Back to Search Start Over

A framework for assessing neuropsychiatric phenotypes by using smartphone-based location data

Authors :
Martien J H Kas
Niels Jongs
Celso Arango
Pieter Jelle Visser
Jacob A. S. Vorstman
Lianne M. Reus
Iris E. C. Sommer
Brenda W.J.H. Penninx
Ina M. Koning
Nic J.A. van der Wee
Marinus J.C. Eijkemans
Raj R. Jagesar
Neeltje E.M. van Haren
Amsterdam Neuroscience - Mood, Anxiety, Psychosis, Stress & Sleep
Psychiatry
Neurology
APH - Digital Health
APH - Mental Health
Child and Adolescent Psychiatry / Psychology
Kas lab
Guided Treatment in Optimal Selected Cancer Patients (GUTS)
Clinical Cognitive Neuropsychiatry Research Program (CCNP)
Movement Disorder (MD)
Source :
Translational Psychiatry, Vol 10, Iss 1, Pp 1-10 (2020), Translational Psychiatry, Translational psychiatry, 10(1):211, Jongs, N, Jagesar, R, van Haren, N E M, Penninx, B W J H, Reus, L, Visser, P J, van der Wee, N J A, Koning, I M, Arango, C, Sommer, I E C, Eijkemans, M J C, Vorstman, J A & Kas, M J 2020, ' A framework for assessing neuropsychiatric phenotypes by using smartphone-based location data ', Translational psychiatry, vol. 10, no. 1, 211 . https://doi.org/10.1038/s41398-020-00893-4, Translational Psychiatry, 10(1):211. Nature Publishing Group, Translational Psychiatry, 10(1). NATURE PUBLISHING GROUP
Publication Year :
2020

Abstract

The use of smartphone-based location data to quantify behavior longitudinally and passively is rapidly gaining traction in neuropsychiatric research. However, a standardized and validated preprocessing framework for deriving behavioral phenotypes from smartphone-based location data is currently lacking. Here, we present a preprocessing framework consisting of methods that are validated in the context of geospatial data. This framework aims to generate context-enriched location data by identifying stationary, non-stationary, and recurrent stationary states in movement patterns. Subsequently, this context-enriched data is used to derive a series of behavioral phenotypes that are related to movement. By using smartphone-based location data collected from 245 subjects, including patients with schizophrenia, we show that the proposed framework is effective and accurate in generating context-enriched location data. This data was subsequently used to derive behavioral readouts that were sensitive in detecting behavioral nuances related to schizophrenia and aging, such as the time spent at home and the number of unique places visited. Overall, our results indicate that the proposed framework reliably preprocesses raw smartphone-based location data in such a manner that relevant behavioral phenotypes of interest can be derived.

Details

Language :
English
ISSN :
21583188
Volume :
10
Issue :
1
Database :
OpenAIRE
Journal :
Translational Psychiatry
Accession number :
edsair.doi.dedup.....58820c38c663f1d883e9f383d5128b01