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Paez A, Higgins CD (2021) The Accessibility Implications of a Pilot COVID-19 Vaccination Program in Hamilton, Ontario. Findings

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An examination of the accessibility implications of a pilot COVID-19 vaccination program in Hamilton, Ontario

Antonio Páez (McMaster University)
Christopher D. Higgins (University of Toronto Scarborough)

Findings (2020) https://doi.org/10.32866/001c.24082

Abstract

The Government of Ontario in Canada announced the pilot for a new vaccination program, with designated pharmacies across the province now able to offer COVID-19 vaccines. The accessibility of this program raises questions about travel times to vaccination sites and the distribution of these times among the population. In our examination of the City of Hamilton we find that selected sites do not serve rural and urban residents well; particularly, the associated cost of travel (in terms of travel time) is expected to be disproportionally borne by lower income urban populations and rural residents. Modest additions to the list of pilot sites in the city can substantially alleviate this inequity.

Keywords

  • COVID-19
  • Vaccination sites
  • Accessibility
  • Hamilton
  • Ontario
  • Reproducible research

Questions

Along with the provision of health care facilities to treat severe cases of COVID-19 (e.g., Ghorbanzadeh et al. 2021; Pereira, Braga, et al. 2021), another front in the fight against the pandemic is the rolling out of vaccination programs. The Government of Ontario, in Canada, implemented a pilot program to offer vaccines in pharmacies for people 60 years and older in early 2021. In the first incarnation of this program, the province approved 325 pharmacies in Toronto, Windsor-Essex, and Kingston (the latter including the region of Frontenac-Lennox and Addington). The City of Hamilton, the third most populous urban center in the province, operated dedicated vaccination centers for people aged 70+ and mobile pop-up clinics for people aged 75+; however, it did not have any approved pharmacies under the pilot for other populations until April 1st 2021, with the announcement of 20 pharmacies in the city . At the same time that the expansion of the pilot was announced, the province extended eligibility for this program to people 55 years and older.

Critics were swift to point out that the list of pharmacies approved for Hamilton by the province were mostly located in lower density parts of the city that are not well serviced by transit and are difficult to reach by foot. Indeed, as seen in Figure , a vast majority of the pharmacies are in suburban Hamilton. Whether this is an issue is less clear-cut when we consider that Hamilton’s older population skews suburban (see Figure ). Given the target demographic for the program, it is possible that suburban sites could be convenient for mature adults and the young old: the population aged 55 to 69 in Hamilton is approximately 58,710 suburban, 35,490 urban, and only 8,360 rural. Nevertheless, the selection of sites by the province raised some important questions. As Yu et al. (2021) note, good geographical coverage is a key element for a successful vaccination campaign; at the same time, siting vaccinations sites in car-oriented locations may lead to inequities in access by requiring people who do not own cars or who typically travel by other modes (mostly lower income urban residents) to spend more of their time reaching an approved pharmacy.

In this research, we investigate the accessibility implications of the sites selected for the pilot vaccination program. Concretely, we ask:

  • What is the estimated travel time needed to reach the nearest approved pharmacy, assuming that every person requires a vaccine?
  • What is the distribution of travel times across the population of the city?
  • How does the cost of time needed for travel and its distribution change with the addition of candidate vaccination sites in urban Hamilton?

We concentrate on the 55 to 69 year old population segment because the older 70+ group have access to other dedicated facilities besides those in the provincial pharmacy pilot (including pop-up clinics for people 75+).

\label{fig:pharmacies-and-regions}Regions with the City of Hamilton; the location of pharmacies in pilot is shown (black triangles) along with urban locations for scenario analysis (white circles).

Regions with the City of Hamilton; the location of pharmacies in pilot is shown (black triangles) along with urban locations for scenario analysis (white circles).

\label{fig:population-map}Distribution of population aged 55+ in the City of Hamilton.

Distribution of population aged 55+ in the City of Hamilton.

Methods

We use data from the following sources.

