Impact of Traffic Stress, Built Environment, and Socioecological Factors on Active Transport Among Young Adults
Abstract
1. Introduction
- 1.
- To synthesise existing evidence on how TS, BE features, and SEM factors interact to influence AT behaviours among YA.
- 2.
- To introduce DTS, a time-sensitive extension of LTS that captures daily traffic fluctuations.
- 3.
- To propose SSR, a step-based index linking stress exposures to changes in daily walking.
- 4.
- To integrate TS, LTS, the 5Ds of BE, and SEM within a unified framework, advancing a comprehensive conceptual understanding of AT behaviour in YA.
2. Barriers and Enablers of AT Participation
2.1. Barriers
2.2. Enablers
3. Methodology
3.1. Systematic Review Framework and Process
3.2. Search Strategy, Databases, and Eligibility Criteria
3.3. Study Selection, Data Extraction, and Quality Assessment
3.4. Meta-Analysis and Thematic Analysis
3.5. Time-Sensitive Extension of the LTS Framework
3.6. Stress-to-Step Ratio
3.6.1. Benchmark Justification for Stress-to-Step Ratio
3.6.2. SSR Formulation and Validation
4. Results and Analysis
4.1. Google Trends and Bibliometric Analyses
4.2. Thematic Analysis
- BE determinants comprising physical infrastructure, land-use mix, walkability, spatial connectivity, and urban form.
- TS and SEM determinants comprising perceived safety, emotional stressors, and behavioural avoidance in high-traffic settings.
- Policy and planning gaps comprising inconsistencies in AT infrastructure prioritisation, investment, and governance.
- YA behaviour and lifestyle contexts comprising age-specific perceptions, life-stage transitions, routines, and socio-cultural influences on AT choices.
- Mixed and overlapping themes comprising integrated or cross-domain studies that span multiple categories or reflect intersectional dynamics.
4.2.1. Built Environment Determinants
4.2.2. TS and SEM Determinants
4.2.3. Policy and Planning Gaps
4.2.4. Young Adult Behaviours and Lifestyle
4.2.5. Mixed and Overlapping Themes
| S. No. | Themes | Study Context | Study Focus | Impact on AT | Ref. |
|---|---|---|---|---|---|
| 1 | Cycling mentorship programs | Canada; 197 residents (mostly newcomers) | Evaluated the impact of 12–16-week mentorship programs providing training, bikes, and equipment | Enabler—participants increased cycling for transport (to work/school/shopping) and reported higher confidence | [180] |
| 2 | Integrated behavioural strategies | Canada (synthesis of literature and a case study) | Combined psychological behaviour-change tools with the community-based cycling program evidence | Enabler—integrated psychological and program strategies accelerated cycling adoption | [179] |
| 3 | Street retrofit (Future Streets) | Māngere, New Zealand; controlled before–and–after study | Assessed effects of redesigned street hierarchy and AT infrastructure on speed/volume | Enabler—reduced speeds/volumes on local streets, creating safer conditions for walking/cycling | [181] |
| 4 | Socio-cultural influences on cycling | Auckland, New Zealand; survey and structural equation modelling | Investigated socio-cultural and demographic influences on bicycle use | Enabler—family, peers, and cultural factors strongly shaped cycling uptake | [183] |
| 5 | Youth perspectives on AT | Qualitative meta-synthesis of studies (ages 5–19) | Synthesised youth-reported barriers and facilitators of AT | Mixed—barriers included parental control, traffic, and weather; enablers included agency, supportive norms | [187] |
| 6 | Transportation disadvantage | Shenzhen, China; composite indicator analysis | Developed indicators to measure transport disadvantage by neighbourhood sociodemographic | Barrier—disadvantaged neighbourhoods had reduced accessibility and higher inequality in transport opportunities | [185] |
4.3. Traffic Stress Patterns Based on Queensland 2023 Data
4.3.1. Weekday Traffic Patterns
