Abstract
Personalized health monitoring and prediction have become essential for
improving health- care delivery, especially with the growing prevalence
of chronic diseases and an aging population. Deep learning (DL) has
emerged as a promising approach for developing personalized health mon-
itoring systems that can predict health outcomes accurately and
efficiently. With the increasing availability of personal health data,
DL-based methods have emerged as a promising approach to improve
healthcare delivery by providing accurate and timely predictions of
health outcomes. This article provides a comprehensive review of the
recent developments in the application of DL for personalized health
monitoring and prediction. It summarizes various DL architectures and
their applications for personalized health monitoring, including
wearable devices, electronic health records, and social media data.
Furthermore, the article also explores the challenges and future
directions for the application of DL in personalized health monitoring.
valuable insights into the potential of DL for personalized health
monitoring and prediction.