| Literature DB >> 34220580 |
Seunggyu Lee1, Hyewon Kim2, Mi Jin Park3, Hong Jin Jeon1,3,4.
Abstract
In this study, a literature survey was conducted of research into the development and use of wearable devices and sensors in patients with depression. We collected 18 studies that had investigated wearable devices for assessment, monitoring, or prediction of depression. In this report, we examine the sensors of the various types of wearable devices (e.g., actigraphy units, wristbands, fitness trackers, and smartwatches) and parameters measured through sensors in people with depression. In addition, we discuss future trends, referring to research in other areas employing wearable devices, and suggest the challenges of using wearable devices in the field of depression. Real-time objective monitoring of symptoms and novel approaches for diagnosis and treatment using wearable devices will lead to changes in management of patients with depression. During the process, it is necessary to overcome several issues, including limited types of collected data, reliability, user adherence, and privacy concerns.Entities:
Keywords: biomarkers in psychiatry; major depression; mood monitoring; sensors; wearable devices
Year: 2021 PMID: 34220580 PMCID: PMC8245757 DOI: 10.3389/fpsyt.2021.672347
Source DB: PubMed Journal: Front Psychiatry ISSN: 1664-0640 Impact factor: 4.157
Figure 1Flow diagram of the literature search. aPubMed/Medline: n = 89; Web of Science: n = 126.
Clinical trials with wearable devices in research on depression.
| Raoux et al. ( | Inpatients with MDD ( | Wrist actigraph | 24-h motor activity pattern monitoring at Days 0 and 28. | Activity level was increased after pharmaceutical treatments. |
| Winkler et al. ( | Outpatients with seasonal affective disorder ( | Wrist actigraph | 4 weeks of activity monitoring with BLT in the morning. | BLT normalized disturbed activity patterns and restored circadian rhythms in seasonal affective disorder patients. |
| Chung and Tso ( | Patients during an acute episode of MDD ( | Wrist actigraph | Actigraphic data collected twice over a 3-month period. | Sleep data measured by actigraphy may predict pain symptoms in MDD. |
| Razavi et al. ( | Medicated inpatients with MDD ( | Wrist actigraph | 24-h actigraphic monitoring. | Motor-related single item “activities” of HAMD were associated with motor activity parameters, while the total score was not. |
| McCall and McCall ( | Patients with a current major depressive episode and chronic insomnia ( | Wrist actigraph | Overnight study with concurrent actigraphic and PSG monitoring. | There were moderate positive correlations between actigraphy and PSG for all variables. |
| Rothschild-Fuentes et al. ( | MDD outpatients aged 60 years or more ( | Wrist actigraph | Actigraphic parameters recorded before mirtazapine treatment and at day 60 of the treatment. | Sleep fragmentation index was significantly decreased after mirtazapine treatment, while other sleep parameters were not significantly changed. |
| Winkler et al. ( | Inpatients with treatment-resistant depression. | Wrist actigraph | Activity level measured before and after ECT. | Remitters had increases of light activity, total activity, and circadian amplitude. |
| Hoogerhoud et al. ( | Severely depressed patients ( | Wrist actigraph | 5-day actigraph monitoring during ECT course. | Actigraphy-assessed sleep in the short-term was not affected by ECT. |
| Krane-Gartiser et al. ( | MDD inpatients with and without motor retardation ( | Wrist actigraph | 24-h actigraphy recordings. | Reduced mean activity level, higher intraindividual variability, and lower complexity were shown in patients with motor retardation compared with patients without motor retardation. |
| Nishida et al. ( | Patients with medication-resistant MDD. | Waist actigraph | Monitoring over the course of rTMS treatments. | Sleep variables did not show significant changes, but |
| O'Brien et al. ( | Adults with late-life depression and aged 60 years or more ( | A novel wrist-worn device with three accelerometers | Monitoring over 7 days. | Subjects with late-life depression showed significantly reduced physical activity and slower fine motor movements. |
| Cook et al. ( | Patients with unipolar MDD ( | Fitbit Flex™ | An overnight study with concurrent actigraphic and PSG monitoring. | The Fitbit Flex™ is not adequate to be substituted for PSG when evaluating sleep in MDD. |
| Cormack et al. ( | Patients with mild-to-moderate MDD ( | Apple watch | Cognition and depressed mood assessment by new Cognition Kit app every day over 6 weeks. | Daily mood and cognitive assessments correlated moderately with validated tests. |
| Rojo-Wissar et al. ( | Adults with MDD ( | Wrist actigraph | Self-reported parental bonding instrument and wrist actigraphy (for 1 week) were evaluated. | Sleep characteristics in adulthood were associated with maternal bonding but were independent of depression status. |
| Tazawa et al. ( | Depressed patients ( | Silmee W20 wristband | Machine learning models developed using data collected by the device over seven days. | Skin temperature and sleep parameters were the most significant features for prediction. |
| Powell et al. ( | Patients with severe unipolar or bipolar depression ( | PKG | PKG used to assess motor symptoms in depression. | PKG measures were significantly correlated with clinically assessed melancholia. |
| Peis et al. ( | Depressed patients ( | Wrist actigraph | Regression model was developed to predict clinical course and hospital discharge of depressed patients. | Increased motor activity and early patterns of actigraphic measures allowed for accurate prediction of hospital discharge date. |
| Pedrelli et al. ( | Patients with MDD ( | Empatica E4 wristband | Assessment by smartphone, wristband sensors, in-person clinical interviews, HDRS for 8 weeks. | The predicted score of the developed model and clinician-rated HDRS showed moderate-to-high correlation; skin conductance, HRV, and activity were important features of the model. |