4.3.2. Weekly Distribution of Traffic
4.3.3. Weekend Patterns
4.3.4. Traffic Trends (2013–2023)
4.3.5. Daily Traffic Stress Framework
4.4. Developing the Stress-to-Step Ratio
5. Discussion
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| AT | Active Transport |
| BE | Built Environment |
| DTS | Daily Traffic Stress |
| LTS | Level of Traffic Stress |
| PA | Physical Activity |
| SDGs | Sustainable Development Goals |
| SEM | Socioecological Model |
| SSR | Stress-to-Step Ratio |
| TS | Traffic Stress |
| TSM | Traffic Stress Minutes |
| WHO | World Health Organization |
| YA | Young Adults |
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| No | Common Barriers | Explanation | Classification (LTS, 5Ds, SEM) | Selected References |
|---|---|---|---|---|
| 1 | Inadequate walking and cycling infrastructure | Lack of connected footpaths, protected lanes, or crossings discourages AT. | LTS, 5Ds | [33,37] |
| 2 | Perceived TS and safety concerns | Fear of fast motor vehicles, lack of separate lanes from traffic, or prior negative experiences. | LTS, SEM | [60,66] |
| 3 | Long distances between the origin and the destination | Extended travel distances reduce the feasibility of walking/cycling for daily commutes. | 5Ds, SEM | [67,68] |
| 4 | Adverse weather conditions | Unfavourable climate (e.g., heat, rain) makes AT uncomfortable. | SEM | [69] |
| 5 | Negative social or cultural norms | Social attitudes may discourage AT, especially for women or marginalised groups. | SEM | [70,71] |
| 6 | Physiological stress during traffic exposure | Exposure to noise, pollution, and stress responses reduces willingness to walk/cycle (AT). | LTS | [29] |
| 7 | Air pollution during commuting | Pollution exposure deters walking and cycling for health reasons. | SEM, BE | [72] |
| 8 | Policy inaction | Weak prioritisation of AT in planning and investment constrains uptake. | SEM | [73,74] |
| 9 | Lack of social support | Limited encouragement from peers reduces motivation for PA(AT). | SEM | [47] |
| 10 | Weak enforcement of safety policies | Inadequate regulation or policy enforcement increases cycling risks. | SEM, LTS | [75] |
| No | Common Enablers | Explanation | Classification (LTS, 5Ds, SEM) | Selected References |
|---|---|---|---|---|
| 1 | Well-designed and connected infrastructure | Continuous sidewalks, bike paths, and crossings improve AT usability. | LTS, 5Ds | [37,67] |
| 2 | Traffic calming and protected bike lanes | Lower traffic speed and physically separated lanes improve safety. | LTS | [33,66] |
| 3 | Supportive policies and urban planning | Integrated planning supports walkability and health goals. | 5Ds, SEM | [60,68] |
| 4 | Community engagement and awareness | Awareness campaigns and peer support improve AT acceptance. | SEM | [37,60] |
| 5 | Green space access and mixed land use | Walkable access to destinations supports daily AT. | 5Ds | [77,78] |
| 6 | Peer and social influence | Peer effects and workplace norms encourage active commuting | SEM | [47] |
| 7 | Residential preference for walkable neighbourhoods | Individuals who choose walkable areas engage more in AT. | 5Ds | [79] |
| 8 | All-ages-and-abilities infrastructure | Inclusive cycling design supports uptake across age groups | 5Ds, LTS | [80] |
| 9 | Positive cycling experiences | Enjoyment, relaxation, and subjective satisfaction encourage continued AT. | SEM | [81] |
| 10 | Perceived safety for young users | Parents and children are more likely to choose AT when safety is assured. | LTS | [62] |
| Database | Search String Used | Years Covered | Filters Applied | Count |
|---|---|---|---|---|
| Scopus | ((“traffic stress” OR “active transport” OR “active travel” OR (“physical activity” AND (transport OR commuting OR mobility)) OR “built environment” OR “socioecological model”) AND (“young adults”)) | 2015–2025 | English, peer-reviewed journal articles only | 1623 |
