Cargando…

Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling

BACKGROUND: Although effective mental health treatments exist, the ability to match individuals to optimal treatments is poor, and timely assessment of response is difficult. One reason for these challenges is the lack of objective measurement of psychiatric symptoms. Sensors and active tasks record...

Descripción completa

Detalles Bibliográficos
Autores principales: Nickels, Stefanie, Edwards, Matthew D, Poole, Sarah F, Winter, Dale, Gronsbell, Jessica, Rozenkrants, Bella, Miller, David P, Fleck, Mathias, McLean, Alan, Peterson, Bret, Chen, Yuanwei, Hwang, Alan, Rust-Smith, David, Brant, Arthur, Campbell, Andrew, Chen, Chen, Walter, Collin, Arean, Patricia A, Hsin, Honor, Myers, Lance J, Marks Jr, William J, Mega, Jessica L, Schlosser, Danielle A, Conrad, Andrew J, Califf, Robert M, Fromer, Menachem
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8386379/
https://www.ncbi.nlm.nih.gov/pubmed/34383685
http://dx.doi.org/10.2196/27589
_version_ 1783742250406117376
author Nickels, Stefanie
Edwards, Matthew D
Poole, Sarah F
Winter, Dale
Gronsbell, Jessica
Rozenkrants, Bella
Miller, David P
Fleck, Mathias
McLean, Alan
Peterson, Bret
Chen, Yuanwei
Hwang, Alan
Rust-Smith, David
Brant, Arthur
Campbell, Andrew
Chen, Chen
Walter, Collin
Arean, Patricia A
Hsin, Honor
Myers, Lance J
Marks Jr, William J
Mega, Jessica L
Schlosser, Danielle A
Conrad, Andrew J
Califf, Robert M
Fromer, Menachem
author_facet Nickels, Stefanie
Edwards, Matthew D
Poole, Sarah F
Winter, Dale
Gronsbell, Jessica
Rozenkrants, Bella
Miller, David P
Fleck, Mathias
McLean, Alan
Peterson, Bret
Chen, Yuanwei
Hwang, Alan
Rust-Smith, David
Brant, Arthur
Campbell, Andrew
Chen, Chen
Walter, Collin
Arean, Patricia A
Hsin, Honor
Myers, Lance J
Marks Jr, William J
Mega, Jessica L
Schlosser, Danielle A
Conrad, Andrew J
Califf, Robert M
Fromer, Menachem
author_sort Nickels, Stefanie
collection PubMed
description BACKGROUND: Although effective mental health treatments exist, the ability to match individuals to optimal treatments is poor, and timely assessment of response is difficult. One reason for these challenges is the lack of objective measurement of psychiatric symptoms. Sensors and active tasks recorded by smartphones provide a low-burden, low-cost, and scalable way to capture real-world data from patients that could augment clinical decision-making and move the field of mental health closer to measurement-based care. OBJECTIVE: This study tests the feasibility of a fully remote study on individuals with self-reported depression using an Android-based smartphone app to collect subjective and objective measures associated with depression severity. The goals of this pilot study are to develop an engaging user interface for high task adherence through user-centered design; test the quality of collected data from passive sensors; start building clinically relevant behavioral measures (features) from passive sensors and active inputs; and preliminarily explore connections between these features and depression severity. METHODS: A total of 600 participants were asked to download the study app to join this fully remote, observational 12-week study. The app passively collected 20 sensor data streams (eg, ambient audio level, location, and inertial measurement units), and participants were asked to complete daily survey tasks, weekly voice diaries, and the clinically validated Patient Health Questionnaire (PHQ-9) self-survey. Pairwise correlations between derived behavioral features (eg, weekly minutes spent at home) and PHQ-9 were computed. Using these behavioral features, we also constructed an elastic net penalized multivariate logistic regression model predicting depressed versus nondepressed PHQ-9 scores (ie, dichotomized PHQ-9). RESULTS: A total of 415 individuals logged into the app. Over the course of the 12-week study, these participants completed 83.35% (4151/4980) of the PHQ-9s. Applying data sufficiency rules for minimally necessary daily and weekly data resulted in 3779 participant-weeks of data across 384 participants. Using a subset of 34 behavioral features, we found that 11 features showed a significant (P<.001 Benjamini-Hochberg adjusted) Spearman correlation with weekly PHQ-9, including voice diary–derived word sentiment and ambient audio levels. Restricting the data to those cases in which all 34 behavioral features were present, we had available 1013 participant-weeks from 186 participants. The logistic regression model predicting depression status resulted in a 10-fold cross-validated mean area under the curve of 0.656 (SD 0.079). CONCLUSIONS: This study finds a strong proof of concept for the use of a smartphone-based assessment of depression outcomes. Behavioral features derived from passive sensors and active tasks show promising correlations with a validated clinical measure of depression (PHQ-9). Future work is needed to increase scale that may permit the construction of more complex (eg, nonlinear) predictive models and better handle data missingness.
format Online
Article
Text
id pubmed-8386379
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-83863792021-09-02 Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling Nickels, Stefanie Edwards, Matthew D Poole, Sarah F Winter, Dale Gronsbell, Jessica Rozenkrants, Bella Miller, David P Fleck, Mathias McLean, Alan Peterson, Bret Chen, Yuanwei Hwang, Alan Rust-Smith, David Brant, Arthur Campbell, Andrew Chen, Chen Walter, Collin Arean, Patricia A Hsin, Honor Myers, Lance J Marks Jr, William J Mega, Jessica L Schlosser, Danielle A Conrad, Andrew J Califf, Robert M Fromer, Menachem JMIR Ment Health Original Paper BACKGROUND: Although effective mental health treatments exist, the ability to match individuals to optimal treatments is poor, and timely assessment of response is difficult. One reason for these challenges is the lack of objective measurement of psychiatric symptoms. Sensors and active tasks recorded by smartphones provide a low-burden, low-cost, and scalable way to capture real-world data from patients that could augment clinical decision-making and move the field of mental health closer to measurement-based care. OBJECTIVE: This study tests the feasibility of a fully remote study on individuals with self-reported depression using an Android-based smartphone app to collect subjective and objective