| Literature DB >> 28086893 |
Prestige Tatenda Makanga1,2, Nadine Schuurman3, Charfudin Sacoor4, Helena Edith Boene4, Faustino Vilanculo4, Marianne Vidler5, Laura Magee6, Peter von Dadelszen6, Esperança Sevene4, Khátia Munguambe4, Tabassum Firoz7.
Abstract
BACKGROUND: Geographic proximity to health facilities is a known determinant of access to maternal care. Methods of quantifying geographical access to care have largely ignored the impact of precipitation and flooding. Further, travel has largely been imagined as unimodal where one transport mode is used for entire journeys to seek care. This study proposes a new approach for modeling potential spatio-temporal access by evaluating the impact of precipitation and floods on access to maternal health services using multiple transport modes, in southern Mozambique.Entities:
Keywords: Geographical access to care; Geographical information systems; Global health; Health geography; Maternal health services
Mesh:
Year: 2017 PMID: 28086893 PMCID: PMC5237329 DOI: 10.1186/s12942-016-0074-4
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Fig. 1Study site and location of health facilities
Fig. 2Sample precipitation and flooding data
Impact of precipitation on speed limits
| Precipitation | Road type | Speed limits (km/hr) | ||
|---|---|---|---|---|
| Driving | Walking | Public transport | ||
| Dry weather | Highway | 120 | 5 | 120 |
| Paved major road | 80 | 5 | 80 | |
| Unpaved major road | 60 | 5 | 60 | |
| Paved minor road | 40 | 4 | 4 | |
| Unpaved minor road | 20 | 4 | 4 | |
| Trail | 4 | 3 | 3 | |
| Wet weather | Highway | 96 | 4 | 96 |
| Paved major road | 64 | 4 | 64 | |
| Unpaved major road | 42 | 4 | 42 | |
| Paved minor road | 32 | 3 | 3 | |
| Unpaved minor road | 14 | 3 | 3 | |
| Trail | 2.8 | 2 | 2 | |
| Flood | Impassable (travel time = 99,999,999) | |||
Fig. 3Modeling process for calculating potential spatial access to maternal care services
Fig. 4Illustration of the effect of precipitation on hampering transport on minor unpaved roads—Photo taken by field team during a field visit to Calanga, in Maputo province
Transport options available based on the CLIP baseline census and facility assessment
| Facility level | Transport options |
| % | Most likely mode of transport |
|---|---|---|---|---|
| Community to PHC | Number of households that do not own private cars | 35,368 | 69.8 | Most women will either |
| Number of households with a bicycle | 10,521 | 20.8 | ||
| Number of households with a motorbike | 972 | 1.9 | ||
| Number of households with a boat | 87 | 0.2 | ||
| Number of households with a car | 2847 | 5.6 | ||
| Number of households with other forms of transport | 784 | 1.5 | ||
| Number of households where pregnant women have access to money for transport | 36,648 | 72.4 | ||
| Number of households that reported that they would get transport help from neighbors or family | 6787 | 13.4 | ||
| PHC to SHF | PHCs with functional ambulance or other vehicle for emergency | 2 | 4.0 | Most women are likely to be driven from primary to secondary facilities |
| PHCs with transport for patients referred to another facility | 43 | 93.0% | ||
| PHCs with access to an ambulance or other vehicle from another facility | 44 | 96.0% | ||
| SHF to THF | SHFs with functional ambulance or other vehicle for emergency | 7 | 100.0% | Most women are likely to be driven from secondary to tertiary facilities |
Fig. 5Travel times using different transport modes and percentage of women within facility’s catchments
Fig. 6Seasonal variation in travel times for different modes for the 17-month timeline
Fig. 7A comparison of walking times to the nearest PHC on the best day in the dry season (a) and worst day in the wet season (b)
Fig. 8Communities isolated from care as a result of flooding