| PubMed | ((“traffic stress” [Title/Abstract] OR “active transport” [Title/Abstract] OR “active travel” [Title/Abstract] OR (“physical activity” [Title/Abstract] AND (transport [Title/Abstract] OR commuting [Title/Abstract] OR mobility [Title/Abstract])) OR “built environment” [Title/Abstract] OR “socioecological model” [Title/Abstract]) AND (“young adults” [Title/Abstract])) | 2015–2025 | English, peer-reviewed journal articles only | 108 |
| Web of Science | (“traffic stress” OR “active transport” OR “active travel” OR “physical activity” OR “built environment” OR “socioecological model”) AND (“young adults”) AND (transport OR commuting OR mobility) | 2015–2025 | English, peer-reviewed journal articles only | 216 |
| Subtotal | 1947 | |||
| Irrelevant records excluded | Biomedical, clinical, and unrelated stress/transport articles identified through title and abstract screening, removal of duplicates, and methodological quality appraisal | 1774 | ||
| Final records included | Studies conceptually aligned with TS, AT, BE, SEM, PA, and YA | 173 | ||
| Inclusion Criteria | Exclusion Criteria |
|---|---|
| Peer-reviewed journal articles (2015–2025) | Non–peer–reviewed publications and those published before 2015 |
| Studies examining AT, TS, BE, LTS, YA, PA (transport domain), and/or SEM | Studies not addressing AT, TS, BE, LTS, YA, PA (transport domain), or SEM |
| Articles investigating TS in relation to AT participation, or examining BE, SEM, or LTS determinants of AT | Studies unrelated to AT or TS (e.g., animal studies, cellular transport, psychological stress not linked to mobility) |
| Studies addressing urbanisation or socioecological determinants of AT | Studies limited to clinical or laboratory-based interventions without AT relevance |
| Research involving YA (18–25), or broader age groups if conceptually relevant to AT, TS, BE, PA (transport domain), or SEM | Research not involving YA or broader age groups relevant to AT, TS, BE, PA (transport domain), or SEM |
| English-language articles | Non-English articles |
| Published journal articles | Grey literature (e.g., reports, working papers), conference proceedings, and book chapters often lack rigorous peer review and consistent methodological detail |
| S. No. | Factor | Study Context | Study Focus | Impact on AT | Ref. |
|---|---|---|---|---|---|
| 1 | Accessibility and safety barriers | Adults with long-term physical disabilities | Explored how adults with disabilities perceive BE factors (safety, transport, accessibility, community). | Unsafe, inaccessible environments restricted participation. | [125] |
| 2 | Policy and BE interventions | Systematic review of 37 studies | Reviewed natural/quasi-experiments on policy and BE changes affecting PA and AT. | AT infrastructure improvements showed stronger impacts. | [126] |
| 3 | Health-integrated urban planning | Case study | Developed methods linking PA outcomes to mode share and vehicle kilometres travelled. | Incorporating AT into urban planning improved health integration. | [127] |
| 4 | Green infrastructure (eye-level greenery) | China (811 students, 10 universities) | Analysed street-view greenery and PA using regression models. | Visible greenery correlated positively with PA and walking (AT). | [132] |
| 5 | Cycling infrastructure preferences | Systematic review of 54 studies | Reviewed preferences for cycle infrastructure by gender and age. | Women and older adults preferred cycling infrastructure separated from roads. | [136] |
| 6 | Bicycle–train integration | Netherlands (54 train stations) | Modelled bicycle–train integration policy scenarios. | Better routes and parking increased ridership and AT integration. | [138] |
| 7 | Integrated city planning | Global scope | Identified planning interventions promoting walking, cycling, and public transport. | Compact, connected planning supported AT and reduced car use. | [37] |
