Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls

Research output: Contribution to journalJournal articleResearchpeer-review

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Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls. / Melbye, Sigurd; Stanislaus, Sharleny; Vinberg, Maj; Frost, Mads; Bardram, Jakob Eyvind; Kessing, Lars Vedel; Faurholt-Jepsen, Maria.

In: Frontiers in Psychiatry, Vol. 12, 559954, 2021.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Melbye, S, Stanislaus, S, Vinberg, M, Frost, M, Bardram, JE, Kessing, LV & Faurholt-Jepsen, M 2021, 'Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls', Frontiers in Psychiatry, vol. 12, 559954. https://doi.org/10.3389/fpsyt.2021.559954

APA

Melbye, S., Stanislaus, S., Vinberg, M., Frost, M., Bardram, J. E., Kessing, L. V., & Faurholt-Jepsen, M. (2021). Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls. Frontiers in Psychiatry, 12, [559954]. https://doi.org/10.3389/fpsyt.2021.559954

Vancouver

Melbye S, Stanislaus S, Vinberg M, Frost M, Bardram JE, Kessing LV et al. Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls. Frontiers in Psychiatry. 2021;12. 559954. https://doi.org/10.3389/fpsyt.2021.559954

Author

Melbye, Sigurd ; Stanislaus, Sharleny ; Vinberg, Maj ; Frost, Mads ; Bardram, Jakob Eyvind ; Kessing, Lars Vedel ; Faurholt-Jepsen, Maria. / Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls. In: Frontiers in Psychiatry. 2021 ; Vol. 12.

Bibtex

@article{47d880aa7ee240359ada67d7221d6356,
title = "Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls",
abstract = "Background: Smartphones may facilitate continuous and fine-grained monitoring of behavioral activities via automatically generated data and could prove to be especially valuable in monitoring illness activity in young patients with bipolar disorder (BD), who often present with rapid changes in mood and related symptoms. The present pilot study in young patients with newly diagnosed BD and healthy controls (HC) aimed to (1) validate automatically generated smartphone data reflecting physical and social activity and phone usage against validated clinical rating scales and questionnaires; (2) investigate differences in automatically generated smartphone data between young patients with newly diagnosed BD and HC; and (3) investigate associations between automatically generated smartphone data and smartphone-based self-monitored mood and activity in young patients with newly diagnosed BD. Methods: A total of 40 young patients with newly diagnosed BD and 21 HC aged 15–25 years provided daily automatically generated smartphone data for 3–779 days [median (IQR) = 140 (11.5–268.5)], in addition to daily smartphone-based self-monitoring of activity and mood. All participants were assessed with clinical rating scales. Results: (1) The number of outgoing phone calls was positively associated with scores on the Young Mania Rating Scale and subitems concerning activity and speech. The number of missed calls (p = 0.015) and the number of outgoing text messages (p = 0.017) were positively associated with the level of psychomotor agitation according to the Hamilton Depression Rating scale subitem 9. (2) Young patients with newly diagnosed BD had a higher number of incoming calls compared with HC (BD: mean = 1.419, 95% CI: 1.162, 1.677; HC: mean = 0.972, 95% CI: 0.637, 1.308; p = 0.043) and lower self-monitored mood and activity (p's < 0.001). (3) Smartphone-based self-monitored mood and activity were positively associated with step counts and the number of outgoing calls, respectively (p's < 0.001). Conclusion: Automatically generated data on physical and social activity and phone usage seem to reflect symptoms. These data differ between young patients with newly diagnosed BD and HC and reflect changes in illness activity in young patients with BD. Automatically generated smartphone-based data could be a useful clinical tool in diagnosing and monitoring illness activity in young patients with BD.",
keywords = "activity, bipolar disorder, child and adolescent psychiatry, sensor data, smartphones, social activity",
author = "Sigurd Melbye and Sharleny Stanislaus and Maj Vinberg and Mads Frost and Bardram, {Jakob Eyvind} and Kessing, {Lars Vedel} and Maria Faurholt-Jepsen",
note = "Publisher Copyright: {\textcopyright} Copyright {\textcopyright} 2021 Melbye, Stanislaus, Vinberg, Frost, Bardram, Kessing and Faurholt-Jepsen.",
year = "2021",
doi = "10.3389/fpsyt.2021.559954",
language = "English",
volume = "12",
journal = "Frontiers in Psychiatry",
issn = "1664-0640",
publisher = "Frontiers Research Foundation",

}

RIS

TY - JOUR

T1 - Automatically Generated Smartphone Data in Young Patients With Newly Diagnosed Bipolar Disorder and Healthy Controls

AU - Melbye, Sigurd

AU - Stanislaus, Sharleny

AU - Vinberg, Maj

AU - Frost, Mads

AU - Bardram, Jakob Eyvind

AU - Kessing, Lars Vedel

AU - Faurholt-Jepsen, Maria

N1 - Publisher Copyright: © Copyright © 2021 Melbye, Stanislaus, Vinberg, Frost, Bardram, Kessing and Faurholt-Jepsen.

