| Literature DB >> 31512581 |
Anubhuti Poudyal1, Brandon A Kohrt1, Alastair van Heerden2,3, Ashley Hagaman4,5, Sujen Man Maharjan6, Prabin Byanjankar6, Prasansa Subba7.
Abstract
BACKGROUND: There is a high prevalence of untreated postpartum depression among adolescent mothers with the greatest gap in services in low- and middle-income countries. Recent studies have demonstrated the potential of nonspecialists to provide mental health services for postpartum depression in these low-resource settings. However, there is inconsistency in short-term and long-term benefits from the interventions. Passive sensing data generated from wearable digital devices can be used to more accurately distinguish which mothers will benefit from psychological services. In addition, wearable digital sensors can be used to passively collect data to personalize care for mothers. Therefore, wearable passive sensing technology has the potential to improve outcomes from psychological treatments for postpartum depression.Entities:
Keywords: developing countries; feasibility studies; mobile health; mother-child interaction; postpartum depression; psychotherapy
Year: 2019 PMID: 31512581 PMCID: PMC6746061 DOI: 10.2196/14734
Source DB: PubMed Journal: JMIR Res Protoc ISSN: 1929-0748

Model illustrating the role of passively collected behavioral data to enhance behavioral change among treatment beneficiaries in psychological interventions based on behavioral activation and cognitive behavioral techniques.
Conceptual domains related to depression that can be monitored through passive sensing data collection.
| Domain | Description | Association with depression | Passive sensing data | Use of passive sensing in the psychological intervention |
| Physical activity | Time spent inactive, standing, walking, or riding vehicles | Lack of physical activity associated with depression | Accelerometer data from mobile phone provided to mother | Determine targets for physical activity and monitor changes in type and duration of physical activity |
| Geographic movement | Range and location of daily movement in community | Lack of daily movement outside the home and lack of routine in movement associated with depression | GPSa data from mobile phone provided to mother | Identify locations for mood-enhancing activities and monitor movement to those settings |
| Mother-child interaction | Total time of mother and child together and daily consistency of mother-child routine | Lack of mother’s time separate from child (ie, no break from child care responsibilities) and inconsistency of daily routine (ie, erratic schedule) associated with depression | Mother-child proximity measured between mobile phone with mother and passive Bluetooth beacon attached to child’s clothing | Identification of times for mood-enhancing activities with and without child and monitoring to increase consistency of daily routine |
| Interpersonal relations | Exposure to adult verbal communication and verbal communication of child | Lack of exposure to adult verbal communication and lack of verbal engagement with child associated with depression | Episodic audio recordings collected on mobile phone given to mother | Determining targets for social interaction and monitoring adult communication and verbal stimulation of child |
aGPS: Global Positioning System.

RadBeacon Dot (Radius Networks Inc.).

The StandStrong app. From left to right: Homepage, People, Awards, and Direct messaging.
Award categories.
| Award category and level | Description | ||
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| Level 1 | Spend 1 hour without child on a single day (proximity) | |
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| Level 2 | Spend 1 hour without child for 2 consecutive days (proximity) | |
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| Level 3 | Spend 1 hour without child for 4 consecutive days (proximity) | |
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| Level 1 | Hear talking at least 2 times (per 15-min recording) in a single day (audio) | |
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| Level 2 | Hear talking at least 4 times (per 15-min recording) in a single day (audio) | |
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| Level 3 | Hear talking at least 6 times (per 15-min recording) in a single day (audio) | |
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| Level 1 | Similar (1-hour variance) pattern of proximity 2 days in a row (proximity)a | |
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| Level 2 | Similar (1-hour variance) pattern of proximity 3 days in a row (proximity) | |
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| Level 3 | Similar (1-hour variance) pattern of proximity 4 days in a row (proximity) | |
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| Level 1 | Activity other than tilt, sit or still 1 time in a day (accelerometer) | |
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| Level 2 | Activity other than tilt, sit or still 2 times in a day (accelerometer) | |
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| Level 3 | Activity other than tilt, sit or still 3 time in a day (accelerometer) | |
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| Level 1 | L1 for all of the above | |
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| Level 2 | L2 for all of the above | |
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| Level 3 | L3 for all of the above | |
aDaily routine was established by looking at the hourly pattern of time spent together with the child and alone. If the pattern was similar across 2 or more days, the award was triggered. Similar was defined as the same state (together or alone) appearing 1 hour before, at the same time, or 1 hour later.

The StandStrong architecture. DAO: Data Access Object; EBM: Electronic Behavior Monitoring; GPS: Global Positioning System; API: Application Programming Interface.

Conceptual map of the study.
An overview of the data collection methods and outcome measures.
| Domain | Data type | Methods | Passive data | Measures | Components | ||
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| I | II | III |
| Passive sensing data | Quantitative | GPSa (mobile phone) | Movement | Amount of time at the house | —b | xc | x |
| Passive sensing data | Quantitative | GPS (mobile phone) | Movement | Time spent outside the house | — | x | x |
| Passive sensing data | Quantitative | Accelerometer (mobile phone) | Activity | Activity—time spent standing, walking, running. | — | x | x |
| Passive sensing data | Quantitative | Proximity beacon (proximity beacon) | Proximity | Time spent with the child | — | x | x |
| Passive sensing data | Quantitative | Proximity beacon (proximity beacon) | Proximity | Time spent away from child (self-care) | — | x | x |
| Passive sensing data | Quantitative | Proximity beacon (proximity beacon) | Proximity | The consistency of interaction between mother and child | — | x | x |
| Passive sensing data | Quantitative | Episodic audio recorder (mobile phone) | Audio with conversations | Social interaction (conversation) | — | x | x |
| Environment | Quantitative | Home Observation Measurement of the Environment inventory | N/Ad | A 45-item tool to assess the home environment in terms of responsivity, acceptance, organization, learning materials, involvement, and variety | — | x | x |
| Environment | Quantitative | Observation of Mother-Child Interaction | N/A | An 18-item tool to assess the quality of interaction between mother and child. | — | x | x |
| Environment | Qualitative | Day in Life | N/A | An hour-by-hour description of participant’s activities over an average day (4 am to 10 pm) to record scheduled activities. | — | x | x |
| Feasibility, acceptability, and utility | Qualitative | Focus group discussion with community advisory board members | N/A | — | x | x | x |
| Feasibility, acceptability, and utility | Qualitative | Key informant interview with adolescent mothers on motherhood | N/A | — | — | x | x |
| Feasibility, acceptability, and utility | Qualitative | Key informant interview with providers | N/A | — | — | — | x |
| Feasibility, acceptability, and utility | Qualitative | Key informant interview with adolescent mothers on technology | N/A | — | — | x | x |
aGPS: Global Positioning System.
bPassive data will not be collected.
cPassive data will be collected.
dN/A: not applicable.

Analytic pipeline for sensor data.