| Literature DB >> 31432781 |
Brandon M Booth1, Karel Mundnich1, Tiantian Feng1, Amrutha Nadarajan1, Tiago H Falk2, Jennifer L Villatte3, Emilio Ferrara4, Shrikanth Narayanan1.
Abstract
BACKGROUND: Recent advances in mobile technologies for sensing human biosignals are empowering researchers to collect real-world data outside of the laboratory, in natural settings where participants can perform their daily activities with minimal disruption. These new sensing opportunities usher a host of challenges and constraints for both researchers and participants.Entities:
Keywords: behavioral research; human activities; in situ research; longitudinal studies; organizational case studies; research design; wearable electronic devices
Mesh:
Year: 2019 PMID: 31432781 PMCID: PMC6719486 DOI: 10.2196/12832
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1An overview of the general scientific process for human research studies involving sensing.
Figure 2A framework for studies of human behavior in the wild, showing common potential information pathways for data produced by sensors (eg, physiologic and activity), destined to be stored on a single research server. This type of data flow paradigm enables centralized data monitoring and facilitates immediate automatic participant feedback regarding data quality and compliance via the participant’s smartphones. RFID: radio-frequency identification; NFC: near-field communication; USB: universal serial bus; API: application programming interface.
Considerations and criteria for sensor selection.
| Research objectives and logistics | Sensor characteristics | Participant engagement | Human subject protection |
| Signals of interest | Sensor customizability | Cohort and individual suitability | Access and usability |
| Data properties and quality | Cost | Burden to participants | Privacy |
| Data access logistics | Battery life | —a | Data security |
| Sensor synergy | Operating system support | — | — |
| Additional experiment setup costs | Robustness | — | — |
| Sensor acceptance among target population | Provider support | — | — |
| On-site infrastructure requirements | — | — | — |
aEmpty cells are filled with a dash for visual clarity.
Figure 3A snapshot of current consumer and research sensing technologies for human behavior studies in natural environments. This is not an exhaustive diagram of sensors on the market, but it provides an overview of the kinds of data can be captured using readily available technology. PPG: photoplethysmography; ECG : electrocardiography; EDA: electrodermal activity.
Signals of interest in the case study that were measurable using consumer sensors.
| Signal | Reason for interest |
| Cardiac | Connection to exercise, fitness level, and stress levels [ |
| Physical activity | Linked with stress [ |
| Sleep | Health (physical and emotional) [ |
| Speech | Contains information about emotional expressions [ |
| Breath | Calmness, stress, anxiety, and speech activity detection [ |
| Environment and distractions | Connection with workplace performance, anxiety, and stress [ |
| Locality | Captures workplace behavior and job role dynamics [ |
Figure 4Setup of the TILES audio recorder [27].
Selected sensors and their expected use.
| Sensor | Measurements | Intended usage period |
| Fitbit Charge 2 | Photoplethysmography-based heart rate, step count, and sleep | 24 hours per day |
| OMsignal garments | Electrocardiography-based heartbeat, breath, motion | At work (12-hour shifts) |
| Unihertz Jelly Pro | Audio features, Bluetooth-based localization | At work (12-hour shifts) |
| reelyActive’s Owl-in-One | Bluetooth-based localization, data hub for environmental sensors | Installed at the University of Southern California’s Keck Hospital, 24 hours per day |
| Minew E6, E8, S1 | Light, motion, temperature, and humidity | Installed at the University of Southern California’s Keck Hospital, 24 hours per day |
Compliance rates for participant-tracking sensors (n=212) and environment sensors (n=244) in the case study.
| Sensor type and signals | Sensors | Participant who opted, n (%) | Total hours | Compliance ratea, n (%) | Definition of compliance | |
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| Cardio, sleep, and steps | Fitbit | 208 (98.1) | 236,725 | 152 (73.1) | Average fraction of days per participant with >12 hours of data |
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| Cardio, breath, and motion | OMsignal | 208 (98.1) | 44,240 | 125 (60.1) | Average fraction of work days per participant with >6 hours of data |
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| Audio | Jelly | 184 (86.8) | 37,065 | 131 (61.8) | Average fraction of work days per participant with >6 hours of data |
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| Locality | Jelly+Owl-in-one | 184 (86.8) | 37,065 | 131 (61.8) | Average fraction of work days per participant with >6 hours of data |
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| Temperature, humidity, and motion | Minews | — | — | 239 (98.0) | Uptime of the sensor network |
aCompliance is computed as the presence of data exceeding half of the measurement period per day among the participants who opted in for each sensor.
Figure 5Histograms of the total number of hours of recorded sensor data per day, across all participants. These plots only show data from days where data was logged.