| Literature DB >> 35302450 |
Chelsea Williams1, Cindy C Bitter2, Steven Lorber2, Caleb R Overfelt2, Holly Zehfus2, Andrea Spangler3, Valerie Lew3, Lawrence M Lewis3, Rosanne S Naunheim3.
Abstract
INTRODUCTION: Electric scooter (e-scooter) rental usage has increased exponentially around the country, expanding to more than 120 cities by the end of 2018. Early attempts to capture the safety effects of widespread adoption of this technology have been hampered by lack of accurate ridership data. Here we describe a 17-month evolution of ridership characteristics in St. Louis, Missouri, and the frequency of e-scooter rental-related injuries serious enough to require an emergency department (ED) visit over this time frame; we also provide estimates of incidence rates of injuries based on company ridership data.Entities:
Mesh:
Year: 2022 PMID: 35302450 PMCID: PMC8967461 DOI: 10.5811/westjem.2021.6.51101
Source DB: PubMed Journal: West J Emerg Med ISSN: 1936-900X
Figure 1Identifying total emergency department visits for electric scooter-related injury.
Demographic and characteristics related to patients with scooter-related injuries who presented to the emergency department.
| 2018 Number (%) | 2019 Number (%) | Total Number (%) | |
|---|---|---|---|
| Demographic characteristics | |||
| Age | |||
| 18–25 | 31 (33%) | 36 (28.3%) | 67 (30.3%) |
| 26–40 | 36 (38.3%) | 54 (42.5%) | 90 (40.7%) |
| 41–64 | 26 (27.7%) | 37 (29.1%) | 63 (28.5%) |
| ≥65 | 1 (1.1%) | 0 (0%) | 1 (0.5%) |
| Age (Median [IQR]) | 31 (21.5–40.5) | 31 (24–42) | 31 (22–40) |
| Gender | |||
| Male | 52 (55.3%) | 78 (61.4%) | 130 (58.8%) |
| Female | 42 (44.7%) | 49 (38.6%) | 91 (41.2%) |
| Race | |||
| White | 43 (45.7%) | 76 (59.8%) | 119 (53.8%) |
| Black | 35 (37.2%) | 47 (37.0%) | 82 (37.1%) |
| Other/Unknown | 16 (17%) | 4 (3.1%) | 20 (9.0%) |
| Ethnicity | |||
| Non-Hispanic | 85 (90.4%) | 123 (96.9%) | 208 (94.1%) |
| Hispanic | 2 (2.1%) | 3 (2.4%) | 5 (2.3%) |
| Unknown | 7 (7.4%) | 1 (0.8%) | 8 (3.6%) |
| Injury characteristics | |||
| Intoxication | |||
| Yes | 17 (18.1%) | 37 (29.1%) | 54 (24.4%) |
| No | 10 (10.6%) | 44 (34.6%) | 54 (24.4%) |
| Unknown | 67 (71.3%) | 46 (36.2%) | 113 (51.1%) |
| Helmet | |||
| Yes | 1 (1.1%) | 3 (2.4%) | 4 (1.8%) |
| No | 31 (33%) | 70 (55.1%) | 101 (45.7%) |
| Unknown | 62 (66%) | 54 (42.5%) | 116 (52.5%) |
| Main injury | |||
| Head injury | 12 (12.8%) | 9 (7.1%) | 21 (9.5%) |
| Lower extremity fracture | 10 (10.6%) | 14 (11.0%) | 24 (10.9%) |
| Upper extremity fracture | 13 (13.8%) | 35 (27.6%) | 48 (21.7%) |
| Facial fracture | 4 (4.3%) | 14 (11.0%) | 18 (8.1%) |
| Spinal injury | 2 (2.1%) | 1 (0.8%) | 3 (1.4%) |
| Minor injury | 48 (51.1%) | 49 (38.6%) | 97 (43.9%) |
| Other | 5 (5.3%) | 5 (3.9%) | 10 (4.5%) |
| Disposition | |||
