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dc.rights.licenseCC-BY-NC-ND
dc.contributor.advisorBeun, Robbert-Jan
dc.contributor.authorVijgh, B.H. van der
dc.date.accessioned2011-02-10T18:00:59Z
dc.date.available2011-02-10
dc.date.available2011-02-10T18:00:59Z
dc.date.issued2011
dc.identifier.urihttps://studenttheses.uu.nl/handle/20.500.12932/6548
dc.description.abstractFor diagnosis and research purposes, a person's sleep should be objectively quantified. Traditionally, sleep staging is performed by human experts via visual inspection of polysomnographic (PSG) data measured during the sleep period. There are several drawbacks to this golden standard: the data are acquired in a rather obtrusive manner and not in the natural sleep environment of the sleeper, hereby affecting the sleep. Furthermore, this manual scoring is time consuming and prone to human errors. Automatic sleep staging models exist but typically perform binary classifications, e.g. sleep/wake, REM/NREM or light/deep sleep classification and on the whole use obtrusively obtained measurements. In this research we aim to develop a framework for classifying sleep stages from unobtrusive measurements, being measurements during which the participant is not disturbed and no sensors are attached. Our current implementation is presented that constructs 3- and 4-step hypnograms (containing wake, REM and NREM in the 3-step hypnogram and wake, REM, light sleep and deep sleep in the 4-step hypnogram) utilizing body movement and respiration rate biosignals obtained during sleep. This current implementation of the framework consists of three modules that each use a unique way of interpreting one or more of these biosignals and a fusion process. The modules partly employ adapted versions of existing models for sleep stage classification and partly newly developed models, grounded in sleep physiology. The modules classify epochs of a person's sleep based on one or more biosignals and relevant subject parameters such as age and gender. The framework ensures that each epoch is classified by at least two different modules. A specialized fusion process analyses the output from the different modules, merges the output into a final hypnogram and calculates a confidence level for each epoch classification. To compare the sleep stages as derived from the current implementation of the framework with the golden standard, a secondary analysis on an existing data set of 23 participants is performed. The results are promising and show potential: the three modules perform binary classifications with 90%, 85% and 72% agreement to the golden standard, the fusion process corrects 61% of the classifications on which the modules disagree and fuses the binary classifications in definitive 3- and 4-step hypnograms. During this process the overall agreement drops significantly because all erroneous classifications of the modules are added up, but due to the correction of erroneous classifications by the fusion process these hypnograms maintain 69% and 51% agreement with the golden standard, respectively. This degree is expected to increase significantly when the existing modules are improved, additional modules are added to allow the fusion process to correct more erroneous classifications and the parameterization of the modules is done simultaneously. Also, the framework contains various technical advancements not found in other contemporary sleep staging methods. Exemplary here is the great flexibility of the framework, enabling the researcher or clinician to easily add, remove or alter modules. Also complete parameterization, ensuring that at all times the clinically relevant parameters of the participant are taken into account, can be mentioned here. The current implementation of the framework is expected to be a basis for unobtrusive sleep staging that can be performed in the natural sleep environment of the sleeper and without influencing or disturbing sleep, hereby potentially lowering the threshold for (preliminary) sleep diagnostics, research and therapy.
dc.description.sponsorshipUtrecht University
dc.format.extent3896327 bytes
dc.format.mimetypeapplication/pdf
dc.language.isoen
dc.titleA framework for sleep staging based on unobtrusive measurements
dc.type.contentMaster Thesis
dc.rights.accessrightsOpen Access
dc.subject.keywordssleep staging, unobtrusive, sleep
dc.subject.courseuuCognitive Artificial Intelligence


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