伴有睑板腺功能障碍的干眼病患者结膜穹窿抽吸物的基因表达特征概念验证研究

IF 5.9 1区 医学 Q1 OPHTHALMOLOGY
Carlos Vergés , Ana Giménez-Capitán , Verónica Ribas , José Salgado-Borges , Francesc March de Ribot , Clara Mayo-de-las-Casas , Noelia Armiger-Borras , Carlos Pedraz , Miguel Ángel Molina-Vila
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引用次数: 0

摘要

背景睑板腺功能障碍(MGD)是眼科最常见的疾病之一,也是蒸发性干眼病(DED)最常见的病因。然而,导致这种病理的免疫机制尚不完全清楚,可用的诊断测试也有限。在此,我们使用nCounter技术分析了DED-MGD中的免疫基因表达,可用于开发DED的诊断特征。RNA被纯化、转化为cDNA、预扩增并使用基因表达人类免疫V2面板(NanoString)进行分析,该面板包括579个靶基因和15个管家基因。应用机器学习(ML)算法设计与DED-MGD相关的特征。结果与对照组相比,DED-MGD中有五个免疫基因上调,涉及八种信号通路,IFN I/II、MHC I/II类、免疫代谢、B细胞受体、T细胞受体和T辅助17(Th-17)分化。此外,在31个基因与疾病的临床特征(如眼睑边缘或泪液渗透压)之间发现了统计学上显著的相关性(Pearson的r<0.05)。使用递归特征消除(RFE)算法的ML分析选择了一个4基因mRNA特征,该特征将DED-MGD与对照样品区分开来,ROC曲线下面积(AUC ROC)为0.86,准确度为结论结膜细胞的多重信使核糖核酸分析可用于分析DED-MGD患者的免疫基因表达模式并产生诊断信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gene expression signatures in conjunctival fornix aspirates of patients with dry eye disease associated with Meibomian gland dysfunction. A proof-of-concept study

Background

Meibomian gland dysfunction (MGD) is one of the most common conditions in ophthalmic practice and the most frequent cause of evaporative dry eye disease (DED). However, the immune mechanisms leading to this pathology are not fully understood and the diagnostic tests available are limited. Here, we used the nCounter technology to analyze immune gene expression in DED-MGD that can be used for developing diagnostic signatures for DED.

Methods

Conjunctival cell samples were obtained by aspiration from patients with DED-MGD (n = 27) and asymptomatic controls (n = 22). RNA was purified, converted to cDNA, preamplified and analyzed using the Gene Expression Human Immune V2 panel (NanoString), which includes 579 target and 15 housekeeping genes. A machine learning (ML) algorithm was applied to design a signature associated with DED-MGD.

Results

Forty-five immune genes were found upregulated in DED-MGD vs. controls, involved in eight signaling pathways, IFN I/II, MHC class I/II, immunometabolism, B cell receptor, T Cell receptor, and T helper-17 (Th-17) differentiation. Additionally, statistically significant correlations were found between 31 genes and clinical characteristics of the disease such as lid margin or tear osmolarity (Pearson's r < 0.05). ML analysis using a recursive feature elimination (RFE) algorithm selected a 4-gene mRNA signature that discriminated DED-MGD from control samples with an area under the ROC curve (AUC ROC) of 0.86 and an accuracy of 77.5%.

Conclusions

Multiplexed mRNA analysis of conjunctival cells can be used to analyze immune gene expression patterns in patients with DED-MGD and to generate diagnostic signatures.

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来源期刊
Ocular Surface
Ocular Surface 医学-眼科学
CiteScore
11.60
自引率
14.10%
发文量
97
审稿时长
39 days
期刊介绍: The Ocular Surface, a quarterly, a peer-reviewed journal, is an authoritative resource that integrates and interprets major findings in diverse fields related to the ocular surface, including ophthalmology, optometry, genetics, molecular biology, pharmacology, immunology, infectious disease, and epidemiology. Its critical review articles cover the most current knowledge on medical and surgical management of ocular surface pathology, new understandings of ocular surface physiology, the meaning of recent discoveries on how the ocular surface responds to injury and disease, and updates on drug and device development. The journal also publishes select original research reports and articles describing cutting-edge techniques and technology in the field. Benefits to authors We also provide many author benefits, such as free PDFs, a liberal copyright policy, special discounts on Elsevier publications and much more. Please click here for more information on our author services. Please see our Guide for Authors for information on article submission. If you require any further information or help, please visit our Support Center
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