Digital phenotyping: towards replicable findings with comprehensive assessments and integrative models in bipolar disorders.
Ambulatory assessment
Bipolar disorders
Digital phenotyping
Mobile sensing
Smartphone sensing
Journal
International journal of bipolar disorders
ISSN: 2194-7511
Titre abrégé: Int J Bipolar Disord
Pays: Germany
ID NLM: 101622983
Informations de publication
Date de publication:
17 Nov 2020
17 Nov 2020
Historique:
received:
18
09
2020
accepted:
21
10
2020
entrez:
19
11
2020
pubmed:
20
11
2020
medline:
20
11
2020
Statut:
epublish
Résumé
Digital phenotyping promises to unobtrusively obtaining a continuous and objective input of symptomatology from patients' daily lives. The prime example are bipolar disorders, as smartphone parameters directly reflect bipolar symptomatology. Empirical studies, however, have yielded inconsistent findings. We believe that three main shortcomings have to be addressed to fully leverage the potential of digital phenotyping: short assessment periods, rare outcome assessments, and an extreme fragmentation of parameters without an integrative analytical strategy. To demonstrate how to overcome these shortcomings, we conducted frequent (biweekly) dimensional and categorical expert ratings and daily self-ratings over an extensive assessment period (12 months) in 29 patients with bipolar disorder. Digital phenotypes were monitored continuously. As an integrative analytical strategy, we used structural equation modelling to build latent psychopathological outcomes (mania, depression) and latent digital phenotype predictors (sleep, activity, communicativeness). Combining gold-standard categorical expert ratings with dimensional self and expert ratings resulted in two latent outcomes (mania and depression) with statistically meaningful factor loadings that dynamically varied over 299 days. Latent digital phenotypes of sleep and activity were associated with same-day latent manic psychopathology, suggesting that psychopathological alterations in bipolar disorders relate to domains (latent variables of sleep and activity) and not only to specific behaviors (such as the number of declined incoming calls). The identification of latent psychopathological outcomes that dimensionally vary on a daily basis will enable to empirically determine which combination of digital phenotypes at which days prior to an upcoming episode are viable as digital prodromal predictors.
Sections du résumé
BACKGROUND
BACKGROUND
Digital phenotyping promises to unobtrusively obtaining a continuous and objective input of symptomatology from patients' daily lives. The prime example are bipolar disorders, as smartphone parameters directly reflect bipolar symptomatology. Empirical studies, however, have yielded inconsistent findings. We believe that three main shortcomings have to be addressed to fully leverage the potential of digital phenotyping: short assessment periods, rare outcome assessments, and an extreme fragmentation of parameters without an integrative analytical strategy.
METHODS
METHODS
To demonstrate how to overcome these shortcomings, we conducted frequent (biweekly) dimensional and categorical expert ratings and daily self-ratings over an extensive assessment period (12 months) in 29 patients with bipolar disorder. Digital phenotypes were monitored continuously. As an integrative analytical strategy, we used structural equation modelling to build latent psychopathological outcomes (mania, depression) and latent digital phenotype predictors (sleep, activity, communicativeness).
OUTCOMES
RESULTS
Combining gold-standard categorical expert ratings with dimensional self and expert ratings resulted in two latent outcomes (mania and depression) with statistically meaningful factor loadings that dynamically varied over 299 days. Latent digital phenotypes of sleep and activity were associated with same-day latent manic psychopathology, suggesting that psychopathological alterations in bipolar disorders relate to domains (latent variables of sleep and activity) and not only to specific behaviors (such as the number of declined incoming calls). The identification of latent psychopathological outcomes that dimensionally vary on a daily basis will enable to empirically determine which combination of digital phenotypes at which days prior to an upcoming episode are viable as digital prodromal predictors.
Identifiants
pubmed: 33211262
doi: 10.1186/s40345-020-00210-4
pii: 10.1186/s40345-020-00210-4
pmc: PMC7677415
doi:
Types de publication
Journal Article
Langues
eng
Pagination
35Références
Acta Psychiatr Scand. 1979 Apr;59(4):420-30
pubmed: 433633
Psychiatry Res. 2008 Jun 30;159(3):359-66
pubmed: 18423616
Nat Rev Neurosci. 2013 May;14(5):365-76
pubmed: 23571845
BMC Psychiatry. 2018 Oct 26;18(1):349
pubmed: 30367608
Bipolar Disord. 2020 Sep;22(6):558-568
pubmed: 32232950
World Psychiatry. 2018 Oct;17(3):276-277
pubmed: 30192103
JMIR Mhealth Uhealth. 2018 Aug 13;6(8):e165
pubmed: 30104184
IEEE Trans Biomed Eng. 2017 Aug;64(8):1761-1771
pubmed: 28113247
Psychol Med. 2015 Oct;45(13):2691-704
pubmed: 26220802
Nat Rev Genet. 2019 Aug;20(8):467-484
pubmed: 31068683
Lancet Psychiatry. 2018 Mar;5(3):194-195
pubmed: 29482758
Aust N Z J Psychiatry. 2012 Nov;46(11):1068-78
pubmed: 22734088
Assessment. 2016 Aug;23(4):496-506
pubmed: 26975466
Bipolar Disord. 2015 Nov;17(7):715-28
pubmed: 26395972
Lancet Psychiatry. 2020 Apr;7(4):297-299
pubmed: 31635970
Br J Psychiatry. 1978 Nov;133:429-35
pubmed: 728692
Clin Psychol Sci. 2016 Jul;4(4):641-650
pubmed: 27642544
Psychol Med. 2020 Apr;50(5):838-848
pubmed: 30944054
Br J Psychiatry. 1979 Apr;134:382-9
pubmed: 444788
Nat Neurosci. 2019 Sep;22(9):1389-1393
pubmed: 31358990
Nat Biotechnol. 2015 May;33(5):462-3
pubmed: 25965751
Proc Natl Acad Sci U S A. 2016 Jul 12;113(28):7900-5
pubmed: 27357684
Annu Rev Clin Psychol. 2013;9:151-76
pubmed: 23157450