  • Urban, suburban, and rural boundary definitions from the City of Hamilton
  • Population and median total household income for 2016 by Dissemination Area (DA) boundary using the cancensus package (von Bergmann, Shkolnik, and Jacobs 2021)
  • Modal split by age for traffic analysis zones (TAZ) from the 2016 Transportation Tomorrow Survey (TTS)
  • Locations of pilot pharmacies from public records
  • Locations of three additional major chain pharmacies for scenario testing
  • Residential units by land parcel

Using the population aged 55 to 69 y.o. we first calculate the average number of people per dwelling and assign them proportionally to the dwellings by parcel. Second, median household incomes and modal splits across walking, transit, and car are joined to the parcels. Our data are from 2016 (the most recent available), but we assume they are largely representative of spatial, mobility, and demographic trends in the city. In the absence of travel behavior information during the pandemic we suggest this is an inevitable limitation of the analysis. Third, we use the r5r (Pereira, Saraiva, et al. 2021) package to calculate the travel time from each parcel to all pharmacies by three modes using a cutoff value of 180 min and a maximum walking distance of 10,000 m. These thresholds are chosen to maximize the coverage of the travel time tables, but the analysis, as explained next, is based on travel to the nearest approved pharmacy. Once we obtained travel time tables with population, proportion of trips by mode, and income information, we calculated the expected travel time ett from each parcel i to a pharmacy j as follows:

 ett_i = p^c_i \min(tt^c_{ij}) + p^t_i \min(tt^t_{ij}) + p^w_i \min(tt^w_{ij})

where p^k_i is the proportion of trips by mode k in the TAZ of parcel i, and tt^k_{ij} is the vector of travel times from parcel i to the pharmacies. The expected travel time is thus the weighted sum of travel times to the nearest pharmacy, with the weights given by the expected modal split in the TAZ.

The expected travel time i was multiplied by the assigned population in parcel i to obtain a measure of person-hours of travel (PHT) that gives a cumulative cost (in travel time) for a population group. This is as follows:

 PHT_i = P_i\cdot ett_i

Please note that this paper is a reproducible research document (see Brunsdon and Comber 2020) conducted using open source tools for transportation analysis (Lovelace 2021). The code and data necessary to reproduce the analysis are available in a public repository.

Findings

The top panel of Figure shows the average multimodal travel times (weighted by modal shares) by TAZ in Hamilton. It is apparent that travel times tend to be lower in much of suburban Hamilton and higher in the urban core and some rural parts of the city, particularly to the west. This is unsurprising, given the higher probability of travel by car and the predominantly suburban character of the vaccination sites. However, even accounting for the distribution of population, this leads to large disparities in the number of person-hours of travel across the city, with a concentration of the burden of travel in the urban core and the rural west (see bottom panel of Figure ).

The disparities are not trivial.

As seen in Table , under the pilot program approximately 36.42% of people live in DAs in the bottom 40% of the median household income scale, but they account for 51.98% of the total person-hours of travel. In contrast, 44.5% of people aged 55 to 69 in DAs in the top 40% of the median household income scale accrue only 35.03% of the total person-hours of travel. Where the mean travel time of residents of DAs with high median household income is 347 minutes, residents of lower income DAs average 746 minutes in travel time. In addition to greater average travel times, the top-left panel in Figure suggests residents in lower income DAs also see substantially larger variability in travel times and some may face considerably longer trip durations.

There are also important disparities by region. As shown in Table , the urban and rural populations in Hamilton are approximately 42.75% of the population but they bear 69.25% of the total person-hours of travel, with also much greater variability in expected travel times (Figure , bottom-left panel).

For comparison purposes we consider a scenario with some modest additions to the list of pharmacies in the provincial pilot. For the scenario we choose three plausible sites (i.e., pharmacies that belong to chains already used by the province for this program). We do not conduct a systematic search of candidate locations. We note that some papers propound the design of optimal accessibility landscapes (e.g., Horner 2008; Páez et al. 2013), but such an endeavor is beyond the scope of a short findings paper. Instead, we repeat the analysis after including the three urban sites shown in white circles in Figure .

The results of this scenario appear in the last two columns of Table and the two right panels of Figure . While all income groups benefit from the addition of these three sites with shorter mean trip durations, the most remarkable difference is the large reduction in the disparities between residents in DAs with lower levels of income. The top-right panel of Figure shows that the distribution of expected travel time is now more in line for all income groups, even if the bottom two income quintiles still have somewhat wider spreads. Unsurprisingly, the addition of three urban vaccination sites does not have a large impact for rural residents. The scenario also suggests that important reductions in the need for travel can be achieved. While this is true for all three modes of transportation (see Table ), the reductions are more substantial for travel by transit and walking. At a time that non-pharmaceutical interventions call for reductions in mobility, it is clearly in the public interest to reduce the need to travel even for this essential purpose.

The results indicate that the locations chosen by the province for the pilot vaccination program do not serve urban or rural residents of the city well, and there are some important questions regarding equity of access to the program. As shown, a disproportionate burden in the cost of travel (in terms of travel time) falls on lower income urban populations and rural populations. The selection of three sensible urban locations does much to alleviate disparities in the burden of transportation - and the fact that this is so despite the lack of a systematic search for optimal locations does not speak well of the effort put forth by the province in the choice of vaccination sites. The situation is different for rural populations, mainly because there are not many candidate locations in rural parts of the city; in this case, it is likely that increasing access for residents there will necessitate an expansion of the existing mobile vaccination pop-up clinic program.

