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Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field

Recent technological advances enable the collection of intensive longitudinal data. This scoping review aimed to provide an overview of methods for collecting intensive time series data in mental health research as well as basic principles, current applications, target constructs, and statistical me...

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Autores principales: Schick, Anita, Rauschenberg, Christian, Ader, Leonie, Daemen, Maud, Wieland, Lena M., Paetzold, Isabell, Postma, Mary Rose, Schulte-Strathaus, Julia C. C., Reininghaus, Ulrich
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9874995/
https://www.ncbi.nlm.nih.gov/pubmed/36377538
http://dx.doi.org/10.1017/S0033291722003336
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author Schick, Anita
Rauschenberg, Christian
Ader, Leonie
Daemen, Maud
Wieland, Lena M.
Paetzold, Isabell
Postma, Mary Rose
Schulte-Strathaus, Julia C. C.
Reininghaus, Ulrich
author_facet Schick, Anita
Rauschenberg, Christian
Ader, Leonie
Daemen, Maud
Wieland, Lena M.
Paetzold, Isabell
Postma, Mary Rose
Schulte-Strathaus, Julia C. C.
Reininghaus, Ulrich
author_sort Schick, Anita
collection PubMed
description Recent technological advances enable the collection of intensive longitudinal data. This scoping review aimed to provide an overview of methods for collecting intensive time series data in mental health research as well as basic principles, current applications, target constructs, and statistical methods for this type of data. In January 2021, the database MEDLINE was searched. Original articles were identified that (1) used active or passive data collection methods to gather intensive longitudinal data in daily life, (2) had a minimum sample size of N ⩾ 100 participants, and (3) included individuals with subclinical or clinical mental health problems. In total, 3799 original articles were identified, of which 174 met inclusion criteria. The most widely used methods were diary techniques (e.g. Experience Sampling Methodology), various types of sensors (e.g. accelerometer), and app usage data. Target constructs included affect, various symptom domains, cognitive processes, sleep, dysfunctional behaviour, physical activity, and social media use. There was strong evidence on feasibility of, and high compliance with, active and passive data collection methods in diverse clinical settings and groups. Study designs, sampling schedules, and measures varied considerably across studies, limiting the generalisability of findings. Gathering intensive longitudinal data has significant potential to advance mental health research. However, more methodological research is required to establish and meet critical quality standards in this rapidly evolving field. Advanced approaches such as digital phenotyping, ecological momentary interventions, and machine-learning methods will be required to efficiently use intensive longitudinal data and deliver personalised digital interventions and services for improving public mental health.
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spelling pubmed-98749952023-02-02 Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field Schick, Anita Rauschenberg, Christian Ader, Leonie Daemen, Maud Wieland, Lena M. Paetzold, Isabell Postma, Mary Rose Schulte-Strathaus, Julia C. C. Reininghaus, Ulrich Psychol Med Invited Review Recent technological advances enable the collection of intensive longitudinal data. This scoping review aimed to provide an overview of methods for collecting intensive time series data in mental health research as well as basic principles, current applications, target constructs, and statistical methods for this type of data. In January 2021, the database MEDLINE was searched. Original articles were identified that (1) used active or passive data collection methods to gather intensive longitudinal data in daily life, (2) had a minimum sample size of N ⩾ 100 participants, and (3) included individuals with subclinical or clinical mental health problems. In total, 3799 original articles were identified, of which 174 met inclusion criteria. The most widely used methods were diary techniques (e.g. Experience Sampling Methodology), various types of sensors (e.g. accelerometer), and app usage data. Target constructs included affect, various symptom domains, cognitive processes, sleep, dysfunctional behaviour, physical activity, and social media use. There was strong evidence on feasibility of, and high compliance with, active and passive data collection methods in diverse clinical settings and groups. Study designs, sampling schedules, and measures varied considerably across studies, limiting the generalisability of findings. Gathering intensive longitudinal data has significant potential to advance mental health research. However, more methodological research is required to establish and meet critical quality standards in this rapidly evolving field. Advanced approaches such as digital phenotyping, ecological momentary interventions, and machine-learning methods will be required to efficiently use intensive longitudinal data and deliver personalised digital interventions and services for improving public mental health. Cambridge University Press 2023-01 2022-11-15 /pmc/articles/PMC9874995/ /pubmed/36377538 http://dx.doi.org/10.1017/S0033291722003336 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
spellingShingle Invited Review
Schick, Anita
Rauschenberg, Christian
Ader, Leonie
Daemen, Maud
Wieland, Lena M.
Paetzold, Isabell
Postma, Mary Rose
Schulte-Strathaus, Julia C. C.
Reininghaus, Ulrich
Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field
title Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field
title_full Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field
title_fullStr Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field
title_full_unstemmed Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field
title_short Novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field
title_sort novel digital methods for gathering intensive time series data in mental health research: scoping review of a rapidly evolving field
topic Invited Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9874995/
https://www.ncbi.nlm.nih.gov/pubmed/36377538
http://dx.doi.org/10.1017/S0033291722003336
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