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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 ach...

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Detalles Bibliográficos
Autores principales: Jones, N, Kiely, J, Suraci, B, Collins, DJ, de Lorenzo, D, Pickering, C, Grimaldi, KA
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Institute of Sport in Warsaw 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4885623/
https://www.ncbi.nlm.nih.gov/pubmed/27274104
http://dx.doi.org/10.5604/20831862.1198210
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author Jones, N
Kiely, J
Suraci, B
Collins, DJ
de Lorenzo, D
Pickering, C
Grimaldi, KA
author_facet Jones, N
Kiely, J
Suraci, B
Collins, DJ
de Lorenzo, D
Pickering, C
Grimaldi, KA
author_sort Jones, N
collection PubMed
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.
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spelling pubmed-48856232016-06-07 A genetic-based algorithm for personalized resistance training Jones, N Kiely, J Suraci, B Collins, DJ de Lorenzo, D Pickering, C Grimaldi, KA Biol Sport Original Article 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. Institute of Sport in Warsaw 2016-04-01 2016-06 /pmc/articles/PMC4885623/ /pubmed/27274104 http://dx.doi.org/10.5604/20831862.1198210 Text en Copyright © Biology of Sport 2016 http://creativecommons.org/licenses/by-nc-nd/3.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution-Noncommercial 3.0 Unported License, permitting all non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Jones, N
Kiely, J
Suraci, B
Collins, DJ
de Lorenzo, D
Pickering, C
Grimaldi, KA
A genetic-based algorithm for personalized resistance training
title 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_short A genetic-based algorithm for personalized resistance training
title_sort genetic-based algorithm for personalized resistance training
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4885623/
https://www.ncbi.nlm.nih.gov/pubmed/27274104
http://dx.doi.org/10.5604/20831862.1198210
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