Prediction of Visual Acuity After Cataract Surgery by Deep Learning Methods Using Clinical Information and Color Fundus Photography.

IF 1.7 4区 医学 Q3 OPHTHALMOLOGY
Current Eye Research Pub Date : 2025-03-01 Epub Date: 2024-12-09 DOI:10.1080/02713683.2024.2430212
Che-Ning Yang, Yi-Ting Hsieh, Hsu-Hang Yeh, Hsiao-Sang Chu, Jo-Hsuan Wu, Wei-Li Chen
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引用次数: 0

Abstract

Purpose: To examine the performance of deep-learning models that predicts the visual acuity after cataract surgery using preoperative clinical information and color fundus photography (CFP).

Methods: We retrospectively collected the age, sex, and logMAR preoperative best corrected visual acuity (preoperative-BCVA) and CFP from patients who underwent cataract surgeries from 2020 to 2021 at National Taiwan University Hospital. Feature extraction of CFP was performed using a pre-existing image classification model, Xception. The CFP-extracted features and pre-operative clinical information were then fed to a downstream neural network for final prediction. We assessed the model performance by calculating the mean absolute error (MAE) between the predicted and the true logMAR of postoperative BCVA. A nested 10-fold cross-validation was performed for model validation.

Results: A total of 673 fundus images from 446 patients were collected. The mean preoperative BCVA and postoperative BCVA was 0.60 ± 0.39 and 0.14 ± 0.18, respectively. The model using age and sex as predictors achieved an MAE of 0.121 ± 0.016 in postoperative BCVA prediction. The inclusion of CFP as additional predictor in the model (predictors: age, sex and CFP) did not further improve the predictive performance (MAE = 0.120 ± 0.023, p = 0.375), while adding the preoperative BCVA as an additional predictor resulted in a 4.13% improvement (predictors: age, sex and preoperative BCVA, MAE = 0.116 ± 0.016, p = 0.013).

Conclusions: Our multimodal models including both CFP and clinical information achieved excellent accuracy in predicting BCVA after cataract surgery, while the learning models input with only clinical information performed similarly. Future studies are needed to clarify the effects of multimodal input on this task.

基于临床信息和彩色眼底摄影的深度学习方法预测白内障术后视力。
目的:研究利用术前临床信息和彩色眼底摄影(CFP)预测白内障术后视力的深度学习模型的性能。方法:回顾性收集2020年至2021年在台大医院行白内障手术患者的年龄、性别、logMAR术前最佳矫正视力(术前- bcva)和CFP。使用预先存在的图像分类模型Xception进行CFP的特征提取。然后将cfp提取的特征和术前临床信息馈送到下游神经网络进行最终预测。我们通过计算术后BCVA预测值与真实logMAR之间的平均绝对误差(MAE)来评估模型的性能。对模型进行嵌套10倍交叉验证。结果:共收集446例患者眼底图像673张。术前BCVA平均值为0.60±0.39,术后BCVA平均值为0.14±0.18。以年龄和性别为预测因子的模型预测术后BCVA的MAE为0.121±0.016。在模型中加入CFP作为附加预测因子(预测因子:年龄、性别和CFP)并没有进一步提高预测性能(MAE = 0.120±0.023,p = 0.375),而加入术前BCVA作为附加预测因子可提高4.13%(预测因子:年龄、性别和术前BCVA, MAE = 0.116±0.016,p = 0.013)。结论:我们的包括CFP和临床信息的多模态模型在预测白内障术后BCVA方面具有优异的准确性,而仅输入临床信息的学习模型的预测效果相似。未来的研究需要阐明多模态输入对这一任务的影响。
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来源期刊
Current Eye Research
Current Eye Research 医学-眼科学
CiteScore
4.60
自引率
0.00%
发文量
163
审稿时长
12 months
期刊介绍: The principal aim of Current Eye Research is to provide rapid publication of full papers, short communications and mini-reviews, all high quality. Current Eye Research publishes articles encompassing all the areas of eye research. Subject areas include the following: clinical research, anatomy, physiology, biophysics, biochemistry, pharmacology, developmental biology, microbiology and immunology.
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