| Literature DB >> 30706161 |
Joanna Zyla1, Sylwia Kabacik2, Grainne O'Brien3, Salma Wakil4, Najla Al-Harbi5, Jaakko Kaprio6, Christophe Badie3, Joanna Polanska7, Ghazi Alsbeih5.
Abstract
Individual variability in response to radiation exposure is recognised and has often been reported as important in treatment planning. Despite many efforts to identify biomarkers allowing the identification of radiation sensitive patients, it is not yet possible to distinguish them with certainty before the beginning of the radiotherapy treatment. A comprehensive analysis of genome-wide single-nucleotide polymorphisms (SNPs) and a transcriptional response to ionising radiation exposure in twins have the potential to identify such an individual. In the present work, we investigated SNP profile and CDKN1A gene expression in blood T lymphocytes from 130 healthy Caucasians with a complex level of individual kinship (unrelated, mono- or dizygotic twins). It was found that genetic variation accounts for 66% (95% CI 37-82%) of CDKN1A transcriptional response to radiation exposure. We developed a novel integrative multi-kinship strategy allowing investigating the role of genome-wide polymorphisms in transcriptomic radiation response, and it revealed that rs205543 (ETV6 gene), rs2287505 and rs1263612 (KLF7 gene) are significantly associated with CDKN1A expression level. The functional analysis revealed that rs6974232 (RPA3 gene), involved in mismatch repair (p value = 9.68e-04) as well as in RNA repair (p value = 1.4e-03) might have an important role in that process. Two missense polymorphisms with possible deleterious effect in humans were identified: rs1133833 (AKIP1 gene) and rs17362588 (CCDC141 gene). In summary, the data presented here support the validity of this novel integrative data analysis strategy to provide insights into the identification of SNPs potentially influencing radiation sensitivity. Further investigations in radiation response research at the genomic level should be therefore continued to confirm these findings.Entities:
Keywords: CDKN1A; GWAS; Radiation response; Twin study; p value integration
Mesh:
Substances:
Year: 2019 PMID: 30706161 PMCID: PMC6570669 DOI: 10.1007/s10142-019-00658-3
Source DB: PubMed Journal: Funct Integr Genomics ISSN: 1438-793X Impact factor: 3.410
The rules of splitting DZ and MZ twins into identical by model (IBM) and non-identical by model (nIBM) subgroups based on the best model of SNP-CDKN1A interaction found in unrelated population (unR). Letters A and B code for the genotyping results, A stands for reference allele, while B for mutant one
| Sibling 1 | Sibling 2 | The best model of interaction in unR population | ||
|---|---|---|---|---|
| Genotype | Dominant, AA vs xB | Recessive, Ax vs BB | ||
| AA | AA | IBM | IBM | IBM |
| AA | AB | nIBM | nIBM | IBM |
| AA | BB | nIBM | nIBM | nIBM |
| AB | AA | nIBM | nIBM | IBM |
| AB | AB | IBM | IBM | IBM |
| AB | BB | nIBM | IBM | nIBM |
| BB | AA | nIBM | nIBM | nIBM |
| BB | AB | nIBM | IBM | nIBM |
| BB | BB | IBM | IBM | IBM |
Fig. 1The statistical analysis pipelines, where a represents the standard statistical analysis and b represents the developed novel statistical analysis procedure. Both are dedicated to the testing association in complex study design
Result of heritability investigation for CDKN1A expression in response to radiation of dose 2 Gy (2 Gy vs 0 Gy ratio)
| Model | BIC | A [95% CI] | D [95% CI] | E [95% CI] | LRT |
|---|---|---|---|---|---|
| ADE | 240 | 51 [0–82] | 15 [0–81] | 34 [0–63] | 0.0005 |
| AE | 235 | 66 [37–82] | – | 34 [0–62] | 0.0001 |
| E | 246 | – | – | 100 [100–100] | – |
The data analysis results (after MZ twin validation) for both methods and signal at 2 Gy vs 0 Gy ratio. The first column represents the standard approach (Stand.), while the second column represents a novel integrative approach (Int.)
| 2 Gy vs 0 Gy ratio | Genotype | Dominant | Recessive | Total | Common | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| Stand | Int | Stand | Int | Stand | Int | Stand | Int | |||
| Initially, # of SNPs | 2093 | 177,481 | 203,748 | 383,322 | – | |||||
| # candidate SNPs | 1 | 52 | 92 | 839 | 88 | 913 | 181 | 1804 | 147 [81%] | |
| # SNPs in genes | 1 | 25 | 50 | 406 | 45 | 418 | 96 | 849 | 78 [81%] | |
| # unique protein-coding genes | 81 | 615 | 74 [91%] | |||||||
Fig. 2Levels of signal response (2 Gy vs 0 Gy) in the recessive genetic model under different genotypes and different kinship classes for a rs710652 polymorphism in KCNMB4, b rs205543 in ETV6, c rs1263612 in KLF7 and d rs6974232 in RPA3 genes. The two left-side plots represent the 95% confidence interval for the mean of CDKN1A gene expression. The right-side plots represent the expression levels for non-identical by model (nIBM) dizygotic twins, where discontinued green colour lines represent identical response trend while discontinued red colour lines represent opposite response trend amongst unR and DZ nIBM
Result of the investigation on transcription factors and phosphorylation proteins
| Gene | rs ID | Model of interaction | Type of interaction with CDKN1Aa | Integrated | Ref |
|---|---|---|---|---|---|
|
| 205543 | AX vs BB | TF | 4.39e−04 | (Yamagata et al. |
|
| 2287505 | AX vs BB | RoTL | 8.56e−04 | (Smaldone et al. |
| 1263612 | AX vs BB | 9.27e−04 |
aTF transcription factor, RoTL Regulation on transcription level
The summary results for overrepresentation analysis
| KEGG | GO [BP] | |
|---|---|---|
| Standard | 4 | 99 |
| Integrative | 46 | 399 |
| Common | 4 | 17 |