qPCR与RNA-seq的比较揭示了HLA表达定量的挑战。

IF 2.9 4区 医学 Q2 GENETICS & HEREDITY Immunogenetics Pub Date : 2023-06-01 DOI:10.1007/s00251-023-01296-7
Vitor R C Aguiar, Erick C Castelli, Richard M Single, Arman Bashirova, Veron Ramsuran, Smita Kulkarni, Danillo G Augusto, Maureen P Martin, Maria Gutierrez-Arcelus, Mary Carrington, Diogo Meyer
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引用次数: 5

摘要

人类白细胞抗原(HLA) I类和II类位点是先天免疫和获得性免疫的基本要素。它们的功能包括抗原呈递到T细胞,导致细胞和体液免疫反应,以及调节NK细胞。它们对疾病结果的特殊影响现在已被全基因组关联研究明确。编码肽结合槽的外显子一直是确定HLA对疾病易感性/发病机制影响的主要焦点。然而,HLA表达水平也与疾病结果有关,这为HLA的极端多样性增加了另一个维度,即影响个体免疫反应的可变性。为了估计HLA表达,免疫遗传学研究传统上依赖于定量PCR (qPCR)。由于HLA基因的极端多态性,RNA-seq等替代高通量技术的采用一直受到技术问题的阻碍。然而,最近已经开发了多种生物信息学方法来从RNA-seq数据中准确估计HLA表达。这为在大型数据集中量化HLA表达提供了一个令人兴奋的机会,但也带来了RNA-seq结果是否与qPCR结果相当的问题。在这项研究中,我们分析了一组匹配个体中HLA I类基因的三类表达数据:(a) RNA-seq, (b) qPCR和(c)细胞表面HLA- c表达。我们观察到qPCR和RNA-seq对HLA-A、-B和-C的表达估计之间存在中度相关性(0.2≤rho≤0.53)。我们讨论了在比较不同分子表型或使用不同技术的定量时需要考虑的技术和生物因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Comparison between qPCR and RNA-seq reveals challenges of quantifying HLA expression.

Human leukocyte antigen (HLA) class I and II loci are essential elements of innate and acquired immunity. Their functions include antigen presentation to T cells leading to cellular and humoral immune responses, and modulation of NK cells. Their exceptional influence on disease outcome has now been made clear by genome-wide association studies. The exons encoding the peptide-binding groove have been the main focus for determining HLA effects on disease susceptibility/pathogenesis. However, HLA expression levels have also been implicated in disease outcome, adding another dimension to the extreme diversity of HLA that impacts variability in immune responses across individuals. To estimate HLA expression, immunogenetic studies traditionally rely on quantitative PCR (qPCR). Adoption of alternative high-throughput technologies such as RNA-seq has been hampered by technical issues due to the extreme polymorphism at HLA genes. Recently, however, multiple bioinformatic methods have been developed to accurately estimate HLA expression from RNA-seq data. This opens an exciting opportunity to quantify HLA expression in large datasets but also brings questions on whether RNA-seq results are comparable to those by qPCR. In this study, we analyze three classes of expression data for HLA class I genes for a matched set of individuals: (a) RNA-seq, (b) qPCR, and (c) cell surface HLA-C expression. We observed a moderate correlation between expression estimates from qPCR and RNA-seq for HLA-A, -B, and -C (0.2 ≤ rho ≤ 0.53). We discuss technical and biological factors which need to be accounted for when comparing quantifications for different molecular phenotypes or using different techniques.

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来源期刊
Immunogenetics
Immunogenetics 医学-免疫学
CiteScore
6.20
自引率
6.20%
发文量
48
审稿时长
1 months
期刊介绍: Immunogenetics publishes original papers, brief communications, and reviews on research in the following areas: genetics and evolution of the immune system; genetic control of immune response and disease susceptibility; bioinformatics of the immune system; structure of immunologically important molecules; and immunogenetics of reproductive biology, tissue differentiation, and development.
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