\label{fig:maps-baseline}Average expected travel time by TAZ (in minutes) and total person-hours of travel by TAZ.

Average expected travel time by TAZ (in minutes) and total person-hours of travel by TAZ.

Distribution of person-hours of travel (PHT) by median total household income and region: pilot locations only (baseline), and scenario with three urban locations added

Pilot Program

Scenario

Group Population Total PHT Minutes per person Total PHT Minutes per person
Income Quintile
Top 20% 23297.315 2243.86 5.78 2146.56 5.53
Second 20% 22356.413 2471.95 6.63 2351.86 6.31
Third 20% 19570.061 1749.50 5.36 1563.98 4.80
Fourth 20% 17729.139 2928.96 9.91 1950.31 6.60
Bottom 20% 19629.952 4068.55 12.44 2388.42 7.30
Region
Rural 8356.963 1730.27 12.42 1730.24 12.42
Suburban 58711.629 4138.48 4.23 4138.39 4.23
Urban 35491.942 7588.59 12.83 4527.02 7.65
Note:
The population totals differ due to small differences in the classification of the regions
Distribution of person-hours of travel (PHT) by mode of transportation: pilot locations only (baseline) and scenario with three urban locations added
Mode Baseline PHT Scenario PHT Reduction in PHT
Car 8535.429 7092.220 -16.91%
Transit 2730.205 2107.684 -22.8%
Walking 2197.179 1201.223 -45.33%
\label{fig:results}Distribution of expected travel time for different population groups.

Distribution of expected travel time for different population groups.

References

Brunsdon, Chris, and Alexis Comber. 2020. “Opening Practice: Supporting Reproducibility and Critical Spatial Data Science.” Journal of Geographical Systems, 1–20. https://doi.org/10.1007/s10109-020-00334-2.

Ghorbanzadeh, Mahyar, Kyusik Kim, Eren Erman Ozguven, and Mark W. Horner. 2021. “Spatial Accessibility Assessment of COVID-19 Patients to Healthcare Facilities: A Case Study of Florida.” Journal Article. Travel Behaviour and Society 24: 95–101. https://doi.org/https://doi.org/10.1016/j.tbs.2021.03.004.

Horner, M. W. 2008. “’Optimal’ Accessibility Landscapes? Development of a New Methodology for Simulating and Assessing Jobs-Housing Relationships in Urban Regions.” Journal Article. Urban Studies 45 (8): 1583–1602. https://doi.org/10.1177/0042098008091492.

Lovelace, Robin. 2021. “Open Source Tools for Geographic Analysis in Transport Planning.” Journal Article. Journal of Geographical Systems. https://doi.org/10.1007/s10109-020-00342-2.

Páez, Antonio, Jarin Esita, K. Bruce Newbold, Nancy M. Heddle, and John T. Blake. 2013. “Exploring Resource Allocation and Alternate Clinic Accessibility Landscapes for Improved Blood Donor Turnout.” Journal Article. Applied Geography 45 (0): 89–97. https://doi.org/http://dx.doi.org/10.1016/j.apgeog.2013.08.008.

Pereira, Rafael H. M., Carlos K. V. S. Braga, L. Mendes and Serra, P. B. Amaral, N. Gouveia, and A. Paez. 2021. “Geographic Access to COVID-19 Healthcare in Brazil Using a Balanced Float Catchment Area Approach.” Journal Article. Social Science & Medicine 273: 113773. https://doi.org/https://doi.org/10.1016/j.socscimed.2021.113773.

Pereira, Rafael H. M., Marcus Saraiva, Daniel Herszenhut, Carlos Kaue Vieira Braga, and Matthew Wigginton Conway. 2021. “R5r: Rapid Realistic Routing on Multimodal Transport Networks with r5 in r.” Findings, March. https://doi.org/10.32866/001c.21262.

von Bergmann, Jens, Dmitry Shkolnik, and Aaron Jacobs. 2021. Cancensus: R Package to Access, Retrieve, and Work with Canadian Census Data and Geography. https://mountainmath.github.io/cancensus/.

Yu, J. H., H. J. Jeong, S. J. Kim, J. Y. Lee, Y. J. Choe, E. H. Choi, and E. H. Cho. 2021. “Sustained Vaccination Coverage During the Coronavirus Disease 2019 Epidemic in the Republic of Korea.” Journal Article. Vaccines 9 (1): 8. https://doi.org/10.3390/vaccines9010002.

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