Towards Smart Healthcare: Challenges and Opportunities in IoT and ML
Munshi Saifuzzaman, Tajkia Nuri Ananna

TL;DR
This paper reviews the challenges and opportunities of integrating IoT and machine learning in smart healthcare, emphasizing data management, analytics, and predictive capabilities to improve healthcare delivery during crises like COVID-19.
Contribution
It provides a comprehensive overview of current research challenges and opportunities in applying ML to IoT-based healthcare systems, guiding future developments.
Findings
Identifies key challenges in IoT data management for healthcare.
Highlights potential of ML to enhance decision-making in smart healthcare.
Categorizes research scenarios into IoT-based, ML-based, and implementation strategies.
Abstract
The COVID-19 pandemic and other ongoing health crises have underscored the need for prompt healthcare services worldwide. The traditional healthcare system, centered around hospitals and clinics, has proven inadequate in the face of such challenges. Intelligent wearable devices, a key part of modern healthcare, leverage Internet of Things technology to collect extensive data related to the environment as well as psychological, behavioral, and physical health. However, managing the substantial data generated by these wearables and other IoT devices in healthcare poses a significant challenge, potentially impeding decision-making processes. Recent interest has grown in applying data analytics for extracting information, gaining insights, and making predictions. Additionally, machine learning, known for addressing various big data and networking challenges, has seen increased…
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Taxonomy
TopicsIoT and Edge/Fog Computing
