| Literature DB >> 32326960 |
Abstract
BACKGROUND: Since it is assumed that genetic interactions play an important role in understanding the mechanisms of complex diseases, different statistical approaches have been suggested in recent years for this task. One interesting approach is the entropy-based IGENT method by Kwon et al. that promises an efficient detection of main effects and interaction effects simultaneously. However, a modification is required if the aim is to only detect interaction effects.Entities:
Keywords: Entropy; Gene-gene-interactions; IGENT
Mesh:
Substances:
Year: 2020 PMID: 32326960 PMCID: PMC7181579 DOI: 10.1186/s12920-020-0703-4
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.063
Odds tables and ideal HLO-matrices for five interaction models
| Odds | HLO | |||||
|---|---|---|---|---|---|---|
| Multiplicative model | bb | bB | BB | bb | bB | BB |
| aa | H | L | L | |||
| aA | L | H | H | |||
| AA | L | H | H | |||
| Epistasis model | bb | bB | BB | |||
| aa | L | H | H | |||
| aA | H | L | L | |||
| AA | H | L | L | |||
| Two allele interaction-model | bb | bB | BB | bb | bB | BB |
| aa | L | L | H | |||
| aA | L | H | L | |||
| AA | H | L | L | |||
| XOR model | bb | bB | BB | bb | bB | BB |
| aa | L | H | L | |||
| aA | H | L | H | |||
| AA | L | H | L | |||
| No margin-model with MAF=0.25 | bb | bB | BB | bb | bB | BB |
| aa | 0.03 | 0.10 | 0.08 | L | H | H |
| aA | 0.09 | 0.01 | 0.04 | H | L | L |
| AA | 0.10 | 0.01 | 0.00 | H | L | O |
α, prevalence parameter, and θ, multiplicative interaction parameter. High (H), low (L), and undetermined (O) risk genotype combinations in the interaction models
Fig. 1Odds in case-control scenario of model 1 (multiplicative model) with MAF=0.4
Fig. 2Odds in case-control scenario of model 2 (epistasis model) with MAF=0.4
Fig. 3Odds in case-control scenario of model 3 (Two allele interaction model) with MAF=0.4
Fig. 4Odds in case-control scenario of model 4 (XOR model) with MAF=0.4
Fig. 5Odds in case-control scenario of model 5 (Model with no margin effects) with MAF=0.25
Type I error in simulated data at cut-off from gamma distribution with shape parameter 2
| Threshold | Type I error |
|---|---|
| 5×10−2 | 5.38×10−2 |
| 5×10−3 | 5.39×10−3 |
| 5×10−4 | 5.41×10−4 |
| 5×10−5 | 5.36×10−5 |
| 5×10−6 | 5.25×10−6 |
Fig. 6Power in simulation data. Approaches are the proposed estimator IGmod0 (with cutoff = 0.012836), logistic regression (LogReg), likelihood ratio test (LRT), and TIG as proposed by Fan et al. [21] for different minor allele frequencies (MAF)
HLO-matrix for frequent submodels in the multiplicative model (MAF=0.2) with frequency and power in simulated data
| Power | Power | |||||
|---|---|---|---|---|---|---|
| HLO-matrix | Freq | Logistic regression | ||||
| bb | bB | BB | 0.07 | 0.90 | 1 | |
| aa | H | L | L | |||
| aA | L | H | H | |||
| AA | L | H | H | |||
| bb | bB | BB | 0.36 | 0.76 | 0.99 | |
| aa | H | L | L | |||
| aA | L | H | H | |||
| AA | L | H | O | |||
| bb | bB | BB | 0.08 | 0.53 | 0.88 | |
| aa | H | L | L | |||
| aA | L | H | H | |||
| AA | L | O | O | |||
| bb | bB | BB | 0.07 | 0.49 | 0.91 | |
| aa | H | L | L | |||
| aA | L | H | O | |||
| AA | L | H | O | |||
| bb | bB | BB | 0.07 | 0.42 | 0.83 | |
| aa | H | L | L | |||
| aA | L | O | H | |||
| AA | L | H | O | |||
Frequency (freq) of specific submodels and power to detect the interaction for specific submodels. Submodels are described by HLO-matrices as illustrated in Table 1
