| Literature DB >> 29871687 |
Benjamin W Chrisinger1, Abby C King2,3.
Abstract
BACKGROUND: Identifying elements of one's environment-observable and unobservable-that contribute to chronic stress including the perception of comfort and discomfort associated with different settings, presents many methodological and analytical challenges. However, it also presents an opportunity to engage the public in collecting and analyzing their own geospatial and biometric data to increase community member understanding of their local environments and activate potential environmental improvements. In this first-generation project, we developed a methodology to integrate geospatial technology with biometric sensing within a previously developed, evidence-based "citizen science" protocol, called "Our Voice." Participants used a smartphone/tablet-based application, called the Discovery Tool (DT), to collect photos and audio narratives about elements of the built environment that contributed to or detracted from their well-being. A wrist-worn sensor (Empatica E4) was used to collect time-stamped data, including 3-axis accelerometry, skin temperature, blood volume pressure, heart rate, heartbeat inter-beat interval, and electrodermal activity (EDA). Open-source R packages were employed to automatically organize, clean, geocode, and visualize the biometric data.Entities:
Keywords: Allostatic load; Built environment; Chronic stress; Citizen science; Electrodermal activity; Leaflet; Quantified self; Sensors
Mesh:
Year: 2018 PMID: 29871687 PMCID: PMC5989430 DOI: 10.1186/s12942-018-0140-1
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Fig. 1Example of an interactive webpage built for participants to view and interpret their data. The red and blue markers show where this specific participant took photographs with the DT app. The participant’s path is color-coded by their EDA level, from dark purple to yellow (low to high). The complete html file and underlying R code has been uploaded as Additional files 1 and 2
Fig. 2Heat map of positive and negatively-rated photographs taken with the DT app. Colors indicate if clusters of photographs were rated as positive (blue shading) and negative (red shading) by participants using the DT app. Darker shading indicates a higher density, and yellow cells indicate clustering of positive/negative photos per the Getis-Ord Gi* local statistic (top quintile)
Fig. 3Visualization of nouns and adjectives with an overall frequency greater than five in all audio narratives
Summary of walk observations by environmental characteristics
| n obs. | % Total obs. | |
|---|---|---|
|
| ||
| Inside positive | 1122 | 21 |
| Inside negative | 1107 | 20 |
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| Intersection | 416 | 8 |
| One-way | 3608 | 67 |
| Two-way | 1804 | 33 |
| Local | 2182 | 40 |
| Secondary | 155 | 3 |
| Major | 2619 | 48 |
| Highway | 456 | 8 |
|
| ||
| Open space | 315 | 6 |
| Culture/education | 357 | 7 |
| Mixed use | 312 | 6 |
| Mixed use/residential | 1241 | 23 |
| Office | 1716 | 32 |
| Industrial | 329 | 6 |
| Residential | 514 | 9 |
| Retail/entertainment | 248 | 5 |
| Vacant | 286 | 5 |
|
| ||
| Post-1976 | 1604 | 30 |
| 1951–1975 | 196 | 4 |
| 1926–1950 | 1261 | 23 |
| Pre-1925 | 1737 | 32 |
Fig. 4Average and median EDA level observed by different walk environments (SD shown in brackets)
Linear mixed model of participant EDA observations with group and participant-level random intercepts
| Electrodermal activity (EDA) | |||
|---|---|---|---|
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|
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| Time on walk | 0.20 | 0.17 to 0.24 |
|
| Positive photo cluster | 0.14 | 0.06 to 0.23 |
|
| Negative photo cluster | − 0.17 | − 0.25 to − 0.09 |
|
| Intersection | 0.05 | − 0.04 to 0.15 | .284 |
| 2-way street | 0.15 | 0.07 to 0.23 |
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|
| |||
| Secondary | − 0.49 | − 0.72 to − 0.27 |
|
| Major | − 0.17 | − 0.24 to − 0.11 |
|
| Highway | − 0.47 | − 0.61 to − 0.34 |
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| |||
| Cultural | − 0.11 | − 0.31 to 0.08 | .244 |
| Mixed | 0.10 | − 0.11 to 0.30 | .365 |
| Mixed/residential | 0.29 | 0.12 to 0.47 |
|
| Office | − 0.24 | − 0.40 to − 0.08 |
|
| Industrial | 0.09 | − 0.09 to 0.28 | .329 |
| Residential | 0.18 | 0.01 to 0.35 |
|
| Retail/entertainment | 0.01 | − 0.18 to 0.20 | .924 |
| Vacant | − 0.38 | − 0.55 to − 0.21 |
|
| Missing | − 0.08 | − 0.32 to 0.16 | .498 |
| 1951–1975 | 0.15 | − 0.03 to 0.33 | .107 |
| 1926–1950 | 0.10 | 0.01 to 0.18 |
|
| Pre-1925 | 0.09 | 0.02 to 0.17 |
|
| Unknown | 0.32 | 0.16 to 0.48 |
|
| (Intercept) | 0.01 | − 0.19 to 0.20 | .932 |
| Random parts | |||
| σ2 | 0.854 | ||
| Npartid:(partgroup:time) | 14 | ||
| Npartgroup:time | 5 | ||
| Ntime | 2 | ||
| Observations | 5412 | ||
| R2/Ω02 | .119/.119 | ||
Italic values are significant at p < 0.05
Linear models of participant EDA observations showing within-subject correlations with positive/negative DT clusters
| Participant A3 | Participant B3 | Participant E3 | |||||||
|---|---|---|---|---|---|---|---|---|---|
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| (Intercept) | 0.03 | − 0.11 to 0.16 | .680 | − 0.23 | − 0.35 to − 0.11 |
| 0.30 | 0.18 to 0.42 |
|
| Positive cluster | 0.35 | 0.10 to 0.60 |
| 1.15 | 0.93 to 1.38 |
| − 0.50 | − 0.74 to − 0.26 |
|
| Negative cluster | − 0.47 | − 0.71 to − 0.22 |
| − 0.17 | − 0.40 to 0.06 | .147 | − 1.00 | − 1.22 to − 0.77 |
|
| Observations | 362 | 347 | 397 | ||||||
| R2/adj. R2 | .076/.071 | .263/.259 | .164/.159 | ||||||
Italic values are significant at p < 0.05
Fig. 5Participant data maps. While these two participants also documented the same feature, they gave it different ratings and descriptions in terms of it being a positive or negative aspect of the built environment