Digital health tools for the passive monitoring of depression: a systematic review of methods

被引:100
作者
De Angel, Valeria [1 ,2 ]
Lewis, Serena [1 ,3 ]
White, Katie [1 ]
Oetzmann, Carolin [1 ]
Leightley, Daniel [1 ]
Oprea, Emanuela [1 ]
Lavelle, Grace [1 ]
Matcham, Faith [1 ,4 ]
Pace, Alice
Mohr, David C. [5 ,6 ]
Dobson, Richard [2 ,7 ]
Hotopf, Matthew [1 ,2 ]
机构
[1] Kings Coll London, Inst Psychiat Psychol & Neurosci, London, England
[2] South London & Maudsley NHS Fdn Trust, NIHR Maudsley Biomed Res Ctr, London, England
[3] Univ Bath, Dept Psychol, Bath, Avon, England
[4] Chelsea & Westminster Hosp NHS Fdn Trust, London, England
[5] Northwestern Univ, Feinberg Sch Med, Ctr Behav Intervent Technol, Chicago, IL USA
[6] Northwestern Univ, Feinberg Sch Med, Dept Prevent Med, Chicago, IL USA
[7] Kings Coll London, Inst Psychiat Psychol & Neurosci IoPPN, Dept Biostat & Hlth Informat, 16 Crespigny Pk, London SE5 8AF, England
关键词
SLEEP-WAKE CYCLE; PHYSICAL-ACTIVITY; ACTIVITY RHYTHM; YOUNG-ADULTS; SYMPTOMS; ACTIGRAPHY; SMARTPHONE; MOOD; LIFE; DISTURBANCES;
D O I
10.1038/s41746-021-00548-8
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
The use of digital tools to measure physiological and behavioural variables of potential relevance to mental health is a growing field sitting at the intersection between computer science, engineering, and clinical science. We summarised the literature on remote measuring technologies, mapping methodological challenges and threats to reproducibility, and identified leading digital signals for depression. Medical and computer science databases were searched between January 2007 and November 2019. Published studies linking depression and objective behavioural data obtained from smartphone and wearable device sensors in adults with unipolar depression and healthy subjects were included. A descriptive approach was taken to synthesise study methodologies. We included 51 studies and found threats to reproducibility and transparency arising from failure to provide comprehensive descriptions of recruitment strategies, sample information, feature construction and the determination and handling of missing data. The literature is characterised by small sample sizes, short follow-up duration and great variability in the quality of reporting, limiting the interpretability of pooled results. Bivariate analyses show consistency in statistically significant associations between depression and digital features from sleep, physical activity, location, and phone use data. Machine learning models found the predictive value of aggregated features. Given the pitfalls in the combined literature, these results should be taken purely as a starting point for hypothesis generation. Since this research is ultimately aimed at informing clinical practice, we recommend improvements in reporting standards including consideration of generalisability and reproducibility, such as wider diversity of samples, thorough reporting methodology and the reporting of potential bias in studies with numerous features.
引用
收藏
页数:14
相关论文
共 91 条
[1]  
Adamakis M., 2017, Journal of Mobile Technology in Medicine, V6, P28, DOI [DOI 10.7309/JMTM.6.2, DOI 10.7309/JMTM.6.2.4]
[2]   Feeling validated yet? A scoping review of the use of consumer-targeted wearable and mobile technology to measure and improve sleep [J].
Baron, Kelly Glazer ;
Duffecy, Jennifer ;
Berendsen, Mark A. ;
Mason, Ivy Cheung ;
Lattie, Emily G. ;
Manalo, Natalie C. .
SLEEP MEDICINE REVIEWS, 2018, 40 :151-159
[3]   Next-Generation Psychiatric Assessment: Using Smartphone Sensors to Monitor Behavior and Mental Health [J].
Ben-Zeev, Dror ;
Scherer, Emily A. ;
Wang, Rui ;
Xie, Haiyi ;
Campbell, Andrew T. .
PSYCHIATRIC REHABILITATION JOURNAL, 2015, 38 (03) :218-226
[4]   Contextual Analysis to Understand Compliance with Smartphone-based Ecological Momentary Assessment [J].
Boukhechba, Mehdi ;
Cai, Lihua ;
Chow, Philip, I ;
Fua, Karl ;
Gerber, Matthew S. ;
Teachman, Bethany A. ;
Barnes, Laura E. .
PROCEEDINGS OF THE 12TH EAI INTERNATIONAL CONFERENCE ON PERVASIVE COMPUTING TECHNOLOGIES FOR HEALTHCARE (PERVASIVEHEALTH 2018), 2018, :232-238
[5]   Harnessing Context Sensing to Develop a Mobile Intervention for Depression [J].
Burns, Michelle Nicole ;
Begale, Mark ;
Duffecy, Jennifer ;
Gergle, Darren ;
Karr, Chris J. ;
Giangrande, Emily ;
Mohr, David C. .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2011, 13 (03) :e55
[6]   A psychometric investigation of the sleep, circadian rhythms, and mood (SCRAM) questionnaire [J].
Byrne, Jamie E. M. ;
Bullock, Ben ;
Brydon, Aida ;
Murray, Greg .
CHRONOBIOLOGY INTERNATIONAL, 2019, 36 (02) :265-275
[7]   Loneliness as a specific risk factor for depressive symptoms: Cross-sectional and longitudinal analyses [J].
Cacioppo, JT ;
Hughes, ME ;
Waite, LJ ;
Hawkley, LC ;
Thisted, RA .
PSYCHOLOGY AND AGING, 2006, 21 (01) :140-151
[8]   Sleep Patterns and Psychological Distress in Women Living in an Inner City [J].
Caldwell, Barbara A. ;
Redeker, Nancy S. .
RESEARCH IN NURSING & HEALTH, 2009, 32 (02) :177-190
[9]   Free-living cross-comparison of two wearable monitors for sleep and physical activity in healthy young adults [J].
Cellini, Nicola ;
McDevitt, Elizabeth A. ;
Mednick, Sara C. ;
Buman, Matthew P. .
PHYSIOLOGY & BEHAVIOR, 2016, 157 :79-86
[10]  
Cho YongMin., 2016, Environmental Health and Toxicology, V31, DOI DOI 10.5620/EHT.E2016022