| Literature DB >> 35480323 |
Qianguang Han1, Xiang Zhang2, Xiaohan Ren1, Zhou Hang3, Yu Yin1, Zijie Wang1, Hao Chen1, Li Sun1, Jun Tao1, Zhijian Han1, Ruoyun Tan1, Min Gu3, Xiaobing Ju1.
Abstract
Objectives: Early diagnosis and detection of acute rejection following kidney transplantation are of great significance for guiding the treatment and improving the prognosis of renal transplant recipients. In this study, we are aimed to explore the biological characteristics of biopsy-proven acute rejection (BPAR) and establish a predictive model.Entities:
Keywords: bioinformatics analysis; biopsy-proven acute rejection (BPAR); gene expression omnibus; kidney transplantation; predictive model
Year: 2022 PMID: 35480323 PMCID: PMC9037533 DOI: 10.3389/fgene.2022.844709
Source DB: PubMed Journal: Front Genet ISSN: 1664-8021 Impact factor: 4.772
GEO dates.
| GEO no | Platform | Species | Tissues | No-BPAR | BPAR | Total | Group |
|---|---|---|---|---|---|---|---|
| GSE129166 | GPL570 | Homo sapiens | kidney biopsy | 160 | 52 | 212 | validation set |
| GSE48581 | GPL570 | Homo sapiens | kidney biopsy | 222 | 84 | 306 | |
| GSE36059 | GPL570 | Homo sapiens | kidney biopsy | 281 | 130 | 411 | |
| GSE98320 | GPL15207 | Homo sapiens | kidney biopsy | 774 | 434 | 1,208 | training set |
| GSE129166 | Gene expression profiling in patients with a kidney transplantation | ||||||
| GSE48581 | Potential impact of microarray diagnosis of T cell-mediated rejection in kidney transplants: the INTERCOM study | ||||||
| GSE36059 | Molecular diagnosis of T cell-mediated rejection in human kidney transplant biopsies; Molecular diagnosis of antibody-mediated rejection in human kidney transplants | ||||||
| GSE98320 | Assessing rejection-related disease in kidney transplant biopsies based on archetypal analysis of molecular phenotypes | ||||||
FIGURE 1Differential gene expression, (A): GSE129166 (B): GSE48581 (C): GSE36059 (D): GSE98320 (E): Common differential gene expression of the four data sets. (A–D): Red represents up-regulated differential genes, green represents down-regulated differential genes.
FIGURE 2(A): the single-factor prediction model of the training set. (B): According to the expression matrix of these 30 genes in the training set, the result of random forest dimensionality reduction. (C): the multi-factor prediction model of the expression matrix of these 10 genes in the training set. (D): ROC curve of the prediction result of the training set. (E): ROC curve of the prediction result of the validation set (F–J): the expression levels of these five target genes in the samples. Blue represents the expression in the No-BPAR group and orange represents the expression in the BPAR group with a p-value less than 0.05.
FIGURE 3(A): GO function enrichment analysis results. (B): KEGG function enrichment analysis results. The color of the bar graph represents the p value, The color change from light to dark means that the p value becomes larger gradually, and the size of the endpoints represents the number of genes enriched in the pathway, the larger the endpoints the greater the number of enriched genes. (C): Protein interaction network, Protein interaction network results. (D): Statistics of the number of protein interactions, (E): The result of immune cell infiltration. The value of the abscissa represents the correlation between the infiltration of immune cells and the occurrence of BPAR. The color change from green to purple represents the gradual increase of p value, and the size of the bar graph represents the size of correlation with BPAR. Correlation >0 represents immune cells positively correlated with BPAR, and correlation <0 and immune cells negatively correlated with BPAR.
