Recurrent Neural Networks in Mobile Sampling and Intervention.
deep neural networks
digital phenotyping and schizophrenia
ecological momentary assessment
ecological momentary intervention
machine learning
mobile health (mHealth)
Journal
Schizophrenia bulletin
ISSN: 1745-1701
Titre abrégé: Schizophr Bull
Pays: United States
ID NLM: 0236760
Informations de publication
Date de publication:
07 03 2019
07 03 2019
Historique:
pmc-release:
07
03
2020
pubmed:
30
11
2018
medline:
9
4
2020
entrez:
30
11
2018
Statut:
ppublish
Résumé
The rapid rise and now widespread distribution of handheld and wearable devices, such as smartphones, fitness trackers, or smartwatches, has opened a new universe of possibilities for monitoring emotion and cognition in everyday-life context, and for applying experience- and context-specific interventions in psychosis. These devices are equipped with multiple sensors, recording channels, and app-based opportunities for assessment using experience sampling methodology (ESM), which enables to collect vast amounts of temporally highly resolved and ecologically valid personal data from various domains in daily life. In psychosis, this allows to elucidate intermediate and clinical phenotypes, psychological processes and mechanisms, and their interplay with socioenvironmental factors, as well as to evaluate the effects of treatments for psychosis on important clinical and social outcomes. Although these data offer immense opportunities, they also pose tremendous challenges for data analysis. These challenges include the sheer amount of time series data generated and the many different data modalities and their specific properties and sampling rates. After a brief review of studies and approaches to ESM and ecological momentary interventions in psychosis, we will discuss recurrent neural networks (RNNs) as a powerful statistical machine learning approach for time series analysis and prediction in this context. RNNs can be trained on multiple data modalities simultaneously to learn a dynamical model that could be used to forecast individual trajectories and schedule online feedback and intervention accordingly. Future research using this approach is likely going to offer new avenues to further our understanding and treatments of psychosis.
Identifiants
pubmed: 30496527
pii: 5213067
doi: 10.1093/schbul/sby171
pmc: PMC6403085
doi:
Types de publication
Journal Article
Research Support, Non-U.S. Gov't
Review
Langues
eng
Sous-ensembles de citation
IM
Pagination
272-276Informations de copyright
© The Author(s) 2018. Published by Oxford University Press on behalf of the Maryland Psychiatric Research Center. All rights reserved. For permissions, please email: journals.permissions@oup.com.
Références
Arch Gen Psychiatry. 2001 Dec;58(12):1137-44
pubmed: 11735842
Schizophr Bull. 2019 Jun 18;45(4):871-882
pubmed: 30189093
Curr Psychiatry Rep. 2018 Jun 28;20(7):51
pubmed: 29956120
Schizophr Bull. 2014 Nov;40(6):1244-53
pubmed: 24609454
JMIR Mhealth Uhealth. 2015 Jan 19;3(1):e8
pubmed: 25599627
Schizophr Bull. 2012 May;38(3):414-25
pubmed: 22080492
Schizophr Bull. 2011 Mar;37(2):244-7
pubmed: 21224492
Psychiatr Prax. 2018 Mar;45(2):59-61
pubmed: 29495051
Psychol Med. 2009 Sep;39(9):1533-47
pubmed: 19215626
Neural Netw. 1998 Dec;11(9):1589-1599
pubmed: 12662730
Curr Opin Psychiatry. 2016 Jul;29(4):258-63
pubmed: 27153125
Schizophr Bull. 2008 Mar;34(2):220-5
pubmed: 18203757
Psychiatr Rehabil J. 2013 Dec;36(4):289-296
pubmed: 24015913
Psychol Med. 2011 Nov;41(11):2305-15
pubmed: 21733219
World Psychiatry. 2018 Jun;17(2):123-132
pubmed: 29856567
PLoS Comput Biol. 2017 Jun 2;13(6):e1005542
pubmed: 28574992
Biol Psychiatry Cogn Neurosci Neuroimaging. 2021 Sep;6(9):865-876
pubmed: 32249208
Annu Rev Clin Psychol. 2008;4:1-32
pubmed: 18509902
Neural Netw. 2015 Jan;61:85-117
pubmed: 25462637