Dissertação de Mestrado

Deep Residual Learning for Epileptic Seizure Prediction and Tools to Expedite Biosignal Research

João Miguel Areias Saraiva2022

Informações chave

Autores:

João Miguel Areias Saraiva (João Miguel Areias Saraiva)

Orientadores:

Hugo Humberto Plácido da Silva (Hugo Humberto Plácido da Silva); Ana Luísa Nobre Fred (Ana Luísa Nobre Fred)

Publicado em

16/11/2022

Resumo

Around the world, about 50 million people suffer from epilepsy, a disease characterised by recurrent and unprovoked seizures of abrupt cerebral activity. Epileptic seizures can present a considerable danger to the daily life of patients and those around them. It would constitute a significant improvement in their quality of life if patients could wear some device that would predict their epileptic seizures and raise raise an alarm when a seizure is about to be elicited. In this work, the autonomic nervous system (ANS) deregulation before epileptic seizures - that can be reflected in the patients' electrocardiogram (ECG) - is exploited to predict epileptic seizures. Deep residual learning is proposed to discriminate between ECG segments of seizure eminence - the precital period - from the remaining. ResNet-34 models were train in a patient-specific manner for 11 patients and a cohort median F1-score of 0.728 was attained. A decision algorithm to raise alarms from the segment classifications attained a 0.774 F1-score with a median of 4 false alarms per day. On average, patients that responded to this method had 78.4% of their seizures predicted with a median anticipation of 9.1 minutes. Furthermore, a novel framework for the management and processing of long-term biosignals is proposed to help biosignal engineers to focus more on the research at hands. The LTBio framework achieved a score of 85.75/100 in the system usability scale (SUS) and has proved to be effective in expediting machine learning research with biosignals in the epileptic seizure prediction group.

Detalhes da publicação

Autores da comunidade :

Orientadores desta instituição:

Domínio Científico (FOS)

electrical-engineering-electronic-engineering-information-engineering - Engenharia Eletrotécnica, Eletrónica e Informática

Idioma da publicação (código ISO)

eng - Inglês

Acesso à publicação:

Embargo levantado

Data do fim do embargo:

13/09/2023

Nome da instituição

Instituto Superior Técnico