Discriminative sleep patterns of Alzheimer's disease via tensor factorization
Sleep change is commonly reported in Alzheimer's disease (AD) patients and their brain
wave studies show decrease in dreaming and non-dreaming stages. Although sleep
disturbance is generally considered as a consequence of AD, it might also be a risk factor of
AD as new biological evidence shows. Leveraging the National Sleep Research Resource
(NSRR), we built a unique cohort of 83 cases and 331 controls with clinical variables and
electroencephalography (EEG) signals. Supervised tensor factorization method was applied …
wave studies show decrease in dreaming and non-dreaming stages. Although sleep
disturbance is generally considered as a consequence of AD, it might also be a risk factor of
AD as new biological evidence shows. Leveraging the National Sleep Research Resource
(NSRR), we built a unique cohort of 83 cases and 331 controls with clinical variables and
electroencephalography (EEG) signals. Supervised tensor factorization method was applied …
Sleep change is commonly reported in Alzheimer’s disease (AD) patients and their brain wave studies show decrease in dreaming and non-dreaming stages. Although sleep disturbance is generally considered as a consequence of AD, it might also be a risk factor of AD as new biological evidence shows. Leveraging the National Sleep Research Resource (NSRR), we built a unique cohort of 83 cases and 331 controls with clinical variables and electroencephalography (EEG) signals. Supervised tensor factorization method was applied for this temporal dataset to extract discriminative sleep patterns. Among the 30 patterns extracted, we identified 5 significant patterns (4 patterns for AD likely and 1 pattern for normal ones) and their visual patterns provide interesting linkage to sleep with repeated wakefulness, abnormal REM sleep, and insomnia. This study is preliminary but findings are interesting, which is a first step to provide quantifiable evidences to measure sleep as a risk factor of AD.
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