| Literature DB >> 21967077 |
Tom Thomaes1, Martine Thomis, Steven Onkelinx, Robert Fagard, Gert Matthijs, Roselien Buys, Dirk Schepers, Véronique Cornelissen, Luc Vanhees.
Abstract
BACKGROUND: It is widely accepted that genetic variability might explain a large part of the observed heterogeneity in aerobic capacity and its response to training. Significant associations between polymorphisms of different genes with muscular strength, anaerobic phenotypes and body composition have been reported. Muscular endophenotypes are positively correlated with aerobic capacity, therefore, we tested the association of polymorphisms in twelve muscular related genes on aerobic capacity and its response to endurance training.Entities:
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Year: 2011 PMID: 21967077 PMCID: PMC3193032 DOI: 10.1186/1471-2156-12-84
Source DB: PubMed Journal: BMC Genet ISSN: 1471-2156 Impact factor: 2.797
Overview of the investigated genes and polymorphisms within muscular structural or functional subsystems
| Sub-System | Gene | Polymorphism | Genotype frequency (n patients) | ||
|---|---|---|---|---|---|
| Metabolism | adenosine monophosphate deaminase ( | C34T/rs17602729 | CC (652) | CT (239) | TT (24) |
| Muscular structure | Alpha-actinin 3 ( | Q523R/rs1671064 | TT (303) | TC (444) | CC (176) |
| R577X/rs1815739 | GG (468) | GA (386) | AA (66) | ||
| Myosine light chain kinase | C49T/rs2700352 | GG (589) | AG (289) | AA (38) | |
| ( | C37885A | GG (749) | GT (157) | TT (9) | |
| Cytokines | Interleukin 6 ( | G-174C/rs1800795 | GG (332) | GC (411) | CC (176) |
| Interleukin 15 receptor | PstI/rs2296135 | CC (238) | CA (468) | AA (206) | |
| alpha ( | BstNI/rs2228059 | TT (223) | GT (480) | GG (211) | |
| HpaII/rs3136618 | GG (227) | GA (459) | AA (203) | ||
| Growth or differentiation factors | Insulin-like growth factor 2 ( | ApaI/rs680 | GG (448) | AG (388) | AA (80) |
| Activin-type II receptor B ( | Rs2268757 | TT (283) | CT (468) | CC (162) | |
| Follistatin ( | Rs3756498 | CC (605) | CT (278) | TT (30) | |
| Rs12152850 | CC (606) | CT (278) | TT (35) | ||
| Rs12153205 | TT (601) | CT (275) | CC (36) | ||
| v-akt murine thymoma viral oncogene homolog 1 ( | G205T/rs1130214 | GG (452) | GT (377) | TT (76) | |
| Neurotrophic factors | Ciliary Neurotrophic Factor ( | G-6A/rs1800169 | GG (664) | GA (226) | AA (21) |
| Ciliary Neurotrophic | C-1703T/rs3808871 | CC (580) | CT (300) | TT (41) | |
| Factor Receptor ( | C174T | CC (695) | CT (187) | TT (12) | |
| Hormones | Glucocorticoid Receptor | R23K/rs6190 | GG (857) | GA (54) | AA (1) |
| N363S/rs6195 | AA (843) | AG (70) | GG (2) | ||
| BclI/rs41423247 | CC (399) | GC (403) | GG (120) | ||
Genotype frequencies (N) in the CAREGENE study included in brackets
Clinical characteristics for biologically unrelated Caucasian CAD patients (n = 935) in the CAREGENE study
| Variable | Overall Cohort |
|---|---|
| N (%) | |
| Women | 76 (8) |
| Age (years) | 56 ± 0.3 |
| Body mass index (kg.m-2) | 25.8 ± 0.1 |
| History of diabetes | 49 (5) |
| History of hypertension | 251 (27) |
| Current smoking | 45 (5) |
| Past smoking | 681 (73) |
| Complaints of angina pectoris in daily life | 41 (4) |
| dyspnoea in daily life | 149 (16) |
| AMI | 630 (67) |
| -Anterior | 252 (27) |
| -Inferior | 333 (36) |
| CBS | 377 (40) |
| PCI | 470 (50) |
| Angina pectoris | 23 (2) |
AMI, acute myocardial infarction; CBS, coronary bypass surgery; PCI, percutaneous coronary Intervention. Some patients had more than one pathology. Data are presented as means ± SE for continuous variables and as numbers (percentage) for dichotomous variables.
