Noninvasive Methods in Cardiology 2024
KapitolaOff-Wrist, Off-Mark: How Off-Wrist Events Skew Estimation of Circadian Characteristics fromActigraphy Data
Rok vydání: 2024https://doi.org/10.5817/CZ.MUNI.M280-0669-2024-3
Abstrakt
The aim of the study was to analyze the data measured from actinotherapy and skin temperature during seven days and 24 hours and evaluation of chronobiological rhythms. Study participants were teenagers in Brazil who were monitored for at least one week on several occasions over one year and participants Arctic residents, 12 to 59 years of age, who were monitored for 7 days each during the spring equinox as part of the “Light Arctic” study. The data were collected with the actigraph ActTrust from Condor Instruments. Volunteers in two different studies wore it on the wrist to assess cycles of rest and activity non-invasively. In summary, using temperature and activity data in combination, it is possible to detect and analyzed the activity and skin temperature data.
Klíčová slova
Actinotherapy, Skin Temperature, Chronobiological Rhythms, Monitoring, Off-Wrist, Off-Mark, Circadian Characteristcs
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