| Literature DB >> 35468089 |
Oliver Lindhiem1, Mayank Goel2, Sam Shaaban3, Kristie J Mak4, Prerna Chikersal2, Jamie Feldman4, Jordan L Harris4.
Abstract
BACKGROUND: Although hyperactivity is a core symptom of attention-deficit/hyperactivity disorder (ADHD), there are no objective measures that are widely used in clinical settings.Entities:
Keywords: ADHD; assessment; attention-deficit/hyperactivity disorder; hyperactivity; machine learning; wearables
Year: 2022 PMID: 35468089 PMCID: PMC9086887 DOI: 10.2196/35803
Source DB: PubMed Journal: JMIR Form Res ISSN: 2561-326X
Figure 1LemurDx classification pipeline.
Participant demographics.
| Characteristics | All participants (N=30) | ||
|
| ADHDa (n=15), n (%) | Non-ADHD (n=15), n (%) | |
| Age (year), mean (SD) | 9.6 (1.6) | 10.1 (1.8) | |
|
| |||
|
| Female | 6 (40) | 9 (60) |
|
| Male | 8 (53) | 6 (40) |
|
| Other | 1 (6.7) | 0 (0) |
|
| |||
|
| White | 11 (73.3) | 14 (93.3) |
|
| Black or African American | 1 (6.7) | 1 (6.7) |
|
| More than one race | 1 (6.7) | 0 (0) |
|
| Chose not to answer | 2 (13.3) | 0 (0) |
| VAS-Pb hyperactivity scores, mean (SD) | 11.5 (2.2) | 1.9 (1.7) | |
aADHD: attention-deficit/hyperactivity disorder.
bVAS-P: Vanderbilt Assessment Scale-Parent report.
Smartwatch app usability survey qualitative feedback.
| Theme | Example quotes | Frequency, n (%) |
| Challenges with the interface |
“It would be helpful if it showed something on the face of the watch to let you know that the app was running in the background.” “There was really very little we saw of the study app. Just that we turned it on, saw how long it was running for and turned it off. It's hard to say how satisfied we were with its functions.” | 5 (17) |
| Low battery life |
“We struggled with the battery running out before we were finished recording a full day’s data, despite the battery being at 100% at 7.30 AM.” “Phone ran out of battery on first day- hope that did not affect things- we can redo it if needed.” | 4 (13) |
| Enjoyed the app |
“It was fun to participate.” “Study is well organized and was easy to follow instructions.” | 3 (10) |
Top 20 features extracted from motion sensors.
| Number | Motion feature | Axis | Time interval |
| 1 | Cumulative variance | X-axis | 10 minutes |
| 2 | Cumulative mean | X-axis | 1 minute |
| 3 | Cumulative mean | X-axis | 5 minutes |
| 4 | Cumulative mean | Y-axis | 10 minutes |
| 5 | Cumulative variance | Z-axis | 1 minute |
| 6 | Cumulative mean | All 3 axes | 10 minutes |
| 7 | Cumulative variance | All 3 axes | 5 minutes |
| 8 | Mean motion | X-axis | 10 minutes |
| 9 | Variance | X-axis | 10 minutes |
| 10 | Variance | X-axis | 1 minute |
| 11 | Mean | Y-axis | 10 minutes |
| 12 | Variance | Y-axis | 10 minutes |
| 13 | Mean | Y-axis | 1 minute |
| 14 | Variance | Y-axis | 1 minute |
| 15 | Mean | Y-axis | 5 minutes |
| 16 | Variance | Y-axis | 5 minutes |
| 17 | Variance | Z-axis | 10 minutes |
| 18 | Mean | Z-axis | 1 minute |
| 19 | Variance | Z-axis | 1 minute |
| 20 | Mean | Z-axis | 5 minutes |
LemurDx accuracy, sensitivity, specificity, positive productive value (PPV), and negative productive value (NPV).
| Model | Accuracy | Sensitivity | Specificity | PPV | NPV |
| Motion sensors plus activity labels | 0.89 | 0.93 | 0.86 | 0.87 | 0.92 |
| Motion sensors plus contextual sensorsa | 0.71 | 0.79 | 0.64 | 0.69 | 0.75 |
| Motion sensors alone | 0.46 | 0.50 | 0.43 | 0.47 | 0.46 |
aContextual sensors included GPS, heart rate, and Bluetooth.
Figure 2Motion spectrograms (x-axis: time; y-axis: motion) for 5-minute periods. A: The top panels are for a child with attention-deficit/hyperactivity disorder (ADHD). B: The bottom panels are for a child from the control group. In the first panel (playing), the child with ADHD moved 24.7 % more than the child in the control group. In the second panel (reading), the child with ADHD moved 41.2 % more than the child in the control group. ADHD: attention-deficit/hyperactivity disorder.