Top 20 results of GSEA enrichment analysis.
| Name | Size | ES | NES | NOM p-val | FDR q-val |
|---|---|---|---|---|---|
| KEGG_ENDOCYTOSIS | 177 | 0.494568 | 2.070416 | 0 | 0.018462 |
| KEGG_APOPTOSIS | 87 | 0.664266 | 2.019174 | 0 | 0.018245 |
| KEGG_RIG_I_LIKE_RECEPTOR_SIGNALING_PATHWAY | 68 | 0.656445 | 1.995741 | 0 | 0.01618 |
| KEGG_PROTEASOME | 42 | 0.704777 | 1.991339 | 0 | 0.012468 |
| KEGG_SNARE_INTERACTIONS_IN_VESICULAR_TRANSPORT | 36 | 0.5059 | 1.969003 | 0.005929 | 0.011168 |
| KEGG_PANCREATIC_CANCER | 68 | 0.58511 | 1.958309 | 0 | 0.010169 |
| KEGG_ANTIGEN_PROCESSING_AND_PRESENTATION | 78 | 0.845453 | 1.924868 | 0 | 0.011828 |
| KEGG_JAK_STAT_SIGNALING_PATHWAY | 149 | 0.620666 | 1.901952 | 0 | 0.013328 |
| KEGG_FC_EPSILON_RI_SIGNALING_PATHWAY | 77 | 0.654672 | 1.892084 | 0 | 0.013639 |
| KEGG_FC_GAMMA_R_MEDIATED_PHAGOCYTOSIS | 92 | 0.686529 | 1.89104 | 0 | 0.012276 |
| KEGG_CELL_ADHESION_MOLECULES_CAMS | 126 | 0.764052 | 1.874987 | 0 | 0.013555 |
| KEGG_CYTOSOLIC_DNA_SENSING_PATHWAY | 50 | 0.737671 | 1.867418 | 0 | 0.013108 |
| KEGG_SPLICEOSOME | 123 | 0.527031 | 1.859101 | 0.010225 | 0.012661 |
| KEGG_ACUTE_MYELOID_LEUKEMIA | 55 | 0.656888 | 1.858955 | 0 | 0.011922 |
| KEGG_NON_SMALL_CELL_LUNG_CANCER | 53 | 0.533476 | 1.856737 | 0 | 0.011426 |
| KEGG_T_CELL_RECEPTOR_SIGNALING_PATHWAY | 106 | 0.753891 | 1.856298 | 0 | 0.010712 |
| KEGG_TOLL_LIKE_RECEPTOR_SIGNALING_PATHWAY | 98 | 0.780624 | 1.855025 | 0 | 0.010161 |
| KEGG_NATURAL_KILLER_CELL_MEDIATED_CYTOTOXICITY | 128 | 0.793385 | 1.853225 | 0 | 0.009596 |
| KEGG_B_CELL_RECEPTOR_SIGNALING_PATHWAY | 75 | 0.762761 | 1.847685 | 0 | 0.009456 |
| KEGG_CHRONIC_MYELOID_LEUKEMIA | 71 | 0.537865 | 1.801105 | 0.00207 | 0.015214 |
FIGURE 4the interaction of the genes in the prediction model. After kidney transplantation, early inflammation recruits various immune cells, and the secreted CXCL10 combines with CXCR3 on various immune cells to induce the expression and secretion of IFN-γ, which in turn recruits more immune cells to gather. Then the inflammatory storm was aggravated, and there was a positive feedback effect of CXCL10 and IFN-γ during the whole process.
Introduction to the five target genes.
| Id | Describe | The main function |
|---|---|---|
| IDO1 | Indoleamine 2,3-dioxygenase 1 | Rate-limiting enzyme of tryptophan catabolism |
| CXCL10 | C-X-C motif chemokine 10 | Recruit immune cells |
| IFNG | Interferon gamma gene | Inflammatory factors |
| GBP1 | Guanylate-binding proteins | cell signaling pathway coupling protein |
| PMAIP1 | phorbol ester-12-myristate-13-acetate inducible protein 1 | Apoptotic protein |