion, migration, cell death and survival and membrane trafficking. Additionally, the journal offers sections dedicated to the cutting edge of fundamental and translational research in molecular medicine and stem cell biology. With a collaborative, rigorous and transparent peer-review, the journal produces the highest scientific quality in both fundamental and applied research, and advanced article level metrics measure the real-time impact and influence of each publication.
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