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探讨乳糜泻的早期代谢特征 - 一种前瞻性方法。

Investigating the early metabolic fingerprint of celiac disease - a prospective approach.

机构信息

Ludwig-Maximilians-Universität München, Division of Metabolic and Nutritional Medicine, Dr. von Hauner Children's Hospital, University of Munich Medical Center, Munich, Germany.

Dept. of Medical Translational Sciences and European Laboratory for the Investigation of Food-Induced Diseases, University Federico II, Naples, Italy.

出版信息

J Autoimmun. 2016 Aug;72:95-101. doi: 10.1016/j.jaut.2016.05.006. Epub 2016 Jun 17.

Abstract

OBJECTIVES AND STUDY

In the development of Celiac Disease (CD) both genetic and environmental factors play a crucial role. The Human Leukocyte Antigen (HLA)-DQ2 and HLA-DQ8 loci are strongly related to the disease and are necessary but not sufficient for the development of CD. Therefore, increasing interest lies in examining the mechanisms of CD onset from the early beginning. Differences in serum and urine metabolic profiles between healthy individuals and CD patients have been reported previously. We aimed to investigate if the metabolic pathways were already altered in young, 4 month old infants, preceding the CD diagnosis.

METHODS

Serum samples were available for 230 four month old infants of the PreventCD project, a multicenter, randomized, double-blind, dietary intervention study. All children were positive for HLA-DQ2 and/or HLA-DQ8 and had at least one first-degree relative diagnosed with CD. Amino acids were quantified after derivatization with liquid chromatography - tandem mass spectrometry (MS/MS) and polar lipid concentrations (acylcarnitines, lysophosphatidylcholines, phosphatidylcholines, and sphingomyelins) were determined with direct infusion MS/MS. We investigated the association of the metabolic profile with (1) the development of CD up to the age of 8 years (yes/no), (2) with HLA-risk groups, (3) with the age at CD diagnosis, using linear mixed models and cox proportional hazards models. Gender, intervention group, and age at blood withdrawal were included as potential confounder.

RESULTS

By the end of 2014, thirty-three out of the 230 children (14%) were diagnosed with CD according to the ESPGHAN criteria. Median age at diagnosis was 3.4 years (IQR, 2.4-5.2). Testing each metabolite for a difference in the mean between healthy and CD children, we (1) could not identify a discriminant analyte or a pattern pointing towards an altered metabolism (Bonferroni corrected P > 0.05 for all). Metabolite concentrations (2) did not differ across the HLA-risk groups. When investigating the age at diagnosis using (3) survival models, we found no evidence for an association between the metabolic profile and the risk of a later CD diagnosis.

CONCLUSION

The metabolic profile at 4 months of age was not predictive for the development of CD up to the age of 8 years. Our results suggest that metabolic pathways reflected in serum are affected only later in life and that the HLA-genotype does not influence the serum metabolic profile in young infants before introduction of solid food.

摘要

目的和研究

在乳糜泻(CD)的发展过程中,遗传和环境因素都起着至关重要的作用。人类白细胞抗原(HLA)-DQ2 和 HLA-DQ8 基因座与该疾病密切相关,是其发展的必要条件,但不是充分条件。因此,人们越来越关注从早期开始研究 CD 发病的机制。先前已经报道了健康个体和 CD 患者之间血清和尿液代谢谱的差异。我们旨在研究在 CD 诊断之前,在年轻的 4 个月大的婴儿中,代谢途径是否已经发生改变。

方法

本研究纳入了 230 名来自 PreventCD 项目的 4 个月大的婴儿的血清样本,该项目是一项多中心、随机、双盲、饮食干预研究。所有儿童均为 HLA-DQ2 和/或 HLA-DQ8 阳性,且至少有一名一级亲属被诊断为 CD。氨基酸经液相色谱-串联质谱(MS/MS)衍生化后定量,极性脂质浓度(酰基肉碱、溶血磷脂酰胆碱、磷脂酰胆碱和神经鞘磷脂)采用直接进样 MS/MS 进行测定。我们通过线性混合模型和 Cox 比例风险模型,研究了代谢谱与(1)8 岁时 CD 的发展(是/否),(2)与 HLA 风险组,(3)与 CD 诊断年龄的相关性。性别、干预组和采血时的年龄被纳入潜在混杂因素。

结果

截至 2014 年底,根据 ESPGHAN 标准,230 名儿童中有 33 名(14%)被诊断为 CD。中位诊断年龄为 3.4 岁(IQR,2.4-5.2)。对健康儿童和 CD 儿童之间的平均差异进行测试,我们(1)没有发现一个判别分析物或一种指向代谢改变的模式(所有校正后的 Bonferroni 检验 P>0.05)。(2)代谢物浓度在 HLA 风险组之间没有差异。当使用(3)生存模型研究诊断年龄时,我们没有发现代谢谱与以后 CD 诊断风险之间存在关联的证据。

结论

4 个月大时的代谢谱并不能预测 8 岁时 CD 的发展。我们的结果表明,血清中反映的代谢途径仅在生命后期受到影响,并且在引入固体食物之前,HLA 基因型不会影响年轻婴儿的血清代谢谱。

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