Litcius/Paper detail

Supervised approach based sleep disorder detection using non - Linear dynamic features (NLDF) of EEG

Shivam Tiwari, Deepak Arora, Vishal Nagar

2022Measurement Sensors15 citationsDOIOpen Access PDF

Abstract

Depending on its intensity, sleep disorders can affect a person's ability to function mentally, emotionally, and physically. These are medical abnormalities of the subject's sleep structure. Most prevalent ones are bruxism, sleep problems, depression, and narcolepsy. A greater chance of acquiring sleep issues in the elderly includes sleeplessness, irregular leg movements, problems with fast eye movement behaviour and breathing abnormalities. Therefore, an early stage therapy that might save a patient's life depends on a precise diagnosis and categorization. The much more sensitive as well as significant bio-signal is electroencephalographic (EEG) signal. It has the capacity to record sleep-sensitive brain activity. We used an available EEG database which had recordings divided into different types of sleep disturbances as well as a healthy control group. Popular sensor's EEG brain function has been examined. Ultimately, using patterns taken from EEG data, a categorization AI model was created. Extracted characteristics worked well as a biomarker for identifying sleep problems when combined with an AI classifier.

Topics & Concepts

ElectroencephalographyNarcolepsyCategorizationSleep (system call)Sleep StagesEye movementPolysomnographySleep disorderAudiologyPsychologyBrain activity and meditationPhysical medicine and rehabilitationArtificial intelligenceMedicineComputer scienceInsomniaNeurologyNeurosciencePsychiatryOperating systemEEG and Brain-Computer InterfacesSleep and Wakefulness ResearchSleep and Work-Related Fatigue
Supervised approach based sleep disorder detection using non - Linear dynamic features (NLDF) of EEG | Litcius