| S. No. | Factors | Study Context | Study Focus | Impact on AT | Ref. |
|---|---|---|---|---|---|
| 1 | Safety and comfort perceptions | Australian adults aged 18–80 (N = 1737) | Established normative scores of affects (safety, comfort, valence, arousal) using a video-based survey of cycling environments | Physically separated cycling facilities, such as off-street shared-use paths and protected bike lanes, were perceived as the safest and most comfortable, encouraging greater cycling participation | [141] |
| 2 | Perceived safety, security, comfort | Systematic review (68 studies, last 10 years) | Reviewed determinants affecting pedestrians’ and cyclists’ perceptions of safety, security, and comfort | Fear of traffic-related injuries, poor infrastructure, pollution, poor lighting, and crime negatively influenced AT perceptions | [17] |
| 3 | Travel satisfaction | Ghent, Belgium (cross-sectional data) | Analysed the cyclical process between travel satisfaction and future active mode choice | Satisfactory walking and cycling trips improved attitudes, increasing the likelihood of future AT | [142] |
| 4 | Cycling subjective experience | Systematic review of 50 studies | Developed a conceptual framework for emotional, sensory, and cognitive aspects of cycling experiences | Positive emotions (fun, relaxation, sociability) are associated with AT; researchers are urged to optimise for positive experiences | [81] |
| 5 | Stress causes in cycling | Delft, The Netherlands (n = 28), and Atlanta, USA (n = 41) | Explored cyclists’ stated stress causes using quasi-naturalistic rides with surveys and interviews | TS from motor vehicles (83%), poor pavement (64%), and infrastructure deficiencies (58%) were the leading stressors | [143] |
| 6 | Barriers and enablers to cycling | Systematic review of 45 papers/reports | Identified perceived barriers and enablers to adults riding bikes for transport | Leading barriers were riding alongside motor vehicles and poor infrastructure; enablers were high-quality protected infrastructure | [145] |
| 7 | Perceived crash risks | The Netherlands, Belgium (Flanders, Brussels, Wallonia); cyclists over 40 years (Belgium)–55 years (Netherlands) | Compared perceptions of crash types causing hospitalisations among older/middle-aged cyclists | Most perceived bicycle–motor vehicle crashes as the greatest risk; underestimation of single-bicycle crash risk is also a barrier | [146] |
| 8 | Transport poverty and attitudes | Toronto, Canada (Rexdale neighbourhood, qualitative study) | Explored impacts of transport poverty on travel attitudes and behaviours using the Theory of Planned Behaviour, the Theory of Cognitive Dissonance, and the Habit Theory framework | Transport poverty limited behavioural control and reinforced car dependence; reduced consistent AT engagement | [153] |
| S. No. | Factors | Study Context | Study Focus | Impact on AT | Ref. |
|---|---|---|---|---|---|
| 1 | New transport infrastructure | Cambridge, UK; 469 adult commuters within 30 km of the new Busway | Quasi-experimental cohort analysis of the new busway and the traffic-free walking/cycling route | Sustainable transport infrastructure increased cycle commuting and active commuting among the least active adults | [159] |
| 2 | Local government cycling planning | Australia and New Zealand; national surveys of local governments | Surveyed urban/regional local governments on planning challenges for cycling | Strong policy support but weak implementation capacity at the local government level | [73] |
| 3 | Walking infrastructure governance | Kisii (Kenya) and Mzuzu (Malawi) | Examined barriers to implementing walking infrastructure in smaller urban centres | Decision-making challenges, limited provision of pedestrian infrastructure | [160] |