measures associated with depression severity. The goals of this pilot study are to develop an engaging user interface for high task adherence through user-centered design; test the quality of collected data from passive sensors; start building clinically relevant behavioral measures (features) from passive sensors and active inputs; and preliminarily explore connections between these features and depression severity. METHODS: A total of 600 participants were asked to download the study app to join this fully remote, observational 12-week study. The app passively collected 20 sensor data streams (eg, ambient audio level, location, and inertial measurement units), and participants were asked to complete daily survey tasks, weekly voice diaries, and the clinically validated Patient Health Questionnaire (PHQ-9) self-survey. Pairwise correlations between derived behavioral features (eg, weekly minutes spent at home) and PHQ-9 were computed. Using these behavioral features, we also constructed an elastic net penalized multivariate logistic regression model predicting depressed versus nondepressed PHQ-9 scores (ie, dichotomized PHQ-9). RESULTS: A total of 415 individuals logged into the app. Over the course of the 12-week study, these participants completed 83.35% (4151/4980) of the PHQ-9s. Applying data sufficiency rules for minimally necessary daily and weekly data resulted in 3779 participant-weeks of data across 384 participants. Using a subset of 34 behavioral features, we found that 11 features showed a significant (P<.001 Benjamini-Hochberg adjusted) Spearman correlation with weekly PHQ-9, including voice diary–derived word sentiment and ambient audio levels. Restricting the data to those cases in which all 34 behavioral features were present, we had available 1013 participant-weeks from 186 participants. The logistic regression model predicting depression status resulted in a 10-fold cross-validated mean area under the curve of 0.656 (SD 0.079). CONCLUSIONS: This study finds a strong proof of concept for the use of a smartphone-based assessment of depression outcomes. Behavioral features derived from passive sensors and active tasks show promising correlations with a validated clinical measure of depression (PHQ-9). Future work is needed to increase scale that may permit the construction of more complex (eg, nonlinear) predictive models and better handle data missingness. JMIR Publications 2021-08-10 /pmc/articles/PMC8386379/ /pubmed/34383685 http://dx.doi.org/10.2196/27589 Text en ©Stefanie Nickels, Matthew D Edwards, Sarah F Poole, Dale Winter, Jessica Gronsbell, Bella Rozenkrants, David P Miller, Mathias Fleck, Alan McLean, Bret Peterson, Yuanwei Chen, Alan Hwang, David Rust-Smith, Arthur Brant, Andrew Campbell, Chen Chen, Collin Walter, Patricia A Arean, Honor Hsin, Lance J Myers, William J Marks Jr, Jessica L Mega, Danielle A Schlosser, Andrew J Conrad, Robert M Califf, Menachem Fromer. Originally published in JMIR Mental Health (https://mental.jmir.org), 10.08.2021. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Mental Health, is properly cited. The complete bibliographic information, a link to the original publication on https://mental.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Nickels, Stefanie
Edwards, Matthew D
Poole, Sarah F
Winter, Dale
Gronsbell, Jessica
Rozenkrants, Bella
Miller, David P
Fleck, Mathias
McLean, Alan
Peterson, Bret
Chen, Yuanwei
Hwang, Alan
Rust-Smith, David
Brant, Arthur
Campbell, Andrew
Chen, Chen
Walter, Collin
Arean, Patricia A
Hsin, Honor
Myers, Lance J
Marks Jr, William J
Mega, Jessica L
Schlosser, Danielle A
Conrad, Andrew J
Califf, Robert M
Fromer, Menachem
Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling
title Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling
title_full Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling
title_fullStr Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling
title_full_unstemmed Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling
title_short Toward a Mobile Platform for Real-world Digital Measurement of Depression: User-Centered Design, Data Quality, and Behavioral and Clinical Modeling
title_sort toward a mobile platform for real-world digital measurement of depression: user-centered design, data quality, and behavioral and clinical modeling
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8386379/
https://www.ncbi.nlm.nih.gov/pubmed/34383685
http://dx.doi.org/10.2196/27589
work_keys_str_mv AT nickelsstefanie towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT edwardsmatthewd towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT poolesarahf towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT winterdale towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT gronsbelljessica towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT rozenkrantsbella towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT millerdavidp towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT fleckmathias towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT mcleanalan towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT petersonbret towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT chenyuanwei towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT hwangalan towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT rustsmithdavid towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT brantarthur towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT campbellandrew towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT chenchen towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT waltercollin towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT areanpatriciaa towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT hsinhonor towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT myerslancej towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT marksjrwilliamj towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT megajessical towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT schlosserdaniellea towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT conradandrewj towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT califfrobertm towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling
AT fromermenachem towardamobileplatformforrealworlddigitalmeasurementofdepressionusercentereddesigndataqualityandbehavioralandclinicalmodeling