A genetic-based algorithm for personalized resistance training
Association studies have identified dozens of genetic variants linked to training responses and sport-related traits. However, no intervention studies utilizing the idea of personalised training based on athlete’s genetic profile have been conducted. Here we propose an algorithm that allows achievin...
Main Authors: | , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Termedia Publishing House
2016-04-01
|
Series: | Biology of Sport |
Subjects: | |
Online Access: | http://www.termedia.pl/A-genetic-based-algorithm-for-personalized-resistance-training,78,27432,1,1.html |
id |
doaj-8ea9ec45f6cd43ae948bfe6dc7057205 |
---|---|
record_format |
Article |
spelling |
doaj-8ea9ec45f6cd43ae948bfe6dc70572052020-11-25T01:10:20ZengTermedia Publishing HouseBiology of Sport0860-021X2083-18622016-04-0133211712627432A genetic-based algorithm for personalized resistance trainingN JonesJ KielyB SuraciDJ CollinsD de LorenzoC PickeringKA GrimaldiAssociation studies have identified dozens of genetic variants linked to training responses and sport-related traits. However, no intervention studies utilizing the idea of personalised training based on athlete’s genetic profile have been conducted. Here we propose an algorithm that allows achieving greater results in response to high- or low-intensity resistance training programs by predicting athlete’s potential for the development of power and endurance qualities with the panel of 15 performance-associated gene polymorphisms. To develop and validate such an algorithm we performed two studies in independent cohorts of male athletes (study 1: athletes from different sports (n=28); study 2: soccer players (n=39)). In both studies athletes completed an eight-week high- or low-intensity resistance training program, which either matched or mismatched their individual genotype. Two variables of explosive power and aerobic fitness, as measured by the countermovement jump (CMJ) and aerobic 3-min cycle test (Aero3) were assessed pre and post 8 weeks of resistance training. In study 1, the athletes from the matched groups (i.e. high-intensity trained with power genotype or low-intensity trained with endurance genotype) significantly increased results in CMJ (P=0.0005) and Aero3 (P=0.0004). Whereas, athletes from the mismatched group (i.e. high-intensity trained with endurance genotype or low-intensity trained with power genotype) demonstrated non-significant improvements in CMJ (P=0.175) and less prominent results in Aero3 (P=0.0134). In study 2, soccer players from the matched group also demonstrated significantly greater (P<0.0001) performance changes in both tests compared to the mismatched group. Among non- or low responders of both studies, 82% of athletes (both for CMJ and Aero3) were from the mismatched group (P<0.0001). Our results indicate that matching the individual’s genotype with the appropriate training modality leads to more effective resistance training. The developed algorithm may be used to guide individualised resistance-training interventions.http://www.termedia.pl/A-genetic-based-algorithm-for-personalized-resistance-training,78,27432,1,1.htmlDNA Polymorphism Genotype Personalized training Power Endurance |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
N Jones J Kiely B Suraci DJ Collins D de Lorenzo C Pickering KA Grimaldi |
spellingShingle |
N Jones J Kiely B Suraci DJ Collins D de Lorenzo C Pickering KA Grimaldi A genetic-based algorithm for personalized resistance training Biology of Sport DNA Polymorphism Genotype Personalized training Power Endurance |
author_facet |
N Jones J Kiely B Suraci DJ Collins D de Lorenzo C Pickering KA Grimaldi |
author_sort |
N Jones |
title |
A genetic-based algorithm for personalized resistance training |
title_short |
A genetic-based algorithm for personalized resistance training |
title_full |
A genetic-based algorithm for personalized resistance training |
title_fullStr |
A genetic-based algorithm for personalized resistance training |
title_full_unstemmed |
A genetic-based algorithm for personalized resistance training |
title_sort |
genetic-based algorithm for personalized resistance training |
publisher |
Termedia Publishing House |
series |
Biology of Sport |
issn |
0860-021X 2083-1862 |
publishDate |
2016-04-01 |
description |
Association studies have identified dozens of genetic variants linked to training responses and sport-related traits. However, no intervention studies utilizing the idea of personalised training based on athlete’s genetic profile have been conducted. Here we propose an algorithm that allows achieving greater results in response to high- or low-intensity resistance training programs by predicting athlete’s potential for the development of power and endurance qualities with the panel of 15 performance-associated gene polymorphisms. To develop and validate such an algorithm we performed two studies in independent cohorts of male athletes (study 1: athletes from different sports (n=28); study 2: soccer players (n=39)). In both studies athletes completed an eight-week high- or low-intensity resistance training program, which either matched or mismatched their individual genotype. Two variables of explosive power and aerobic fitness, as measured by the countermovement jump (CMJ) and aerobic 3-min cycle test (Aero3) were assessed pre and post 8 weeks of resistance training. In study 1, the athletes from the matched groups (i.e. high-intensity trained with power genotype or low-intensity trained with endurance genotype) significantly increased results in CMJ (P=0.0005) and Aero3 (P=0.0004). Whereas, athletes from the mismatched group (i.e. high-intensity trained with endurance genotype or low-intensity trained with power genotype) demonstrated non-significant improvements in CMJ (P=0.175) and less prominent results in Aero3 (P=0.0134). In study 2, soccer players from the matched group also demonstrated significantly greater (P<0.0001) performance changes in both tests compared to the mismatched group. Among non- or low responders of both studies, 82% of athletes (both for CMJ and Aero3) were from the mismatched group (P<0.0001). Our results indicate that matching the individual’s genotype with the appropriate training modality leads to more effective resistance training. The developed algorithm may be used to guide individualised resistance-training interventions. |
topic |
DNA Polymorphism Genotype Personalized training Power Endurance |
url |
http://www.termedia.pl/A-genetic-based-algorithm-for-personalized-resistance-training,78,27432,1,1.html |
work_keys_str_mv |
AT njones ageneticbasedalgorithmforpersonalizedresistancetraining AT jkiely ageneticbasedalgorithmforpersonalizedresistancetraining AT bsuraci ageneticbasedalgorithmforpersonalizedresistancetraining AT djcollins ageneticbasedalgorithmforpersonalizedresistancetraining AT ddelorenzo ageneticbasedalgorithmforpersonalizedresistancetraining AT cpickering ageneticbasedalgorithmforpersonalizedresistancetraining AT kagrimaldi ageneticbasedalgorithmforpersonalizedresistancetraining AT njones geneticbasedalgorithmforpersonalizedresistancetraining AT jkiely geneticbasedalgorithmforpersonalizedresistancetraining AT bsuraci geneticbasedalgorithmforpersonalizedresistancetraining AT djcollins geneticbasedalgorithmforpersonalizedresistancetraining AT ddelorenzo geneticbasedalgorithmforpersonalizedresistancetraining AT cpickering geneticbasedalgorithmforpersonalizedresistancetraining AT kagrimaldi geneticbasedalgorithmforpersonalizedresistancetraining |
_version_ |
1725175453491134464 |