Deep Learning Classification of Angle Closure based on Anterior Segment OCT

IF 2.8 Q1 OPHTHALMOLOGY
Jing Shan MD, PhD , Zhixi Li MD , Ping Ma MD, PhD , Tin A. Tun MD , Sean Yonamine , Yangyan Wu MS , Mani Baskaran DO, PhD , Monisha E. Nongpiur MD, PhD , Dake Chen PhD , Tin Aung MMed, PhD , Shuning Li MD , Mingguang He MD, PhD , Yangfan Yang MD , Ying Han MD, PhD
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Abstract

Purpose

To assess the performance and generalizability of a convolutional neural network (CNN) model for objective and high-throughput identification of primary angle-closure disease (PACD) as well as PACD stage differentiation on anterior segment swept-source OCT (AS-OCT).

Design

Cross-sectional.

Participants

Patients from 3 different eye centers across China and Singapore were recruited for this study. Eight hundred forty-one eyes from the 2 Chinese centers were divided into 170 control eyes, 488 PACS, and 183 PAC + PACG eyes. An additional 300 eyes were recruited from Singapore National Eye Center as a testing data set, divided into 100 control eyes, 100 PACS, and 100 PAC + PACG eyes.

Methods

Each participant underwent standardized ophthalmic examination and was classified by the presiding physician as either control, primary angle-closure suspect (PACS), primary angle closure (PAC), or primary angle-closure glaucoma (PACG). Deep Learning model was used to train 3 different CNN classifiers: classifier 1 aimed to separate control versus PACS versus PAC + PACG; classifier 2 aimed to separate control versus PACD; and classifier 3 aimed to separate PACS versus PAC + PACG. All classifiers were evaluated on independent validation sets from the same region, China and further tested using data from a different country, Singapore.

Main Outcome Measures

Area under receiver operator characteristic curve (AUC), precision, and recall.

Results

Classifier 1 achieved an AUC of 0.96 on validation set from the same region, but dropped to an AUC of 0.84 on test set from a different country. Classifier 2 achieved the most generalizable performance with an AUC of 0.96 on validation set and AUC of 0.95 on test set. Classifier 3 showed the poorest performance, with an AUC of 0.83 and 0.64 on test and validation data sets, respectively.

Conclusions

Convolutional neural network classifiers can effectively distinguish PACD from controls on AS-OCT with good generalizability across different patient cohorts. However, their performance is moderate when trying to distinguish PACS versus PAC + PACG.

Financial Disclosures

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

基于前段 OCT 的闭角深度学习分类
目的评估卷积神经网络(CNN)模型的性能和可推广性,以客观、高通量地识别原发性闭角型角膜病(PACD),并根据前节扫源OCT(AS-OCT)进行PACD分期。来自中国两个眼科中心的 841 只眼睛被分为 170 只对照眼、488 只 PACS 眼和 183 只 PAC + PACG 眼。方法每位参与者都接受了标准化眼科检查,并由主治医生将其分为对照组、原发性疑似闭角(PACS)组、原发性闭角(PAC)组或原发性闭角型青光眼(PACG)组。深度学习模型用于训练 3 种不同的 CNN 分类器:分类器 1 用于区分对照组与 PACS、PAC + PACG;分类器 2 用于区分对照组与 PACD;分类器 3 用于区分 PACS 与 PAC + PACG。所有分类器均在来自同一地区(中国)的独立验证集上进行了评估,并使用来自不同国家(新加坡)的数据进行了进一步测试。结果分类器 1 在来自同一地区的验证集上的 AUC 为 0.96,但在来自不同国家的测试集上的 AUC 降为 0.84。分类器 2 的通用性最强,在验证集上的 AUC 为 0.96,在测试集上的 AUC 为 0.95。结论卷积神经网络分类器能在 AS-OCT 上有效区分 PACD 和对照组,在不同患者群中具有良好的普适性。然而,在试图区分 PACS 与 PAC + PACG 时,它们的表现一般。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Ophthalmology. Glaucoma
Ophthalmology. Glaucoma OPHTHALMOLOGY-
CiteScore
4.80
自引率
6.90%
发文量
140
审稿时长
46 days
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