1 research outputs found
A method for sleep quality analysis based on CNN ensemble with implementation in a portable wireless device
The quality of sleep can be affected by the occurrence of a sleep related disorder and, among
these disorders, obstructive sleep apnea is commonly undiagnosed. Polysomnography is considered to be
the gold standard for sleep analysis. However, it is an expensive and labor-intensive exam that is unavailable
to a large group of the world population. To address these issues, the main goal of this work was to
develop an automatic scoring algorithm to analyze the single-lead electrocardiogram signal, performing
a minute-by-minute and an overall estimation of both quality of sleep and obstructive sleep apnea. The
method employs a cross-spectral coherence technique which produces a spectrographic image that fed three
one-dimensional convolutional neural networks for the classification ensemble. The predicted quality of
sleep was based on the electroencephalogram cyclic alternating pattern rate, a sleep stability metric. Two
methods were developed to indirectly evaluate this metric, creating two sleep quality predictions that were
combined with the sleep apnea diagnosis to achieve the final global sleep quality estimation. It was verified
that the quality of sleep of the nineteen tested subjects was correctly identified by the proposed model,
advocating the significance of clinical analysis. The model was implemented in a non-invasive and simple
to self-assemble device, producing a tool that can estimate the quality of sleep and diagnose the obstructive
sleep apnea at the patient’s home without requiring the attendance of a specialized technician. Therefore,
increasing the accessibility of the population to sleep analysis.info:eu-repo/semantics/publishedVersio