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基于深度学习的小切口透镜切除术(SMILE)早期视觉效果预测

Prediction of Early Visual Outcome of Small-Incision Lenticule Extraction (SMILE) Based on Deep Learning.

作者信息

Wan Qi, Yue Shali, Tang Jing, Wei Ran, Tang Jing, Ma Ke, Yin Hongbo, Deng Ying-Ping

机构信息

Department of Ophthalmology, West China Hospital of Sichuan University, Chengdu City, Sichuan Province, China.

Department of Ophthalmology, The People's Hospital of Leshan, Leshan City, Sichuan Province, China.

出版信息

Ophthalmol Ther. 2023 Apr;12(2):1263-1279. doi: 10.1007/s40123-023-00680-6. Epub 2023 Feb 24.

Abstract

INTRODUCTION

Deep learning (DL) has been widely used to estimate clinical images. The objective of this project was to create DL models to predict the early postoperative visual acuity after small-incision lenticule extraction (SMILE) surgery.

METHODS

We enrolled three independent patient cohorts (a retrospective cohort and two prospective SMILE cohorts) who underwent the SMILE refractive correction procedure at two different refractive surgery centers from July to September 2022. The medical records and surgical videos were collected for further analysis. Based on the uncorrected visual acuity (UCVA) at 24 h postsurgery, the eyes were divided into two groups: those showing good recovery and those showing poor recovery. We then trained a DL model (Resnet50) to predict eyes with early postoperative visual acuity of patients in the retrospective cohort who had undergone SMILE surgery from surgical videos and subsequently validated the model's performance in the two prospective cohorts. Finally, Gradient-weighted Class Activation Mapping (Grad-CAM) was performed for interpretation of the model.

RESULTS

Among the 318 eyes (159 patients) enrolled in the study, 10,176 good quality femtosecond laser scanning images were obtained from the surgical videos. We observed that the developed DL model achieved a high accuracy of 96% for image prediction. The area under the curve (AUC) value of the DL model in the retrospective cohort was 0.962 and 0.998 in the training and validation datasets, respectively. The AUC values in two prospective cohorts were 0.959 and 0.936. At the video level, the trained machine learning (ML) model (XGBoost) also accurately distinguished patients with good or poor recovery. The AUC value of the ML model was 0.998 and 0.889 in the retrospective cohort (training and test datasets, respectively) and 1.000 and 0.984 in the two prospective cohorts. We also trained a DL model which can accurately distinguish suction loss (100%), black spots (85%), and opaque bubble layer (96%). The Grad-CAM heatmap indicated that our models can recognize the area of scanning and precisely identify intraoperative complications.

CONCLUSIONS

Our findings suggest that artificial intelligence (DL and ML model) can accurately predict the early postoperative visual acuity and intraoperative complications after SMILE surgery just using surgical videos or images, which may display a great importance for artificial intelligence in application of refractive surgeries.

摘要

引言

深度学习(DL)已被广泛用于评估临床图像。本项目的目的是创建深度学习模型,以预测小切口飞秒透镜切除术(SMILE)术后的早期视力。

方法

我们纳入了三个独立的患者队列(一个回顾性队列和两个前瞻性SMILE队列),这些患者于2022年7月至9月在两个不同的屈光手术中心接受了SMILE屈光矫正手术。收集病历和手术视频以进行进一步分析。根据术后24小时的未矫正视力(UCVA),将眼睛分为两组:恢复良好的和恢复较差的。然后,我们训练了一个深度学习模型(Resnet50),以从手术视频中预测接受SMILE手术的回顾性队列患者的术后早期视力,并随后在两个前瞻性队列中验证该模型的性能。最后,进行梯度加权类激活映射(Grad-CAM)以解释该模型。

结果

在纳入研究的318只眼睛(159名患者)中,从手术视频中获得了10176张高质量的飞秒激光扫描图像。我们观察到,所开发的深度学习模型在图像预测方面达到了96%的高精度。深度学习模型在回顾性队列中的训练数据集和验证数据集中的曲线下面积(AUC)值分别为0.962和0.998。两个前瞻性队列中的AUC值分别为0.959和0.936。在视频层面,经过训练的机器学习(ML)模型(XGBoost)也能准确区分恢复良好或恢复较差的患者。ML模型在回顾性队列中的AUC值分别为0.998(训练数据集)和0.889(测试数据集),在两个前瞻性队列中的AUC值分别为1.000和0.984。我们还训练了一个深度学习模型,它可以准确区分吸力损失(100%)、黑点(85%)和不透明气泡层(96%)。Grad-CAM热图表明,我们的模型可以识别扫描区域并精确识别术中并发症。

结论

我们的研究结果表明,人工智能(深度学习和机器学习模型)仅使用手术视频或图像就能准确预测SMILE手术后的早期视力和术中并发症,这可能对人工智能在屈光手术中的应用具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1585/10011351/1d5d493a5852/40123_2023_680_Fig1_HTML.jpg

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