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Research Remote Sensing and Geographic Information Systems: Charting Sin Nombre Virus Infections in Deer MiceJohn D. Boone,* Kenneth C. McGwire,† Elmer W. Otteson,* Robert S. DeBaca,† Edward A. Kuhn,* Pascal
Villard,* Peter F. Brussard,* and Stephen C. St. Jeor*
Remote sensing (RS) and geographic information systems (GIS) are map-based tools that can be used to
study the distribution, dynamics, and environmental correlates of diseases (1,2). RS is gathering digital
images of the earth's surface from airborne or satellite platforms and transforming them into maps. GIS is
a data management system that organizes and displays digital map data from RS or other sources and
facilitates the analysis of relationships between mapped features. Statistical relationships often exist
between mapped features and diseases in natural host or human populations (1). Examples include
malaria in southern Mexico and in Asia (3,4), Rift Valley fever in Kenya
(5), Lyme disease in Illinois (6), African trypanosomiasis
(7), and schistosomiasis in both humans (8) and livestock in the southeastern
United States (9). RS and GIS may also permit assessment of human risk from pathogens such as Sin
Nombre virus (SNV; family Bunyaviridae), the agent primarily associated with hantavirus pulmonary
syndrome (HPS) in North America (10,11). RS and GIS are most useful if disease dynamics and
distributions are clearly related to mapped environmental variables. For example, if a disease is
associated with certain vegetation types or physical characteristics (elevation, average precipitation), RS
and GIS could identify regions where risk is relatively high. SNV and its HostSince the first recognized outbreak of HPS in the southwestern United States in 1993, approximately 240 cases have occurred, with a death rate of approximately 40% (J. Mills, pers. comm.) (16). Information about SNV host-virus-environment relationships is limited (16,17). No simple relationships have been found between host density and antibody seroprevalence (16-18), but more complex nonlinear relationships appear to exist (17). SNV infections also appear to be less frequent in relatively high- or low-elevation habitats (16,17). Study DesignTypes of dataRS data are commonly used to generate maps of vegetation types. Vegetation types can be useful
indicators of environmental characteristics, including moisture, soil type, and elevation. However,
transforming RS images into vegetation maps can be subjective and imprecise (19,20); therefore, we
supplemented our vegetation maps with other RS/GIS data, including elevation, slope, vegetation density,
and hydrology. Infection Status of SitesPresence of SNV infections is commonly inferred by determining antibody seroprevalence in a host
population (14,16-18,21-23). However, antibody prevalence at the same site may vary considerably
(<5% to >60%) over relatively brief periods of <1 year (17,18,22,23), probably because of rapid
turnover of rodent populations through death, reproduction, dispersal, and migration. We focused on the
presence or absence of SNV infections inferred from antibody data, a more stable measure than antibody
prevalence. However, determining infection status is complicated by several factors: animals may remain
antibody-positive well after the transmissible phase of an infection (17); noninfectious but
antibody-positive deer mice may migrate to a site where no active SNV infection is present; and
detectable antibody response requires at least 1 to 2 weeks to develop in newly infected animals
(17). Site Selection
Our study area was the Walker River Basin, a 10,200-km2 region in western Nevada and east-central
California northeast of Yosemite National Park (Figure 1). At least nine cases of HPS have occurred in
the area since 1993. Major vegetation types in the river basin along an increasing elevational gradient
(1,200 m to 3,760 m) are salt desert scrub, sagebrush-grass scrub, piñon-juniper woodland, coniferous
forest, montane shrubland, and alpine tundra, with riparian habitat and meadows at a wide range of
elevations (24). Field and Laboratory ProceduresDeer mice were live-trapped at all field sites according to a fixed protocol (17). Each site had 48 live-traps in place for 3 days. A blood sample was collected from each deer mouse by retroorbital puncture with a heparinized capillary tube or Pasteur pipette. Blood samples were placed on dry ice and returned to the laboratory for enzyme-linked immunosorbent assay testing for immunoglobulin G antibody to SNV, which indicates current or past infections (14). Relative population density was estimated by counting the number of animals captured during a trapping session. Analytical MethodsOf the 144 sites sampled in 1995, 1996, and 1998, 25 were excluded from analysis because no deer
mice were captured. Status 1 classified 38 of the remaining 119 sites as negative and 81 as positive.
Status 2 classified 70 sites as negative and 49 as positive (i.e., 32 sites had differing infection status under
the two criteria). We tested (by chi-square, SAS ver. 6.10, PROC FREQ) for differences among the
proportion of positive sites for each vegetation type. Then, with a canonical linear discriminant function
analysis [DFA] [SAS ver. 6.10, PROC DISCRIM], we examined relationships between infection status
and the alternate set of RS and GIS variables with slope, elevation, density and uniformity of vegetation,
and distance from streams as indicators of SNV infection status (3,17). Prior probabilities were adjusted
to reflect actual proportions of positive and negative sites.
where p = accuracy estimate and n = number of samples. A normal approximation of confidence limits was obtained by multiplying the standard deviation of each estimate by the t-table value associated with 95% confidence and the appropriate number of samples. These confidence intervals also allowed us to determine whether classification accuracy differed significantly between methods. ResultsVegetation TypesThe proportion of positive sites in salt desert scrub (34% of 29 sites by Status 1, 14% by Status 2) was
significantly lower than in any other vegetation type (p = 0.05 criteria for significance). No significant
differences were found among any of the other seven vegetation types, where positive sites were more
common by both Status 1 (50% to 100%) and Status 2 (50% to 83%) (Figure
3). By assigning the predominant infection status to all sites within a given vegetation type, overall classification accuracies of
76% (Status 1) and 59% (Status 2) could be achieved (Table 1). The Status 1 criterion resulted in better
classification accuracy (for negative sites and for all sites combined) than Status 2. For both Status 1 and
Status 2, positive classification was more accurate (88%) than negative classification (50%).
