Avanzando en la seguridad del atleta mediante el monitoreo de ECG en tiempo real para mejorar la salud cardiovascular en el rendimiento deportivo

Autores/as

  • Zhanar Azhibekova Asfendiyarov Kazakh National Medical University
  • Aigerim Altayeva Al-Farabi Kazakh National University
  • Ainur Amirtayeva Al-Farabi Kazakh National University
  • Zeinel Momynkulov International Information Technology University
  • Daniyar Sultan Narxoz University
  • Alisher Mukhametkaly

DOI:

https://doi.org/10.47197/retos.v61.110378

Palabras clave:

rendimiento deportivo, monitoreo de ECG en tiempo real, alud cardiovascular del atleta, tecnología ponible, medicina deportiva, monitoreo fisiológico, optimización del entrenamiento

Resumen

Este documento de investigación explora la implementación y eficacia de los sistemas de monitoreo de electrocardiogramas (ECG) en tiempo real para atletas, enfatizando su potencial para mejorar significativamente la seguridad y el rendimiento en entornos deportivos. Mediante el uso de tecnología avanzada de ECG, el estudio investiga cómo el monitoreo continuo y en tiempo real de la frecuencia cardíaca y el ritmo puede ayudar en la detección inmediata de anomalías cardiovasculares durante actividades de alta intensidad. La metodología de la investigación incluye la implementación de dispositivos ECG portátiles en un entorno experimental controlado, analizando datos de atletas durante sesiones de entrenamiento y eventos competitivos. Los resultados del estudio destacan la capacidad del sistema para proporcionar evaluaciones cardíacas rápidas y precisas, permitiendo así intervenciones médicas oportunas. Además, el documento discute los desafíos técnicos asociados con el monitoreo de ECG en tiempo real, como la interferencia de señales y la precisión de los datos, y aborda consideraciones de privacidad y éticas relacionadas con la recolección continua de datos de salud. La discusión se extiende a las implicaciones de integrar dicha tecnología dentro de la medicina deportiva, sugiriendo que, mientras los sistemas ofrecen beneficios sustanciales en el monitoreo y prevención de problemas cardíacos, también requieren estándares rigurosos para la seguridad de los datos y la supervisión ética. La conclusión aboga por un enfoque equilibrado para la adopción de estas tecnologías, proponiendo direcciones futuras de investigación que se centren en mejorar la fiabilidad del sistema e integrar inteligencia artificial para predecir riesgos de salud de manera proactiva. Este estudio contribuye al discurso continuo en tecnología de salud deportiva proporcionando un análisis comprensivo del monitoreo de ECG en tiempo real como una herramienta transformadora para la gestión del cuidado de la salud de los atletas.

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Publicado

2024-12-01

Cómo citar

Azhibekova, Z., Altayeva, A., Amirtayeva, A., Momynkulov, Z., Sultan, D., & Mukhametkaly, A. (2024). Avanzando en la seguridad del atleta mediante el monitoreo de ECG en tiempo real para mejorar la salud cardiovascular en el rendimiento deportivo. Retos, 61, 1333–1343. https://doi.org/10.47197/retos.v61.110378

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Sección

Artículos de carácter científico: trabajos de investigaciones básicas y/o aplicadas