@article{jonell2021multimodal, title={Multimodal Capture of Patient Behaviour for Improved Detection of Early Dementia: {C}linical Feasibility and Preliminary Results}, author={Jonell, Patrik and Mo{\"e}ll, Birger and H{\aa}kansson, Krister and Henter, Gustav Eje and Kucherenko, Taras and Mikheeva, Olga and Hagman, G{\"o}ran and Holleman, Jasper and Kivipelto, Miia and Kjellstr{\"o}m, Hedvig and others}, journal={Frontiers in Computer Science}, abstract={Non-invasive automatic screening for Alzheimer's disease has the potential to improve diagnostic accuracy while lowering healthcare costs. Previous research has shown that patterns in speech, language, gaze, and drawing can help detect early signs of cognitive decline. In this paper, we describe a highly multimodal system for unobtrusively capturing data during real clinical interviews conducted as part of cognitive assessments for Alzheimer's disease. The system uses nine different sensor devices (smartphones, a tablet, an eye tracker, a microphone array, and a wristband) to record interaction data during a specialist's first clinical interview with a patient, and is currently in use at Karolinska University Hospital in Stockholm, Sweden. Furthermore, complementary information in the form of brain imaging, psychological tests, speech therapist assessment, and clinical meta-data is also available for each patient. We detail our data-collection and analysis procedure and present preliminary findings that relate measures extracted from the multimodal recordings to clinical assessments and established biomarkers, based on data from 25 patients gathered thus far. Our findings demonstrate feasibility for our proposed methodology and indicate that the collected data can be used to improve clinical assessments of early dementia.}, keywords={Alzheimer, MCI, multimodal prediction, speech, gaze, pupil dilation, pen motion, thermal camera}, month={Apr.}, publisher={Frontiers}, volume={3}, number={642633}, pages={1--22}, doi={10.3389/fcomp.2021.642633}, year={2021} }