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利用人工智能研究性别和年龄对老年人睑板腺的影响。

Impacts of gender and age on meibomian gland in aged people using artificial intelligence.

作者信息

Huang Binge, Fei Fangrong, Wen Han, Zhu Ye, Wang Zhenzhen, Zhang Shuwen, Hu Liang, Chen Wei, Zheng Qinxiang

机构信息

School of Ophthalmology and Optometry, Eye Hospital, Wenzhou Medical University, Wenzhou, China.

Zhejiang Provincial Center for Disease Control and Prevention, Hangzhou, China.

出版信息

Front Cell Dev Biol. 2023 Jun 15;11:1199440. doi: 10.3389/fcell.2023.1199440. eCollection 2023.

Abstract

To evaluate the effects of age and gender on meibomian gland (MG) parameters and the associations among MG parameters in aged people using a deep-learning based artificial intelligence (AI). A total of 119 subjects aged ≥60 were enrolled. Subjects completed an ocular surface disease index (OSDI) questionnaire, received ocular surface examinations including Meibography images captured by Keratograph 5M, diagnosis of meibomian gland dysfunction (MGD) and assessment of lid margin and meibum. Images were analyzed using an AI system to evaluate the MG area, density, number, height, width and tortuosity. The mean age of the subjects was 71.61 ± 7.36 years. The prevalence of severe MGD and meibomian gland loss (MGL) increased with age, as well as the lid margin abnormities. Gender differences of MG morphological parameters were most significant in subjects less than 70 years old. The MG morphological parameters detected by AI system had strong relationship with the traditional manual evaluation of MGL and lid margin parameters. Lid margin abnormities were significantly correlated with MG height and MGL. OSDI was related to MGL, MG area, MG height, plugging and lipid extrusion test (LET). Male subjects, especially the ones who smoke or drink, had severe lid margin abnormities, and significantly decreased MG number, height, and area than the females. The AI system is a reliable and high-efficient method for evaluating MG morphology and function. MG morphological abnormities developed with age and were worse in the aging males, and smoking and drinking were risk factors.

摘要

使用基于深度学习的人工智能(AI)评估年龄和性别对老年人睑板腺(MG)参数的影响以及MG参数之间的关联。共纳入119名年龄≥60岁的受试者。受试者完成眼表疾病指数(OSDI)问卷,接受包括使用角膜地形图仪5M采集睑板腺造影图像在内的眼表检查、睑板腺功能障碍(MGD)诊断以及睑缘和睑脂评估。使用AI系统分析图像以评估MG面积、密度、数量、高度、宽度和迂曲度。受试者的平均年龄为71.61±7.36岁。重度MGD和睑板腺缺失(MGL)的患病率随年龄增加,睑缘异常情况也是如此。MG形态学参数的性别差异在70岁以下的受试者中最为显著。AI系统检测到的MG形态学参数与MGL和睑缘参数的传统手动评估有很强的相关性。睑缘异常与MG高度和MGL显著相关。OSDI与MGL、MG面积、MG高度、堵塞和脂质挤压试验(LET)有关。男性受试者,尤其是吸烟或饮酒者,睑缘异常严重,MG数量、高度和面积比女性显著减少。AI系统是评估MG形态和功能的可靠且高效的方法。MG形态异常随年龄发展,在老年男性中更严重,吸烟和饮酒是危险因素。

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