| Literature DB >> 35285812 |
Victoria Welch1, Tom Joshua Wy2, Anna Ligezka3, Leslie C Hassett4, Paul E Croarkin2, Arjun P Athreya1, Magdalena Romanowicz2.
Abstract
BACKGROUND: Mental health disorders are a leading cause of medical disabilities across an individual's lifespan. This burden is particularly substantial in children and adolescents because of challenges in diagnosis and the lack of precision medicine approaches. However, the widespread adoption of wearable devices (eg, smart watches) that are conducive for artificial intelligence applications to remotely diagnose and manage psychiatric disorders in children and adolescents is promising.Entities:
Keywords: artificial intelligence; child psychiatry; mobile computing; wearable technologies
Mesh:
Year: 2022 PMID: 35285812 PMCID: PMC8961347 DOI: 10.2196/33560
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 7.076
Figure 1PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) flow diagram for study selection.
Summary of studies on the use of wearable devices in child psychiatry.
| Study | Year | Sample characteristics | Diagnosis | Age | Device | Measured physiological symptoms |
| Bilecci et al [ | 2018 | 40 participants: 29 males and 11 females; race not specified | ASDa | 18-36 months | ECGb chest strap (Shimmer) | HRc, SDNNd, CVe, LFf, and HFg |
| Bilecci et al [ | 2016 | 5 participants: all males; race not specified | ASD | 6-8 years | ECG chest strap and EEGh headset (EEG- Enobio wireless device) | QEEGi and HRVj |
| Di Palma et al [ | 2017 | 5 participants: all males; race not specified | ASD | 6-8 years | ECG chest strap (based off Shimmer) | HR, RMSSDk, and RSAl |
| Faedda et al [ | 2016 | 155 participants: 97 males and 58 females; race not specified | BPm or ADHDn | 5-18 years | ActiGraph belt (AMIo motionlogger) | Diurnal activity, sleep efficiency, and circadian regulation |
| Fioriello et al [ | 2020 | 24 participants: 18 males and 6 females; race not specified | ASD or LDp | 30-72 months | ECG chest strap | HR |
| Gayet al [ | 2014 | not specified | ASD | Not specified | Accelerometer wrist strap (Affectiva Q Sensor), EEG headset (MindWave Mobile), ECG chest strap (Zephyr BioHarness), and mobile phone app (MyMedia) | Skin temperature and skin conductive data (accelerometer), EEG power spectrums (EEG), and HR, HRV, respiration, body temperature, and respiration (ECG) |
| Goodwin et al [ | 2019 | 20 participants: 75% male; 95% White; 90% non-Hispanic | ASD | 6-17 years | Wrist-worn biosensor (Empatica E4) | HRV, EDAq, and motion-based activity (accelerometer) |
| Krupa et al [ | 2016 | 60 participants: sex and race not specified | ASD | 3-12 years | Wrist-worn biosensor | HRV and EDA or GSRr |
| Kushki et al [ | 2015 | 24 participants: 17 males and 7 females; race not specified | ASD | Not specified | ECG chest strap (Shimmer) | RRs intervals |
| Leikauf et al [ | 2021 | 32 participants: 17 males and 15 females; race not specified | ADHD | 8-17 years | Smart watch app (StopWatch) | Movement data (actigraphy via accelerometer) |
| Lin et al [ | 2020 | 30 participants: 11 males and 4 females with age-matched controls; race not specified | ADHD | 5-9 years | Smart watch (Asus ZenWatch 3) | Angular velocity (gyroscope) and acceleration in axial direction (accelerometer) |
| McGinnis et al [ | 2021 | 63 participants: 57% female; 75% White, non-Latinx; 11% Asian or Pacific Islander; 11% African American; 3% biracial | IDst | 4-8 years | IMUu chest strap and headband (3-Space Sensor; YEI Technology) | Acceleration and angular velocity |
| McGinnis et al [ | 2019 | 63 participants: 57% female; 65% White; 82.5% in 2-parent households; 32% income >US $100,000 | IDs | 3-8 years | IMU chest strap (3-Space Sensor; YEI Technology) | Acceleration and angular velocity |
| Min et al [ | 2011 | 4 participants: sex and race not specified | ASD | Not specified | Accelerometers worn on wrists, ankles, and upper body | Motion data (flapping, rocking, punching, and hitting) |
| Munoz-Organero et al [ | 2019 | 36 participants: 15 males and 3 females with nonmatching controls; race not specified | ADHD | 6-16 years | Accelerometers worn on wrists and ankles (Runscribe inertial sensors) | Acceleration and movement patterns |
| Ouyang et al [ | 2020 | 10 participants: sex and race not specified | ADHD | 5-11 years | Accelerometer embedded in a smart watch | Linear motion |
| Pfeiffer et al [ | 2019 | 6 participants: sex not specified; 4 White; 2 Latin American or Hispanic | ASD | 8-16 years | Wrist-worn biosensor (Empatica E4) | Skin conductance levels and NS-SCRsv (EDA data) |
| Redd et al [ | 2020 | 5 participants: sex and race not specified | IDs | 8-12 years | Wrist-worn biosensor (Empatica E4) | HR, HRV, electrical property fluctuations in the skin (EDA data), motion (accelerometer), and peripheral skin temperature (infrared thermophile) |
| Wilson et al [ | 2021 | 5 participants: sex and race not specified | ASD | 3-12 months | Ankle-worn biosensors (APDM Opal; APDM Wearable Technologies) | Motion complexity (accelerometer, gyroscope, and magnetometer) |
aASD: autism spectrum disorder.
bECG: electrocardiogram.
cHR: heart rate.
dSDNN: SD of the averaged normal sinus RR intervals for 5-minute segments.
eCV: time interval between 2 consecutive R waves.
fLF: low frequency.
gHF: high frequency.
hEEG: electroencephalography.
iQEEG: quantitative electroencephalography.
jHRV: heart rate variability.
kRMSSD: root-mean square of the successive normal sinus RR interval difference.
lRSA: respiratory sinus arrhythmia (indicator of autonomic function).
mBP: blood pressure.
nADHD: attention-deficit/hyperactivity disorder.
oAMI: acute myocardial infarction (motionlogger ActiGraph belt).
pLD: learning disability.
qEDA: electrodermal activity.
rGSR: galvanic skin response.
sRR interval, the time elapsed between 2 successive R waves of the QRS signal on the electrocardiogram.
tID: internalizing disorder.
uIMU: inertial measurement unit.
vNS-SCR: nonspecific skin conductance response.