Abstract:
Epilepsy is a chronic neurological disorder characterized by recurrent, unprovoked
seizures, affecting over 50 million people worldwide. While anti-seizure medications
(ASMs) remain the primary treatment, approximately 20–30% of individuals develop
drug-resistant epilepsy, leaving them vulnerable to uncontrolled seizures, cognitive
impairments, and an increased risk of Sudden Unexpected Death in Epilepsy (SUDEP).
The unpredictable nature of seizures significantly impacts the quality of life, often leading
to social isolation, anxiety, and difficulties in daily activities. This highlights the urgent
need for real-time seizure detection and self-management tools to enhance patient safety
and improve long-term outcomes. This thesis presents a multi-faceted approach to
epilepsy management by integrating wearable technology, artificial intelligence (AI), and
digital health solutions. A wearable seizure detection system in the form of a smartwatch
has been developed to continuously monitor physiological parameters such as movement
patterns, heart rate variability, electrodermal activity, and temperature fluctuations.
Using AI-driven algorithms, the smartwatch detects seizure events in real time and alerts
caregivers, enabling timely intervention. To complement this system, a mobile-based
epilepsy self-management application, Epilepto, has been designed. This application
allows users to log seizure episodes, track potential seizure triggers, receive personalized
medication reminders, and share health data with clinicians and caregivers, fostering a
more proactive approach to epilepsy care. Recognizing that some individuals may prefer
non-wearable solutions, this research also introduces a non-contact, AI-driven video-based
seizure detection system. Leveraging deep learning techniques, this system analyzes body
movements from video recordings to identify seizure events with high accuracy, offering
an alternative for individuals who may not tolerate wearable devices. Additionally, to
address the challenge of medication adherence, a smart pillbox has been developed, which
provides automated reminders and real-time tracking of medication intake, reducing the
likelihood of missed doses and breakthrough seizures. By integrating AI-driven wearable
and non-wearable seizure detection systems with digital health interventions, this work
presents a comprehensive, patient-centric framework for epilepsy management. These
innovations aim to empower individuals with epilepsy, enhance real-time monitoring
and early intervention, and ultimately improve clinical outcomes, safety, and quality of
life. The findings of this research contribute to the growing field of digital health and
highlight the potential of AI-powered assistive technologies in the management of chronic
neurological disorder.