Diagnostics (Nov 2022)

Artificial Intelligence, Wearables and Remote Monitoring for Heart Failure: Current and Future Applications

  • Nitesh Gautam,
  • Sai Nikhila Ghanta,
  • Joshua Mueller,
  • Munthir Mansour,
  • Zhongning Chen,
  • Clara Puente,
  • Yu Mi Ha,
  • Tushar Tarun,
  • Gaurav Dhar,
  • Kalai Sivakumar,
  • Yiye Zhang,
  • Ahmed Abu Halimeh,
  • Ukash Nakarmi,
  • Sadeer Al-Kindi,
  • Deeptankar DeMazumder,
  • Subhi J. Al’Aref

DOI
https://doi.org/10.3390/diagnostics12122964
Journal volume & issue
Vol. 12, no. 12
p. 2964

Abstract

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Substantial milestones have been attained in the field of heart failure (HF) diagnostics and therapeutics in the past several years that have translated into decreased mortality but a paradoxical increase in HF-related hospitalizations. With increasing data digitalization and access, remote monitoring via wearables and implantables have the potential to transform ambulatory care workflow, with a particular focus on reducing HF hospitalizations. Additionally, artificial intelligence and machine learning (AI/ML) have been increasingly employed at multiple stages of healthcare due to their power in assimilating and integrating multidimensional multimodal data and the creation of accurate prediction models. With the ever-increasing troves of data, the implementation of AI/ML algorithms could help improve workflow and outcomes of HF patients, especially time series data collected via remote monitoring. In this review, we sought to describe the basics of AI/ML algorithms with a focus on time series forecasting and the current state of AI/ML within the context of wearable technology in HF, followed by a discussion of the present limitations, including data integration, privacy, and challenges specific to AI/ML application within healthcare.

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