HLO-matrix for frequent submodels in the epistasis model (MAF=0.1) with frequency and power in simulated data
| Power | Power | |||||
|---|---|---|---|---|---|---|
| HLO-matrix | Freq | Logistic regression | ||||
| bb | bB | BB | 0.14 | 0.99 | 0.98 | |
| aa | L | H | H | |||
| aA | H | L | O | |||
| AA | H | O | O | |||
| bb | bB | BB | 0.22 | 0.99 | 0.87 | |
| aa | L | H | O | |||
| aA | H | L | O | |||
| AA | H | O | O | |||
| bb | bB | BB | 0.23 | 0.96 | 0.91 | |
| aa | L | H | H | |||
| aA | H | L | O | |||
| AA | O | O | O | |||
| bb | bB | BB | 0.41 | 0.95 | 0.65 | |
| aa | L | H | O | |||
| aA | H | L | O | |||
| AA | O | O | O | |||
Frequency (freq) of specific submodels and power to detect the interaction for specific submodels. Submodels are described by HLO-matrices as illustrated in Table 1
Interactions detected by but not logistic regression
| SNP pair | pos SNP 1 | pos SNP 2 | Submodel | MAF 1 | MAF 2 | p SNP 1 | p SNP 2 | TS pair | |
|---|---|---|---|---|---|---|---|---|---|
| rs1063355:rs7774434 | 32735692 | 32765556 | Multi | 0.37 | 0.44 | 9.68E-14 | 5.09E-19 | 0.018961 | 6.31E-09 |
| rs1063355:rs9275374 | 32735692 | 32776504 | Multi | 0.37 | 0.35 | 9.68E-14 | 1.22E-56 | 0.020315 | 1.11E-09 |
| rs1063355:rs9275388 | 32735692 | 32777062 | Multi | 0.37 | 0.34 | 9.68E-14 | 2.54E-53 | 0.018774 | 8.01E-09 |
| rs1063355:rs9275390 | 32735692 | 32777134 | Multi | 0.37 | 0.35 | 9.68E-14 | 1.22E-56 | 0.020315 | 1.11E-09 |
| rs1063355:rs9275393 | 32735692 | 32777417 | Multi | 0.37 | 0.35 | 9.68E-14 | 1.47E-56 | 0.020343 | 1.07E-09 |
| rs1063355:rs9275406 | 32735692 | 32777933 | Multi | 0.37 | 0.34 | 9.68E-14 | 2.29E-56 | 0.020699 | 6.78E-10 |
| rs1063355:rs9275407 | 32735692 | 32778015 | Multi | 0.37 | 0.34 | 9.68E-14 | 1.44E-53 | 0.021665 | 1.95E-10 |
| rs1063355:rs9275418 | 32735692 | 32778222 | Multi | 0.37 | 0.35 | 9.68E-14 | 7.88E-57 | 0.020276 | 1.17E-09 |
| rs1063355:rs9275424 | 32735692 | 32778554 | Multi | 0.37 | 0.35 | 9.68E-14 | 7.88E-57 | 0.020314 | 1.11E-09 |
| rs1063355:rs9275425 | 32735692 | 32778852 | Multi | 0.37 | 0.34 | 9.68E-14 | 1.96E-52 | 0.019848 | 2.03E-09 |
| rs1063355:rs9275427 | 32735692 | 32778893 | Multi | 0.37 | 0.35 | 9.68E-14 | 6.95E-57 | 0.020023 | 1.62E-09 |
| rs1063355:rs9275428 | 32735692 | 32778956 | Multi | 0.37 | 0.35 | 9.68E-14 | 3.13E-56 | 0.019946 | 1.79E-09 |
| rs1063355:rs9275439 | 32735692 | 32779499 | Multi | 0.37 | 0.34 | 9.68E-14 | 6.63E-54 | 0.020084 | 1.50E-09 |
| rs2256175:rs9275224 | 31488428 | 32767856 | Multi incompl | 0.44 | 0.37 | 3.24E-15 | 6.52E-90 | 0.018158 | 1.76E-08 |
| rs1055569:rs4424066 | 31548061 | 32462406 | Multi incompl | 0.32 | 0.45 | 3.23E-08 | 1.07E-66 | 0.018868 | 7.11E-09 |
| rs1055569:rs3817973 | 31548061 | 32469089 | Multi incompl | 0.32 | 0.45 | 3.23E-08 | 1.91E-67 | 0.019307 | 4.06E-09 |
| rs1055569:rs2076530 | 31548061 | 32471794 | Multi incompl | 0.32 | 0.45 | 3.23E-08 | 4.92E-64 | 0.018858 | 7.20E-09 |
| rs9267911:rs3130320 | 32313088 | 32331236 | Multi incompl | 0.41 | 0.28 | 3.26E-36 | 2.10E-32 | 0.020101 | 1.46E-09 |
| rs1055569:rs2395157 | 31548061 | 32456123 | Epi | 0.32 | 0.38 | 3.23E-08 | 2.27E-60 | 0.017474 | 4.18E-08 |
| rs2844509:rs3817963 | 31618903 | 32476065 | Epi | 0.21 | 0.40 | 9.59E-19 | 7.20E-58 | 0.018005 | 2.13E-08 |
| rs6941112:rs9275595 | 32054593 | 32789333 | Epi | 0.37 | 0.32 | 6.08E-16 | 9.50E-63 | 0.017436 | 4.38E-08 |
