| Literature DB >> 18302764 |
Xiangrong Kong1, Valeria Mas, Kellie J Archer.
Abstract
BACKGROUND: With the popularity of DNA microarray technology, multiple groups of researchers have studied the gene expression of similar biological conditions. Different methods have been developed to integrate the results from various microarray studies, though most of them rely on distributional assumptions, such as the t-statistic based, mixed-effects model, or Bayesian model methods. However, often the sample size for each individual microarray experiment is small. Therefore, in this paper we present a non-parametric meta-analysis approach for combining data from independent microarray studies, and illustrate its application on two independent Affymetrix GeneChip studies that compared the gene expression of biopsies from kidney transplant recipients with chronic allograft nephropathy (CAN) to those with normal functioning allograft.Entities:
Mesh:
Year: 2008 PMID: 18302764 PMCID: PMC2276496 DOI: 10.1186/1471-2164-9-98
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
10 identified probe sets with the lowest ranked scores for discriminating CAN vs. Normal allograft
| 205336_at | PVALB | Hs.295449 | parvalbumin | 22 | 22q13.1 | NA | 0.01 | |
| 203017_s_at | SSX2IP | Hs.22587 | synovial sarcoma, X breakpoint 2 interacting protein | 1 | 1p22.3 | Adherens junction | 0.06 | |
| 202825_at | SLC25A4 | Hs.246506 | solute carrier family 25 (mitochondrial carrier; adenine nucleotide translocator), member 4 | 4 | 4q35 | Calcium signaling pathway | 0.07 | |
| 213107_at | TNIK | Hs.34024 | TRAF2 and NCK interacting kinase | 3 | 3q26.2-q26.31 | NA | 0.09 | |
| 201086_x_at | SON | Hs.517262 | SON DNA binding protein | 21 | 21q22.11 | NA | 0.09 | |
| 21q22.1-q22.2 | ||||||||
| 218345_at | HCA112 | Hs.438823 | NA | 7 | 7q36.1 | NA | 0.09 | |
| 208751_at | NAPA | Hs.126938 | N-ethylmaleimide-sensitive factor attachment protein, alpha | 19 | 19q13.32 | NA | 0.09 | |
| 203557_s_at | PCBD1 | Hs.3192 | pterin-4 alpha-carbinolamine dehydratase/dimerization cofactor of hepatocyte nuclear factor 1 alpha (TCF1) | 10 | 10q22 | NA | 0.1 | |
| 210397_at | DEFB1 | Hs.32949 | defensin, beta 1 | 8 | 8p23.2-p23.1 | NA | 0.1 | |
| 219350_s_at | DIABLO | Hs.169611 | diablo homolog (Drosophila) | 12 | 12q24.31 | NA | 0.1 |
Figure 1Heatmaps of the top 50 identified genes (a) Hotchkiss study. (b) Mas study.
Figure 2The differential expression pattern of gene (a) PVALB (Affy ID "205336_at") and gene (b) ITGAE (Affy ID "205055_at").
Over-represented KEGG pathways by Fisher exact test, at significance level 0.01
| Oxidative phosphorylation | 14 | 158 | 0 |
| ATP synthesis | 7 | 59 | 0 |
| Citrate cycle (TCA cycle) | 5 | 42 | 0 |
| Reductive carboxylate cycle (CO2 fixation) | 3 | 15 | 0 |
| Cholera – Infection | 6 | 84 | 0.01 |
| Methionine metabolism | 3 | 23 | 0.01 |
Mean sensitivity and specificity using the non-parametric approach and t-statistic based approach from the 30 simulations, under two scenarios of different sample sizes. (SD: standard deviation)
| Meta-analysis approach | Scenario I: | Scenario II: | ||
| Sensitivity (%) (SD) | Specificity (%) (SD) | Sensitivity (%) (SD) | Specificity (%) (SD) | |
| KNN based non-parametric | 78.15 (2.90) | 99.83 (0.10) | 84.83 (2.68) | 99.96 (0.06) |
| t-statistic based parametric | 75.77 (3.19) | 96.02 (0.78) | 77.00 (3.01) | 96.00 (0.55) |
Figure 3Normal density plot to illustrate the selection of the threshold for the scores.
Figure 4Flowchart illustrating our non-parametric meta-analysis approach.
2 × 2 Table for testing whether pathway j was over-represented in the identified genes (To test H0: the number of genes in pathway p is independent of the number of identified genes relevant to CAN. Vs. H1: the number of genes in pathway p is over-represented in the identified genes relevant to CAN, since all the marginal values are given, Fisher's exact test is used. The p-value from the test is , where gdenotes the observed value of G)