基于深度学习的光学相干断层成像角膜屈光性激光手术自动检测。

IF 2.9 3区 医学 Q1 OPHTHALMOLOGY
Jad F Assaf, Hady Yazbeck, Dan Z Reinstein, Timothy J Archer, Roland Assaf, Diego de Ortueta, Juan Arbelaez, Maria Clara Arbelaez, Shady T Awwad
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引用次数: 0

摘要

目的:报道一种基于前段光学相干断层扫描(AS-OCT)的深度学习神经网络,用于自动检测不同的角膜屈光性激光手术,包括激光原位角膜磨除术联合飞秒微角膜磨除术(femto-LASIK)、LASIK联合机械微角膜磨除术、光屈光性角膜切除术(PRK)、角膜屈光性晶状体摘除术(KLEx)和非手术眼,同时区分这些手术中的近视和远视治疗。方法:利用1166例患者的2278只眼睛的14948张眼睛扫描图,分别在训练、验证和测试阶段采用80/10/10患者分布的深度学习神经网络算法。对该算法的准确率、F1分数、精确召回率曲线下面积(AUPRC)和接收者工作特征曲线下面积(AUROC)进行了评价。结果:在测试数据集上,神经网络能够以96%的准确率检测不同的手术类别,加权平均F1评分为96%,宏观平均F1评分为96%。该神经网络进一步能够检测出每个手术类别中的远视和近视亚类,准确率为90%,加权平均F1评分为90%,宏观平均F1评分为83%。结论:神经网络可以从AS-OCT扫描中准确地分类患者的角膜屈光性激光病史,这可以支持治疗计划、人工晶状体计算和扩张评估,特别是在电子健康记录不完整的情况下。这代表着在屈光诊所中将OCT从诊断工具转变为更全面的筛查工具的一步。[J].中华眼科杂志,2015;41(3):888 - 888。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Detection of Keratorefractive Laser Surgeries on Optical Coherence Tomography Using Deep Learning.

Purpose: To report a deep learning neural network on anterior segment optical coherence tomography (AS-OCT) for automated detection of different keratorefractive laser surgeries-including laser in situ keratomileusis with femtosecond microkeratome (femto-LASIK), LASIK with mechanical microkeratome, photorefractive keratectomy (PRK), keratorefractive lenticule extraction (KLEx), and non-operated eyes-while also distinguishing between myopic and hyperopic treatments within these procedures.

Methods: A total of 14,948 eye scans from 2,278 eyes of 1,166 patients were used to develop a deep learning neural network algorithm with an 80/10/10 patient distribution for training, validation, and testing phases, respectively. The algorithm was evaluated for its accuracy, F1 scores, area under precision-recall curve (AUPRC), and area under receiver operating characteristic curve (AUROC).

Results: On the test dataset, the neural network was able to detect the different surgical classes with an accuracy of 96%, a weighted-average F1 score of 96%, and a macro-average F1 score of 96%. The neural network was further able to detect hyperopic and myopic subclasses within each surgical class, with an accuracy of 90%, weighted-average F1 score of 90%, and macro-average F1 score of 83%.

Conclusions: Neural networks can accurately classify a patient's keratorefractive laser history from AS-OCT scans, which may support treatment planning, intraocular lens calculations, and ectasia assessment, particularly in cases where electronic health records are incomplete. This represents a step toward transforming OCT from a diagnostic to a more comprehensive screening tool in refractive clinics. [J Refract Surg. 2025;41(3):e248-e256.].

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来源期刊
CiteScore
5.10
自引率
12.50%
发文量
160
审稿时长
4-8 weeks
期刊介绍: The Journal of Refractive Surgery, the official journal of the International Society of Refractive Surgery, a partner of the American Academy of Ophthalmology, has been a monthly peer-reviewed forum for original research, review, and evaluation of refractive and lens-based surgical procedures for more than 30 years. Practical, clinically valuable articles provide readers with the most up-to-date information regarding advances in the field of refractive surgery. Begin to explore the Journal and all of its great benefits such as: • Columns including “Translational Science,” “Surgical Techniques,” and “Biomechanics” • Supplemental videos and materials available for many articles • Access to current articles, as well as several years of archived content • Articles posted online just 2 months after acceptance.
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