Motor activity patterns can distinguish between interepisode bipolar disorder patients and healthy controls.
Jakub SchneiderEduard BakšteinMarian KoleničPavel VostatekChristoph U CorrellDaniel NovákFilip ŠpanielPublished in: CNS spectrums (2020)
A machine-learning actigraphy-based model was capable of distinguishing between interepisode BD patients and HCs solely on the basis of motor activity. The classification remained valid even when features influenced by employment status were omitted. The findings suggest that temporal variability of actigraphic parameters may provide discriminative power for differentiating between BD patients and HCs while being less affected by employment status.