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DiscussionRS and GIS data were useful indicators of the SNV infection status of deer mice in our study area. Sites with typical salt desert scrub characteristics were less likely to have infected mice than other sites. If the 25 sites where no deer mice were captured (primarily salt desert scrub sites) had been incorporated into our analyses as negative sites, this relationship would have been more pronounced. The relationship may be explained by the level of connectivity (i.e., biological interchange) among host populations. Salt desert scrub or similar arid habitats in the western United States are frequently dominated by heteromyid rodents (kangaroo rats, pocket mice) rather than by deer mice and other potential hosts for SNV. Although deer mice were found in salt desert scrub in the Walker River Basin and were sometimes locally abundant, their overall population density was somewhat lower than in other vegetation types, and they were more likely to be locally absent (17). We suspect that SNV infections are less likely in deer mouse populations that inhabit such regions because of their relative isolation from neighboring populations (30,31). Such fragmentation of host populations may reduce the rate of disease propagation across space and the frequency of infection recurrences within local sites. This hypothesis is supported by the clustering of negative sites in landscapes dominated by salt desert scrub (Figure 3), despite the fact that some of these sites had relatively dense deer mouse populations. Spatial Versus Temporal Disease PatternsBecause the RS and GIS maps summarize relatively fixed spatial properties of the environment, we focused on investigating the corresponding spatial patterns of SNV infections. SNV infections also exhibit temporal dynamics (13,16-18,22,23) superimposed on the baseline spatial pattern. However, a robust temporal study would require many years of replicated, longitudinal field data, as well as real-time RS data describing temporally variable environmental characteristics (such as climatic variables) for the corresponding period. We did not incorporate weather or climate data into GIS because weather monitoring stations are widely scattered throughout most of the study area, preventing meaningful extrapolations to most of the field sites. Sampling DesignBecause characterizing large-scale spatial disease patterns requires a large sample size, we maximized the number of sites sampled rather than visiting fewer sites on multiple occasions. This cross-sectional approach captured substantial ecologic diversity and provided statistical replicates of sites with similar characteristics. The disadvantage of the approach was a degree of uncertainty in determining the actual infection status at each site. However, when generalization of results is an important goal, a large, replicated, and diverse dataset that has a modest degree of measurement error is statistically preferable to a smaller, more precisely measured but poorly replicated dataset (32). Comparison of Methods (Table 1)The vegetation type approach was based on possible relationships between infection status and a
preexisting vegetation classification that might or might not be relevant to deer mice and SNV infections.
DFA, in contrast, generated a linear function that best distinguished the properties of positive and
negative sites. Our results suggest that DFA yields a better balance between classification accuracies for
positive and negative status (especially for Status 2). Classification and Prediction AccuracyClassification accuracy varied significantly between the Status 1 and Status 2 criteria
(Table 1), with Status 2 giving better classification balance for DFA and Status 1 producing better results for the
vegetation type analysis. Unfortunately, the biological significance of these analytical differences is difficult
to determine. However, the infection status of 73% of the sites was classified similarly by the two criteria.
The remaining 32 sites of ambiguous infection status might represent regions where infection status
changes with relatively high frequency. If so, this produces an intrinsic limitation in the capabilities of the
methods we present. The choice of technique might be based on the relative risks and costs of
false-negative versus false-positive predictions. Future DirectionsWe explored the ability of RS and GIS data to predict the baseline spatial patterns of SNV infections
across an ecologically variable landscape. Our findings should be at least somewhat relevant to a number
of other regions in the arid western United States, especially if infection dynamics are ultimately driven by
host connectivity patterns. To expand these findings, we developed methods to filter environmental data
to remove statistical noise and a computer simulation model to explore infection dynamics on a variety of
virtual landscapes. Further work will focus on the role of landscape structure in producing spatial patterns
of disease (35). For instance, deer mice in small patches of salt desert scrub within a matrix of more
desirable habitat types might be more likely to be infected than mice living in large contiguous regions of
salt desert scrub. Finally, it would be useful to test other types of RS and GIS data as possible indicators
of SNV infections. AcknowledgmentsWe thank Joe Blattman for field work; Tim Wade and Kathy Bishop for GIS assistance; Jack Hayes for
general advice; Joan Rowe and Jeff Riolo for laboratory assistance and advice; and Ed Volterra, Benny
Romero, and George Mortenson for help with arranging field work on private and other limited-access
properties. References
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