| 4 | Policy insights from social media | Turkey; >600,000 tweets (2016–2021) | Analysed barriers/drivers for cycling using topic modelling, sentiment analysis | Mixed barriers included safety, infrastructure, and economy; enablers included health, enjoyment, and socialisation | [161] |
| 5 | Policy-relevant AT research priorities | Australia; 259 reference group participants, 140 prioritisation respondents | Priority-setting exercise identifying top AT research and policy needs | Highlighted needs for road space reallocation, lower speeds, child-friendly policies, governance, and funding | [74] |
| 6 | Government AT promotion approaches | Victoria, Australia; scoping review of 996 policies in 123 documents | Analysed ‘hard’, ‘soft’, and governance measures in state/local AT policies | Multifaceted approaches identified, but low AT participation indicates gaps in impact | [166] |
| 7 | Effectiveness of new cycling infrastructure | Sydney, Australia; sub-regional city case study | Evaluated the design/implementation of new cycling infrastructure using Sustainable Mobility Theory | Poor design (steep gradients, unsafe widths, circuitous routes) limited usage despite investment | [165] |
| S. No. | Factors | Study Context | Study Focus | Impact on AT | Ref. |
|---|---|---|---|---|---|
| 1 | Transitional life stage and health | Broad review, YA across Europe/global | Examined life course transitions (education, work, family) and health implications | Life transitions create vulnerabilities that can disrupt healthy routines, including AT | [53] |
| 2 | Life events and travel behaviour | US university faculty, staff, and students | Analysed how life events and life stages affect changes in travel modality types | Relocation and family responsibilities increased car use, reducing AT | [169] |
| 3 | Habit discontinuity (moving house) | University students n = 250 (153 movers) | Tested whether moving house disrupted travel habits and altered mode choice | Relocation created “windows of opportunity” to form new AT habits | [172] |
| 4 | Peer effects in mode choice | University of Grenoble Alps, France; 334 employees | Investigated the influence of peer behaviour and social networks on AT | Strong peer effects encouraged AT | [173] |
| 5 | PA and mental health | 427 university students, Turkey | Examined links between PA and mental health outcomes | Walking and moderate PA improved resilience and well-being | [175] |
| 6 | Environmental and psychosocial barriers | 1349 Chilean university students | Identified barriers to AT and failure to meet PA recommendations | Time, effort, traffic, and planning demands discouraged AT | [177] |
| 7 | Student commuting patterns | 686 students, University of Minho, Portugal | Analysed commuting modes and potential CO2 savings under modal shift scenarios | Proximity to campus created potential for AT; a large share of trips could shift from car to AT | [171] |
| Author | Country | Results |
|---|---|---|
| Hajna et al., 2015 [190] | Europe and Asia | A meta-analysis indicates that individuals in highly walkable areas logged 766 extra compared to those in low-walkability areas (95% CrI: 250, 1271). |
| Hajna et al., 2016 [104] | Canada | The most walkable neighbourhoods were linked with 1345 additional (95% CrI: 718, 1976). GIS-based walkability corresponded to walkable neighbourhoods, completing 606 more (95% CrI: 8, 1203). |
| Dygryn et al., 2010 [105] | Czech Republic | Weekdays (high walkability = 12,035 steps vs. low walkability = 9916 steps); weekend days (high walkability = 9523 vs. low walkability = 7516 steps); whole week (high walkability = 11,318 steps vs. low walkability = 9230 steps) |
| Kondo et al., 2009 [189] | Japan | Participants in more walkable neighbourhoods accumulated 9364 ± 567 , while those in less walkable areas recorded = 8293.5 ± 490.7 . |
| Hino et al., 2017 [191] | Japan | Step counts peaked at 19.4 to 20.7 °C. Below this range, each 1 °C increase corresponded to about 46.4 to 52.5 additional , whereas above the peak, each 1 °C increase corresponded to a decrease of about 98.0 to 187.9 . |
