Deep learning for personalized health monitoring and prediction: A review
Metadatos
Mostrar el registro completo del ítemAutor
Damaševǐcius, Robertas; Kumar Jagatheesaperumal, Senthil; N. V. P. S. Kandala, Rajesh; Hussain, Sadiq; Alizadehsani, Roohallah; Gorriz Sáez, Juan ManuelEditorial
Wiley Online Library
Materia
deep learning healthcare personalized health
Fecha
2024-06-18Referencia bibliográfica
Damaševǐcius, R. et. al. Computational Intelligence. 2024;40(3):e12682. [https://doi.org/10.1111/coin.12682]
Resumen
Personalized health monitoring and prediction are
indispensable in advancing healthcare delivery, particularly
amidst the escalating prevalence of chronic illnesses
and the aging population. Deep learning (DL)
stands out as a promising avenue for crafting personalized
health monitoring systems adept at forecasting
health outcomes with precision and efficiency. As
personal health data becomes increasingly accessible,
DL-based methodologies offer a compelling strategy for
enhancing healthcare provision through accurate and
timely prognostications of health conditions. This article
offers a comprehensive examination of recent advancements
in employing DL for personalized health monitoring
and prediction. It summarizes a diverse range
of DL architectures and their practical implementations
across various realms, such as wearable technologies,
electronic health records (EHRs), and data accumulated
from social media platforms. Moreover, it elucidates
the obstacles encountered and outlines future directions
in leveraging DL for personalized health monitoring,
thereby furnishing invaluable insights into the immense
potential of DL in this domain.