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一种从睑板腺图像预测干眼相关体征、症状和诊断的机器学习方法。

A machine learning approach to predicting dry eye-related signs, symptoms and diagnoses from meibography images.

作者信息

Graham Andrew D, Kothapalli Tejasvi, Wang Jiayun, Ding Jennifer, Tse Vivien, Asbell Penny A, Yu Stella X, Lin Meng C

机构信息

Vision Science Group, University of California, Berkeley, United States.

Clinical Research Center, School of Optometry, University of California, Berkeley, United States.

出版信息

Heliyon. 2024 Aug 13;10(17):e36021. doi: 10.1016/j.heliyon.2024.e36021. eCollection 2024 Sep 15.

Abstract

PURPOSE

To use artificial intelligence to identify relationships between morphological characteristics of the Meibomian glands (MGs), subject factors, clinical outcomes, and subjective symptoms of dry eye.

METHODS

A total of 562 infrared meibography images were collected from 363 subjects (170 contact lens wearers, 193 non-wearers). Subjects were 67.2 % female and were 54.8 % Caucasian. Subjects were 18 years of age or older. A deep learning model was trained to take meibography as input, segment the individual MG in the images, and learn their detailed morphological features. Morphological characteristics were then combined with clinical and symptom data in prediction models of MG function, tear film stability, ocular surface health, and subjective discomfort and dryness. The models were analyzed to identify the most heavily weighted features used by the algorithm for predictions.

RESULTS

MG morphological characteristics were heavily weighted predictors for eyelid notching and vascularization, MG expressate quality and quantity, tear film stability, corneal staining, and comfort and dryness ratings, with accuracies ranging from 65 % to 99 %. Number of visible MG, along with other clinical parameters, were able to predict MG dysfunction, aqueous deficiency and blepharitis with accuracies ranging from 74 % to 85 %.

CONCLUSIONS

Machine learning-derived MG morphological characteristics were found to be important in predicting multiple signs, symptoms, and diagnoses related to MG dysfunction and dry eye. This deep learning method illustrates the rich clinical information that detailed morphological analysis of the MGs can provide, and shows promise in advancing our understanding of the role of MG morphology in ocular surface health.

摘要

目的

利用人工智能识别睑板腺(MG)的形态特征、个体因素、临床结局与干眼主观症状之间的关系。

方法

共收集了363名受试者(170名隐形眼镜佩戴者,193名非佩戴者)的562张红外睑板腺图像。受试者中67.2%为女性,54.8%为白种人。受试者年龄在18岁及以上。训练了一个深度学习模型,将睑板腺图像作为输入,分割图像中的单个睑板腺,并了解其详细的形态特征。然后将形态特征与临床和症状数据相结合,用于睑板腺功能、泪膜稳定性、眼表健康以及主观不适和干涩的预测模型。对模型进行分析,以识别算法用于预测的权重最大的特征。

结果

睑板腺形态特征是眼睑切迹和血管化、睑板腺分泌物质量和数量、泪膜稳定性、角膜染色以及舒适度和干涩评分的重要预测指标,准确率在65%至99%之间。可见睑板腺的数量以及其他临床参数能够预测睑板腺功能障碍、水样液缺乏和睑缘炎,准确率在74%至85%之间。

结论

发现机器学习得出的睑板腺形态特征在预测与睑板腺功能障碍和干眼相关的多种体征、症状和诊断方面具有重要意义。这种深度学习方法说明了睑板腺详细形态分析所能提供的丰富临床信息,并有望增进我们对睑板腺形态在眼表健康中作用的理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bfc4/11403426/b04acbe9f1bd/gr1.jpg

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