| Kim et al., 2022 [192] | Korea | A 1 °C increase in daily maximum temperature reduced the likelihood of walking practice: OR = 0.95 (95% CI: 0.94–0.97) in rural areas and 0.98 (95% CI: 0.97–1.00) in urban areas. |
| Chan et al., 2006 [106] | Canada | Weather affected activity: 14 mm of rainfall linked with 830 fewer steps (8.3% decrease), and a 20 kph higher wind reduced counts by 2–5%. Conversely, a 10 °C warmer day added +2.9% . |
| Klimek et al., 2022 [193] | Germany | Participants averaged 100.9 min of walking per day and 197.0 min of out-of-home time. Higher temperatures and sunlight increased walking, while humidity, wind, and rain reduced it. |
| Carlson et al., 2021 [194] | USA | Walking participation rose when weather was less often cited as a barrier: transportation increased from 23% to 40%, leisure from 42% to 67%. Weekly walking volume also increased (transport: 51 to 69 min, leisure: 64 to 98 min). |
| Ho et al., 2022 [107] | China | Optimal step counts recorded at 16–19.3 °C (city-specific). High temperatures above 30 °C reduced steps by 800–1500 per day, while temperatures below 5 °C also lowered counts. |
| Rodríguez-Gutiérrez et al., 2024 [195] | Spain | Step counts were highest at 14 °C and 13 h sunlight. Each +1 °C increase was linked with +74 ± 130 , and each extra hour of the sun with +315 ± 237 . |
| Author, Year | Exposure Type | Steps per Day/Results | SSR (30) |
|---|---|---|---|
| Hajna et al., 2015 [190] | BE (meta-analysis, walkability) | +766 | +25.5 |
| Hajna et al., 2016 [104] | BE (perceived walkability) | +1345 | +44.8 |
| Dygryn et al., 2010 [105] | BE (high vs. low, whole week) | +2088 (11,318 − 9230) | +69.6 |
| Kondo et al., 2009 [189] | BE (walkability, high vs. low) | +1071 (9364 − 8293) | +35.7 |
| Hino et al., 2017 [191] | Environmental (temperature above optimum, per °C) | −187.9 per °C | −6.3 per °C |
| Kim et al., 2022 [192] | Environmental (temperature vs. walking practice) | Each +1 °C reduced walking practice (OR 0.95 rural; 0.98 urban) | Not applicable |
| Chan et al., 2006 [106] | Environmental (rain 14 mm) | −830 | −27.7 |
| Klimek et al., 2022 [193] | Environmental (older adults, minutes/day) | walking; Normal to higher temperatures and more sunlight result in more walking; Greater humidity, wind, and rain result in less walking | Not applicable |
| Carlson et al., 2021 [194] | Environmental (weather barriers, NHIS survey) | Walking participation rose as weather was reported less often as a barrier—from 23% to 40% for transportation walking and 42% to 67% for leisure walking; Weekly walking time increased from 51 to 69 min (transportation) and 64 to 98 min (leisure). | Not applicable |
| Ho et al., 2022 [107] | Environmental (heat >30 °C vs. optimal) | −1500 | −50.0 |
| Rodríguez-Gutiérrez et al., 2024 [195] | Environmental (sunlight; per hour) | +315 | +10.5 per h |
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Arif, I.; Ullah, F. Impact of Traffic Stress, Built Environment, and Socioecological Factors on Active Transport Among Young Adults. Sustainability 2025, 17, 9159. https://doi.org/10.3390/su17209159
Arif I, Ullah F. Impact of Traffic Stress, Built Environment, and Socioecological Factors on Active Transport Among Young Adults. Sustainability. 2025; 17(20):9159. https://doi.org/10.3390/su17209159
Chicago/Turabian StyleArif, Irfan, and Fahim Ullah. 2025. "Impact of Traffic Stress, Built Environment, and Socioecological Factors on Active Transport Among Young Adults" Sustainability 17, no. 20: 9159. https://doi.org/10.3390/su17209159
APA StyleArif, I., & Ullah, F. (2025). Impact of Traffic Stress, Built Environment, and Socioecological Factors on Active Transport Among Young Adults. Sustainability, 17(20), 9159. https://doi.org/10.3390/su17209159