| Floor | 10 (10.6%) | 9 (7.1%) | 19 (8.6%) |
| ICU or OU | 3 (3.2%) | 0 (0%) | 3 (1.4%) |
| Discharge | 76 (80.9%) | 114 (89.8%) | 190 (86%) |
| Left without being seen | 5 (5.3%) | 2 (1.6%) | 7 (3.2%) |
| Left against medical advice | 0 (0%) | 2 (1.6%) | 2 (0.9%) |
| Surgical repair | 14 (14.9%) | 21 (16.5%) | 35 (15.8%) |
| ESI triage | |||
| 1 (immediate) | 1 (1.1%) | 0 (0%) | 1 (0.5%) |
| 2 (emergent) | 20 (21.3%) | 17 (13.4%) | 37 (16.7%) |
| 3 (urgent) | 55 (58.5%) | 85 (66.9%) | 140 (63.3%) |
| 4 (less urgent) | 17 (18.1%) | 24 (18.9%) | 41 (18.6%) |
| 5 (least urgent) | 1 (1.1%) | 0 (0%) | 1 (0.5%) |
| Unknown | 0 (0%) | 1 (0.8%) | 1 (0.5%) |
| Severe injury | 29 (30.9%) | 20 (15.7%) | 49 (22.2%) |
| Temporal characteristics | |||
| Day of week | |||
| Sunday | 20 (21.3%) | 20 (15.7%) | 40 (18.1%) |
| Monday | 10 (10.6%) | 14 (11%) | 24 (10.9%) |
| Tuesday | 12 (12.8%) | 16 (12.6%) | 28 (12.7%) |
| Wednesday | 12 (12.8%) | 15 (11.8%) | 27 (12.2%) |
| Thursday | 9 (9.6%) | 19 (15.0%) | 28 (12.7%) |
| Friday | 10 (10.6%) | 16 (12.6%) | 26 (11.8%) |
| Saturday | 21 (22.3%) | 27 (21.3%) | 48 (21.7%) |
| Time of day | |||
| 5 AM–12:59 PM | 26 (27.7%) | 27 (21.3%) | 53 (24%) |
| 1 PM–8:59 PM | 45 (47.9%) | 60 (47.2%) | 105 (47.5%) |
| 9 PM–4:59 AM | 23 (24.5%) | 40 (31.5%) | 63 (28.5%) |
Fisher’s exact test < 0.05.
IQR, interquartile range; ICU, intensive care unit; OU, observation unit.
χ2 < 0.05.
ESI, Emergency Severity Index.
Figure 2Heat map showing location of electric scooter-rental rides in St. Louis. Darker colors represent a higher density of rides in that location.
Figure 3Hourly rides and emergency department visits for electric scooter rental-related injuries by percentage of total.
ED, emergency department.
Figure 4Emergency department visits for electric-scooter rental-related injuries by company-reported trips by month.
*Confidence intervals estimated assuming a Poisson distribution.
ED, emergency department.
Prospective data questionnaire responses.
| Questionnaire responses | Number (%) |
|---|---|
| Injury trigger | |
| Mechanical error | 2 (3.2%) |
| Obstacles | 9 (14.5%) |
| Operator error | 4 (6.5%) |
| Road surface conditions | 33 (53.2%) |
| Struck by vehicle | 6 (10.7%) |
| Unknown | 2 (3.6%) |
| User characteristics | |
| First-time user | 14 (25%) |
| Intermittent user | 20 (35.7%) |
| Frequent user | 22 (39.3%) |
| Purpose | |
| Transportation to/from work/school | 14 (25%) |
| Other transportation | 17 (30.4%) |
| Recreational | 24 (42.9%) |
| Unknown | 1 (1.8%) |
| Duration | |
| ≤ 5 min | 25 (40.3%) |
| >5 min and ≤ 30 min | 17 (27.4%) |
| >30 min | 12 (19.4%) |
| Unknown | 2 (3.2%) |
Min, minutes.
Figure 5Monthly rides and emergency department visits for electric-scooter rental-related injuries by percentage of total.
ED, emergency department.