鉴定糖基转移酶基因,用于诊断 T 细胞介导的排斥反应和预测肾移植中的移植物损失。

IF 1.6 4区 医学 Q4 IMMUNOLOGY
Kaifeng Mao , Fenwang Lin , Yige Pan , Juan Li , Junsheng Ye
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引用次数: 0

摘要

背景:糖基化是一个复杂而基本的代谢生物合成过程,由多种糖基转移酶(GT)和糖苷酶协调进行。人们已广泛研究了 GT 在多种人类疾病中的功能。我们的研究调查了 GT 基因在 T 细胞介导的排斥反应(TCMR)中的潜在作用以及肾移植移植物丢失的可能预测:我们分别从 GEO 和 HUGO 基因命名委员会(HGNC)数据库下载了微阵列数据集和 GT 基因。通过差异表达和维恩分析获得了差异表达的GT基因(DE-GTGs)。利用 LASSO 回归和 XGboost 机器学习算法,基于枢纽 DE-GTGs 建立了 TCMR 诊断模型。此外,还通过单变量 Cox 和 LASSO Cox 回归分析建立了移植物存活率预测模型:我们获得了 15 个 DE-GTGs 。GO和KEGG分析表明,DE-GTGs主要参与糖蛋白的生物合成过程。TCMR诊断模型显示出很高的诊断潜力,其相关准确度普遍较高[曲线下平均值(AUC)为0.83]。免疫特征分析显示,高风险组的免疫细胞浸润和免疫反应水平高于低风险组。特别是,卡普兰-梅耶生存分析显示,高风险组的肾移植预后较低风险组差。1年、2年和3年移植物存活率的预测AUC值分别为0.76、0.81和0.70:我们的研究结果表明,GT 基因可用于肾移植中 TCMR 的诊断和移植物损失的预测。这些结果为诊断、治疗和预测肾移植相关疾病提供了新的视角和工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of glycosyltransferase genes for diagnosis of T-cell mediated rejection and prediction of graft loss in kidney transplantation

Background

Glycosylation is a complex and fundamental metabolic biosynthetic process orchestrated by multiple glycosyltransferases (GT) and glycosidases enzymes. Functions of GT have been extensively examined in multiple human diseases. Our study investigated the potential role of GT genes in T-cell mediated rejection (TCMR) and possible prediction of graft loss of kidney transplantation.

Methods

We downloaded the microarray datasets and GT genes from the GEO and the HUGO Gene Nomenclature Committee (HGNC) databases, respectively. Differentially expressed GT genes (DE-GTGs) were obtained by differential expression and Venn analysis. A TCMR diagnostic model was developed based on the hub DE-GTGs using LASSO regression and XGboost machine learning algorithms. In addition, a predictive model for graft survival was constructed by univariate Cox and LASSO Cox regression analysis.

Results

We have obtained 15 DE-GTGs. Both GO and KEGG analyses showed that the DE-GTGs were mainly involved in the glycoprotein biosynthetic process. The TCMR diagnostic model exhibited high diagnostic potential with generally highly correlated accuracies [aera under the curve (AUC) of 0.83]. The immune characteristics analysis revealed that higher levels of immune cell infiltration and immune responses were observed in the high-risk group than in the low-risk group. In particular, the Kaplan-Meier survival analysis revealed that renal grafts in the high-risk group have poor prognostic outcomes than the low-risk group. The predictive AUC values of 1-, 2- and 3-year graft survival were 0.76, 0.81, and 0.70, respectively.

Conclusion

Our results indicated that GT genes could be used for diagnosis of TCMR and prediction of graft loss in kidney transplantation. These results provide new perspectives and tools for diagnosing, treating and predicting kidney transplant-related diseases.

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来源期刊
Transplant immunology
Transplant immunology 医学-免疫学
CiteScore
2.10
自引率
13.30%
发文量
198
审稿时长
48 days
期刊介绍: Transplant Immunology will publish up-to-date information on all aspects of the broad field it encompasses. The journal will be directed at (basic) scientists, tissue typers, transplant physicians and surgeons, and research and data on all immunological aspects of organ-, tissue- and (haematopoietic) stem cell transplantation are of potential interest to the readers of Transplant Immunology. Original papers, Review articles and Hypotheses will be considered for publication and submitted manuscripts will be rapidly peer-reviewed and published. They will be judged on the basis of scientific merit, originality, timeliness and quality.
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