Genotype-phenotype association analysis for muscular subsystem gene polymorphisms and baseline aerobic power and changes after training in the CAREGENE study
| Gene | Polymorphism | Allele | Frequency | VO2pre | p-value | p-value | p-value | ||
|---|---|---|---|---|---|---|---|---|---|
| N (%) | (%) b | ||||||||
| C34T/rs17602729 | CC | 652 (71) | 1711 ± 15 | p = 0.40 | 396 ± 10 | p = 0.11 | 24.8 ± 0.6 | p = 0.04 | |
| CT + TT | 263 (29) | 1734 ± 23 | 367 ± 16 | 22.4 ± 0.99 | |||||
| G-6A/rs1800169 | GG | 664 (73) | 1724 ± 15 | p = 0.43 | 369 ± 9 | p = 0.001 | 23.1 ± 0.6 | p = 0.002 | |
| GA | 226 (25) | 1701 ± 25 | 416 ± 16 | 25.1 ± 1.0 | |||||
| AA | 21 (2) | 1801 ± 81 | 519 ± 52 | 33.9 ± 3.3 | |||||
| R23K/rs6190 | GG | 857 (94) | 1715 ± 13 | p = 0.08 | 383 ± 9 | p = 0.02 | 23.8 ± 0.6 | p = 0.04 | |
| GA + AA | 55 (6) | 1805 ± 50 | 464 ± 34* | 28.5 ± 2.2* |
AMPD1, Adenosine monophosphate deaminase; CNTF, Ciliary neurotrophic factor; GR, Glucocorticoid receptor
a. Mean ± SE, corrected for gender, age, height and weight;
b. Mean ± SE, corrected for gender, age, height, weight and baseline peakVO2
Figure 1Genetic predisposition score for muscular subsystems gene polymorphisms (literature based) and baseline peakVO. Left Y-axis: Number of patients in each increasing alleles group (bar graph). Right Y-axis: Baseline peakVO2 for each increasing alleles group (square dots ± SE) corrected for age, gender, height and body mass. X-axis: GPS - Number of increasing alleles. Regression line for baseline peakVO2
Figure 2Genetic predisposition score for 3 polymorphisms associated with the change (ml/min) in peakVO. Left Y-axis: Number of patients in each increasing alleles group (bar graph). Right Y-axis: Change in peakVO2 (ml/min) for each increasing alleles group (square dots ± SE) corrected for age, gender, height, body mass, and baseline peakVO2. X-axis: GPS - Number of increasing alleles. Regression line for the change in peakVO2 (ml/min)
Figure 3Genetic predisposition score for 4 polymorphisms associated with relative change (%) in peakVO. Left Y-axis: Number of patients in each increasing alleles group (bar graph). Right Y-axis: Relative change in peakVO2 (%) for each increasing alleles group (square dots ± SE) corrected for age, gender, height, body mass, and baseline peakVO2. X-axis: GPS - Number of increasing alleles. Regression line for the relative change in peakVO2
Figure 4Overlay of three different models to predict high vs. low responder in peakVO. Model GPS (AUC: 0.62; 95% CI: 0.54 - 0.69). Model age and weight (AUC: 0.69; 95% CI: 0.61 - 0.77) Model GPS, age and weight (AUC: 0.71; 95% CI: 0.63 - 0.78)
Figure 5Overlay of three different models to predict high vs. low responder in relative peakVO. Model GPS (AUC: 0.63; 95% CI: 0.56 - 0.71). Model age and weight (AUC: 0.60; 95% CI: 0.52 - 0.69) Model GPS, age and weight (AUC: 0.65; 95% CI: 0.57 - 0.73)