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

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作者
Niels Jongs
Raj Jagesar
Neeltje E. M. van Haren
Brenda W. J. H. Penninx
Lianne Reus
Pieter J. Visser
Nic J. A. van der Wee
Ina M. Koning
Celso Arango
Iris E. C. Sommer
Marinus J. C. Eijkemans
Jacob A. Vorstman
Martien J. Kas
机构
[1] University of Groningen,Groningen Institute for Evolutionary Life Sciences
[2] Erasmus Medical Center,Department of Child and Adolescent Psychiatry/Psychology
[3] University Medical Center Groningen,Department of Neuroscience, Department of Psychiatry
[4] University of Groningen,Department of Psychiatry and Amsterdam Neuroscience, Amsterdam UMC
[5] Vrije Universiteit,Alzheimer Center Amsterdam, Department of Neurology, Amsterdam Neuroscience
[6] Vrije Universiteit Amsterdam,Department of Psychiatry
[7] Amsterdam UMC,Leiden Institute for Brain and Cognition
[8] Leiden University Medical Center,Department of Social and Behavioural Sciences, Interdisciplinary Social Science
[9] Leiden University Medical Center,Institute of Psychiatry and Mental Health, Hospital General Universitario Gregorio Marañón, CIBERSAM, IiSGM
[10] Youth Studies,Julius Center for Health Sciences and Primary Care, Department of Biostatistics and Research Support
[11] Utrecht University,Department of Psychiatry
[12] Universidad Complutense,Program in Genetics and Genome Biology, Research Institute
[13] School of Medicine,undefined
[14] University Medical Center Utrecht,undefined
[15] The Hospital for Sick Children and University of Toronto,undefined
[16] The Hospital for Sick Children,undefined
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摘要
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.
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