| rs9268615:rs6903608 | 32510867 | 32536263 | Epi | 0.47 | 0.23 | 6.58E-44 | 8.39E-53 | 0.031001 | 8.87E-16 |
| rs2395185:rs7745656 | 32541145 | 32788948 | Epi | 0.43 | 0.22 | 6.41E-71 | 1.71E-38 | 0.019093 | 5.33E-09 |
| rs477515:rs7745656 | 32677669 | 32788948 | Epi | 0.42 | 0.22 | 6.18E-67 | 1.71E-38 | 0.026765 | 2.46E-13 |
| rs2516049:rs7745656 | 32678378 | 32788948 | Epi | 0.42 | 0.22 | 1.83E-66 | 1.71E-38 | 0.026215 | 5.08E-13 |
| rs382259:rs2647012 | 32317005 | 32772436 | XOR | 0.22 | 0.29 | 6.52E-28 | 2.26E-54 | 0.017355 | 4.86E-08 |
| rs382259:rs2856717 | 32317005 | 32778286 | XOR | 0.22 | 0.29 | 6.52E-28 | 5.05E-56 | 0.017723 | 3.05E-08 |
| rs382259:rs2858305 | 32317005 | 32778442 | XOR | 0.22 | 0.29 | 6.52E-28 | 5.05E-56 | 0.017723 | 3.05E-08 |
| rs382259:rs9275572 | 32317005 | 32786977 | XOR | 0.22 | 0.31 | 6.52E-28 | 2.86E-59 | 0.018208 | 1.65E-08 |
| rs412657:rs405875 | 32319063 | 32323166 | Other | 0.35 | 0.50 | 2.94E-42 | 5.21E-21 | 0.017883 | 2.49E-08 |
| rs412657:rs3115573 | 32319063 | 32326821 | Other | 0.35 | 0.50 | 2.94E-42 | 2.44E-20 | 0.017684 | 3.20E-08 |
Position (pos) of SNPs as base pairs on chromosome 6, submodel of interaction as detailed in Table 6, minor allele frequencies (MAF), p SNP 1 and p SNP 2 as p-values from 1st order calculation, TS pair as value of the test statistic from 2nd order calculation, p-value as result from 2nd order calculation
Submodel categories for interactions detected by but not logistic regression
| Submodel | HLO-matrix | ||
|---|---|---|---|
| Multi | bb | bB | BB |
| aa | H | L | L or O |
| aA | L | H | H |
| AA | L | H or O | H or O |
| Multi incompl | bb | bB | BB |
| aa | H | L or O | L or O |
| aA | L or O | O | H or O |
| AA | L or O | H or O | H or O |
| Epi | bb | bB | BB |
| aa | L | H | H or O |
| aA | H or O | L or O | O |
| AA | H or O | L or O | L or O |
| XOR | bb | bB | BB |
| aa | O | O | L |
| aA | O | O | H |
| AA | L | H | O |
| Other | bb | bB | BB |
| aa | L or O | O | H or O |
| aA | O | O | H or O |
| AA | H | H | L |
HLO-matrices for the submodels of interaction in Table 6
Results for interactions reported by Liu et al. [2]
| SNP pair | p SNP 1 | Gene 1 | p SNP 2 | Gene 2 | Submodel | LD | TS pair | |
|---|---|---|---|---|---|---|---|---|
| rs9275595:rs10807113 | 9.50E-63 | DQA2 (F5U) | 1.30E-05 | DQB2 (F3U) | Multi | 0.0026 | 0.03843 | 4.08E-20 |
| rs9275390:rs10807113 | 1.22E-56 | DQA2 (F5U) | 1.30E-05 | DQB2 (F3U) | Multi | 0.0001 | 0.039163 | 1.51E-20 |
| rs9275390:rs2051549 | 1.22E-56 | DQA2 (F5U) | 4.96E-01 | DQB2 (Intron) | Multi | 0.0074 | 0.029437 | 7.13E-15 |
| rs2858332:rs10807113 | 2.90E-06 | DQA2 (F5U) | 1.30E-05 | DQB2 (F3U) | Epi | 0.0082 | 0.043533 | 4.01E-23 |
| rs7774434:rs10807113 | 5.09E-19 | DQA1 (F3U) | 1.30E-05 | DQB2 (F3U) | Multi | 0.0035 | 0.029443 | 7.07E-15 |
| rs7774434:rs2051549 | 5.09E-19 | DQA1 (F3U) | 4.96E-01 | DQB2 (Intron) | Multi | 0.0011 | 0.042317 | 2.10E-22 |
| rs9275390:rs6901084 | 1.22E-56 | DQA2 (F5U) | 1.39E-02 | DQB2 (F5U) | Epi | 0.0088 | 0.025216 | 1.89E-12 |
| rs2858332:rs6901084 | 2.90E-06 | DQA2 (F5U) | 1.39E-02 | DQB2 (F5U) | Multi | 0.0091 | 0.043533 | 2.90E-21 |
Submodel of interaction as detailed in Table 6, p SNP 1 and p SNP 2 as p-values from 1st order calculation,
linkage disequilibrium (LD) between SNPs, TS pair as value of the test statistic from 2nd order calculation,
p-value as result from 2nd order calculation