News
New article online at Heliyon!
Applying machine learning to dissociate between stroke patients and healthy controls using eye movement features obtained from a virtual reality task.
We investigated the potential of the combination of Virtual Reality simulations and Eye Tracking to provide more detailed outcome measures for neuropsychological assessment.
Using a limited number of eye movement features, our models achieved an AUC of .76 in predicting whether each participant was assigned a short or long shopping list (3 or 7 items). Identifying participant as either stroke patients and controls led to an AUC of .64.
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These results could be promising for application in the early detection of abnormalities in cognition, potentially in a variety of diseases. Eye movement data contains a rich set of signatures for detecting cognitive deficits, opening the door to potential clinical applications.
In collaboration with:
De Hoogstraat Rehabilitation Center
KCR Utrecht
FSW UU
UMCU Braincenter