2022
DOI: 10.20944/preprints202203.0403.v1
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Behavioral Change Prediction from Physiological Signals Using Deep Learned Features

Abstract: Predicting change from multivariate time series has relevant applications ranging from medical to engineering fields. Multisensory stimulation therapy in patients with dementia aims to change the patient’s behavioral state. For example, patients who exhibit a baseline of agitation may be paced to change their behavioral state to relaxed. This study aims to predict changes in behavioral state from the analysis of the physiological and neurovegetative parameters to support the therapist during the stim… Show more

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References 54 publications
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