| Literature DB >> 28895027 |
Chris Neale1, Peter Aspinall2, Jenny Roe3, Sara Tilley4, Panagiotis Mavros5, Steve Cinderby6, Richard Coyne7, Neil Thin8, Gary Bennett9, Catharine Ward Thompson4.
Abstract
This research directly assesses older people's neural activation in response to a changing urban environment while walking, as measured by electroencephalography (EEG). The study builds on previous research that shows changes in cortical activity while moving through different urban settings. The current study extends this methodology to explore previously unstudied outcomes in older people aged 65 years or more (n = 95). Participants were recruited to walk one of six scenarios pairing urban busy (a commercial street with traffic), urban quiet (a residential street) and urban green (a public park) spaces in a counterbalanced design, wearing a mobile Emotiv EEG headset to record real-time neural responses to place. Each walk lasted around 15 min and was undertaken at the pace of the participant. We report on the outputs for these responses derived from the Emotiv Affectiv Suite software, which creates emotional parameters ('excitement', 'frustration', 'engagement' and 'meditation') with a real-time value assigned to them. The six walking scenarios were compared using a form of high dimensional correlated component regression (CCR) on difference data, capturing the change between one setting and another. The results showed that levels of 'engagement' were higher in the urban green space compared to those of the urban busy and urban quiet spaces, whereas levels of 'excitement' were higher in the urban busy environment compared with those of the urban green space and quiet urban space. In both cases, this effect is shown regardless of the order of exposure to these different environments. These results suggest that there are neural signatures associated with the experience of different urban spaces which may reflect the older age of the sample as well as the condition of the spaces themselves. The urban green space appears to have a restorative effect on this group of older adults.Entities:
Keywords: EEG; Emotiv; Green space; Mobility; Older adults; Urban
Mesh:
Year: 2017 PMID: 28895027 PMCID: PMC5722728 DOI: 10.1007/s11524-017-0191-9
Source DB: PubMed Journal: J Urban Health ISSN: 1099-3460 Impact factor: 3.671
Fig. 1Map of the walking routes undertaken by participants (walking in one of six possible scenarios)
Fig. 2Street views of the three walking environments. a Urban green. b Urban busy. c Urban quiet (Photo credit: OPENspace Research Centre)
Descriptions of the Affectiv Suite outputs
| Affectiv Suite parameter | Working description |
|---|---|
| Engagement | Likened to immersion, interest or directed attention |
| Excitement | Correlated with classic arousal indicators such as increased heart rate and blood flow |
| Frustration | Associated with stress and disappointment/negative valence |
| Meditation | No emotional context, purely correlated with low arousal and a rested state |
Logistic CCR outputs for the UB and UG routes
| Model fit | Training | Cross-validation | Standard error |
|---|---|---|---|
|
| .096 | .014 | .015 |
| Area under curve (AUC) | .663 | .531 | .052 |
| Accuracy | .630 | .540 | .050 |
| Predictors | Standardised coefficient | Out of sample frequency ( | Pratt coefficient of relativeimportance to the model |
| Engagement | 1.2793 | 95 | 14% |
| Excitement | −.9859 | 80 | 86% |
AUC area under the curve
Fig. 3‘Excitement’ and ‘engagement’ difference scores for each walking condition showing that ‘excitement’ is greater in the UB setting than the UG setting. ‘Engagement’ follows a reverse pattern
Logistic CCR outputs for the UB and UQ routes
| Model fit | Training | Cross-validation | Standard error |
|---|---|---|---|
|
| .220 | .050 | .046 |
| AUC | .786 | .473 | .081 |
| Accuracy | .647 | .569 | .065 |
| Predictors | Standardised coefficient | Out of sample frequency ( | |
| Excitement | −1.975 | 91 |
AUC area under the curve
Fig. 4‘Excitement’ difference scores for each walking condition showing that ‘excitement’ is greater in the UB setting than the UQ setting
Logistic CCR outputs for the UG and UQ routes
| Model fit | Training | Cross-validation | Standard error |
|---|---|---|---|
|
| .296 | .053 | .061 |
| AUC | .773 | .668 | .093 |
| Accuracy | .789 | .689 | .095 |
| Predictors | Standardised coefficient | Out of sample frequency ( | Pratt coefficient of relative importance to the model |
| Engagement | 3.737 | 97 | 66% |
| Frustration | 2.932 | 95 | 34% |
AUC area under the curve
Fig. 5‘Engagement’ and ‘frustration’ difference scores for each walking condition showing both parameters are greater in the UG setting than the UQ setting