PY - 2021

Y1 - 2021

N2 - Background: Smartphones may facilitate continuous and fine-grained monitoring of behavioral activities via automatically generated data and could prove to be especially valuable in monitoring illness activity in young patients with bipolar disorder (BD), who often present with rapid changes in mood and related symptoms. The present pilot study in young patients with newly diagnosed BD and healthy controls (HC) aimed to (1) validate automatically generated smartphone data reflecting physical and social activity and phone usage against validated clinical rating scales and questionnaires; (2) investigate differences in automatically generated smartphone data between young patients with newly diagnosed BD and HC; and (3) investigate associations between automatically generated smartphone data and smartphone-based self-monitored mood and activity in young patients with newly diagnosed BD. Methods: A total of 40 young patients with newly diagnosed BD and 21 HC aged 15–25 years provided daily automatically generated smartphone data for 3–779 days [median (IQR) = 140 (11.5–268.5)], in addition to daily smartphone-based self-monitoring of activity and mood. All participants were assessed with clinical rating scales. Results: (1) The number of outgoing phone calls was positively associated with scores on the Young Mania Rating Scale and subitems concerning activity and speech. The number of missed calls (p = 0.015) and the number of outgoing text messages (p = 0.017) were positively associated with the level of psychomotor agitation according to the Hamilton Depression Rating scale subitem 9. (2) Young patients with newly diagnosed BD had a higher number of incoming calls compared with HC (BD: mean = 1.419, 95% CI: 1.162, 1.677; HC: mean = 0.972, 95% CI: 0.637, 1.308; p = 0.043) and lower self-monitored mood and activity (p's < 0.001). (3) Smartphone-based self-monitored mood and activity were positively associated with step counts and the number of outgoing calls, respectively (p's < 0.001). Conclusion: Automatically generated data on physical and social activity and phone usage seem to reflect symptoms. These data differ between young patients with newly diagnosed BD and HC and reflect changes in illness activity in young patients with BD. Automatically generated smartphone-based data could be a useful clinical tool in diagnosing and monitoring illness activity in young patients with BD.

AB - Background: Smartphones may facilitate continuous and fine-grained monitoring of behavioral activities via automatically generated data and could prove to be especially valuable in monitoring illness activity in young patients with bipolar disorder (BD), who often present with rapid changes in mood and related symptoms. The present pilot study in young patients with newly diagnosed BD and healthy controls (HC) aimed to (1) validate automatically generated smartphone data reflecting physical and social activity and phone usage against validated clinical rating scales and questionnaires; (2) investigate differences in automatically generated smartphone data between young patients with newly diagnosed BD and HC; and (3) investigate associations between automatically generated smartphone data and smartphone-based self-monitored mood and activity in young patients with newly diagnosed BD. Methods: A total of 40 young patients with newly diagnosed BD and 21 HC aged 15–25 years provided daily automatically generated smartphone data for 3–779 days [median (IQR) = 140 (11.5–268.5)], in addition to daily smartphone-based self-monitoring of activity and mood. All participants were assessed with clinical rating scales. Results: (1) The number of outgoing phone calls was positively associated with scores on the Young Mania Rating Scale and subitems concerning activity and speech. The number of missed calls (p = 0.015) and the number of outgoing text messages (p = 0.017) were positively associated with the level of psychomotor agitation according to the Hamilton Depression Rating scale subitem 9. (2) Young patients with newly diagnosed BD had a higher number of incoming calls compared with HC (BD: mean = 1.419, 95% CI: 1.162, 1.677; HC: mean = 0.972, 95% CI: 0.637, 1.308; p = 0.043) and lower self-monitored mood and activity (p's < 0.001). (3) Smartphone-based self-monitored mood and activity were positively associated with step counts and the number of outgoing calls, respectively (p's < 0.001). Conclusion: Automatically generated data on physical and social activity and phone usage seem to reflect symptoms. These data differ between young patients with newly diagnosed BD and HC and reflect changes in illness activity in young patients with BD. Automatically generated smartphone-based data could be a useful clinical tool in diagnosing and monitoring illness activity in young patients with BD.

KW - activity

KW - bipolar disorder

KW - child and adolescent psychiatry

KW - sensor data

KW - smartphones

KW - social activity

U2 - 10.3389/fpsyt.2021.559954

DO - 10.3389/fpsyt.2021.559954

M3 - Journal article

C2 - 34512403

AN - SCOPUS:85114597209

VL - 12

JO - Frontiers in Psychiatry

JF - Frontiers in Psychiatry

SN - 1664-0640

M1 - 559954

ER -

ID: 302054731