Variabilidade interindividual em corredores de rua: Uma análise secundária como base para a modelagem de gêmeos digitais no esporte

Autores

DOI:

https://doi.org/10.33448/rsd-v15i3.50665

Palavras-chave:

Gêmeo digital , Biomecânica, Corredor de rua, Análise de desempenho.

Resumo

A corrida de rua é uma modalidade esportiva amplamente praticada, caracterizada por elevada diversidade de perfis entre seus participantes. O desempenho nessa modalidade resulta da interação de fatores biomecânicos, fisiológicos e demográficos, que variam significativamente entre indivíduos, o que limita a aplicabilidade de modelos generalistas baseados em médias populacionais. O presente estudo teve como objetivo analisar a variabilidade interindividual em corredores de uma prova de rua, utilizando dados secundários como base para discutir a necessidade de gêmeos digitais individualizados no contexto esportivo. Trata-se de um estudo observacional, quantitativo e retrospectivo, realizado por meio da análise de dados públicos, agregados e anonimizados de 7.096 corredores participantes da prova Redepharma Run 2025, realizada no município de Campina Grande, Paraíba. As variáveis analisadas incluíram sexo, faixa etária e escolha da distância da prova. Os resultados evidenciaram ampla heterogeneidade demográfica e de participação entre os corredores, com sobreposição significativa entre grupos tradicionalmente utilizados para classificação, como sexo e idade, indicando que indivíduos com características distintas tendem a apresentar padrões semelhantes de participação. Esses achados demonstraram que abordagens baseadas em perfis médios são insuficientes para representar adequadamente a complexidade do comportamento humano na corrida de rua. Conclui-se que a elevada variabilidade interindividual observada impõe desafios relevantes à modelagem genérica do desempenho esportivo e reforça a necessidade de abordagens personalizadas, como o uso de gêmeos digitais individualizados, para melhor compreensão, monitoramento e aplicação dessa tecnologia no esporte.

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2026-03-06

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Variabilidade interindividual em corredores de rua: Uma análise secundária como base para a modelagem de gêmeos digitais no esporte. Research, Society and Development, [S. l.], v. 15, n. 3, p. e1615350665, 2026. DOI: 10.33448/rsd-v15i3.50665. Disponível em: https://rsdjournal.org/rsd/article/view/50665. Acesso em: 24 mar. 2026.