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Article

Chromatic and Morphological Differentiation of Triatoma dimidiata (Hemiptera: Reduviidae) with Land Use Diversity in El Salvador

by
Víctor D. Carmona-Galindo
1,2,*,
Claire C. Sheppard
1,
Madelyn L. Bastin
1,
Megan R. Kehrig
1,
Maria F. Marín-Recinos
3,
Joyce J. Choi
4 and
Vianney Castañeda de Abrego
2
1
Biology Department, University of Detroit Mercy, Detroit, MI 48221, USA
2
Centro de Investigación y Desarrollo en Salud, Universidad de El Salvador, San Salvador CP1101, El Salvador
3
Agrobiotechnology Program, Justus Liebig Universität Gießen, 35390 Hesse, Germany
4
School for Environment and Sustainability, University of Michigan, Ann Arbor, MI 48109, USA
*
Author to whom correspondence should be addressed.
Pathogens 2021, 10(6), 753; https://doi.org/10.3390/pathogens10060753
Submission received: 1 December 2020 / Revised: 24 May 2021 / Accepted: 9 June 2021 / Published: 14 June 2021
(This article belongs to the Special Issue Host-Pathogen Interaction Involved in Trypanosoma cruzi Infection)

Abstract

:
Chagas disease is caused by the parasite Trypanosoma cruzi, which is transmitted by insect-vectors in the taxonomic subfamily Triatominae and affects approximately 8,000,000 people world-wide. Current mitigation strategies for Chagas focus on insecticides, infrastructure improvements, and management of symptoms, which are largely unsustainable in underserved communities where the disease is widespread. Transmission patterns of vector-borne diseases are known to adaptively respond to habitat change; as such, the objective of our study was to evaluate how the physical characteristics of Triatoma dimidiata would vary in relation to land use in El Salvador. We hypothesized that the color and morphology of T. dimidiata would change with municipal levels of urban and natural green space, natural green space, and agricultural space, as well as municipal diversity, richness, and evenness of land use types. Our results characterize how T. dimidiata color and morphology vary directly with anthropogenic changes to natural and agricultural environments, which are reflective of a highly adaptable population primed to respond to environmental change. Mitigation studies of Chagas disease should exploit the relationships between anthropogenic land use and T. dimidiata morphology to evaluate how the transmission pattern of T. cruzi and Chagas disease symptomology are impacted.

1. Introduction

Chagas disease is a tropical neglected disease [1] caused by the parasite Trypanosoma cruzi (Chagas, 1909) [2], which is transmitted by hematophagous insect vectors, which are members of the Triatominae, a taxonomic subfamily of the Reduviidae [3]. Also known as kissing bugs, due to their feeding-behavior to typically bite near the mouth or eyes [2], Triatominae often share shelter with the nesting vertebrates on which they feed [3]. While all Triatominae are potential vectors of Chagas disease [4], only species that are adapted to domiciliary habitats are considered important for human transmission [3,4]. Triatominae species acquire T. cruzi when a kissing bug feeds on a mammalian host that is infected with the parasite [5]. The T. cruzi parasite is harbored in the gut of the Triatominae vector [6], and transmission to a new host occurs when the kissing bug defecates near the bite-wound following feeding [3,5]. The proximity of the parasite-laden feces to the skin-breakage or mucous membranes facilitates the entry of the T. cruzi parasite into the bloodstream of the new host, where it circulates to various tissues and replicates [5].
In humans, Chagas disease has systemic clinical symptoms but mostly targets the heart, digestive system, or both [1,4,7]. The acute phase of infection may be asymptomatic or include prolonged fever, malaise, enlargement of the liver, spleen, and lymph nodes [4]. Cardiomyopathy and digestive mega syndromes are common in the chronic phase [4], but heart failure is often a late term effect of Chagas heart disease [1]. While treatment is available and effective during the early acute phase, Chagas disease is incurable [1,5,6,8]. As many as 8,000,000 people in Latin America have Chagas disease [1], most of whom are unaware that they are infected [4], disproportionately affecting communities in rural areas where poverty is widespread [8]. In domiciliary environments, Triatominae vectors hide in the crevices of earthen walls and thatched roofs [9,10] and emerge at night to feed on inhabitants [11], including humans, domestic animals, and household livestock [12].
Mitigation strategies for Chagas disease include the use of bed nets [8], insecticides [13], infrastructure improvements [13], and therapeutic care [14]. However, these efforts are costly and unlikely economically viable for those communities living in the rural townships where Chagas disease proliferates [15,16]. However, Triatominae species can undergo home range expansions, for example, via anthropogenically aided dispersal (e.g., trade routes), as well as in adaptive response to favorable shifts in habitat suitability brought on by climate change, effectively introducing vectors to new regions [17,18]. The likely consequences of climate change are the northbound expansion of Triatominae vector species home ranges [11] and subsequently autochthonous cases of Chagas in humans [17,18]. Additionally, transmission patterns of Chagas disease can change with anthropogenic alteration of natural environments [19,20]. As such, expanding transdisciplinary collaborations, integrative characterizations, and novel explorations of strategies to mitigate Chagas disease are crucial for advancing the public health of countries that are currently, and in the future, susceptible to this tropical neglected disease [15,16].
Our research objective was to combine Geographic Information System (GIS) tools and image analyses of specimen collections to evaluate the relationship between land use in the Central American country of El Salvador and adaptations of the principal Triatominae species in that country, Triatoma dimidiata (Latreille, 1811) [9,12]. While approximately 14% of El Salvador is forested, native tropical forests cover less than 2% of the land area [21,22], and more than 90% of all forested land is privately owned [23]. Forested land in El Salvador persists in a highly fragmented landscape, with agricultural (82% of land area) and urban (4% of land area) spaces [24], which, for the last 30 years, have been marked with negative rates of natural forest regeneration (−0.74% of land area per year on average), sustained deforestation rates (−0.69% of land area per year on average), and net-limited reforestation initiatives (+1.93% of land area per year on average) [23]. As such, we hypothesized that the color and morphology of T. dimidiata populations would change with respect to municipal levels of urban and natural green space, natural green space, and agricultural space, as well as the diversity of land use.

2. Materials and Methods

2.1. Image Analysis

The specimens of T. dimidiata used in this study were collected during 2013 by the Ministry of Health using national protocols for Chagas disease [25]. A total of 52 individuals of T. dimidiata (23 males and 29 females from domiciliary habitats) preserved in ethanol-glycerol solution (19:1) were selected for this study, representing six departments from across El Salvador: Santa Ana (n = 14), Morazán (n = 10), San Vicente (n = 4), La Unión (n = 12), and San Miguel (n = 12). Dorsal and ventral views of all specimens were digitally photographed and used to collect color and morphological measurements using Sigma Scan Pro (v5) sensu [26]. Dorsal structures measured were as follows: wing, spots on dorsal connexivial plates, body, and light region on dorsal connexivial plates. Ventral structures measured were as follows: ventral light region and ventral dark region. Color measurements included: total pixel intensity, average pixel intensity, average red pixel intensity, average blue pixel intensity, and average green pixel intensity. Pixel intensity values are expressed as integers that range from 0 (black) to 255 (white). Morphological measurements included: area, shape, and proportion of the area of a given structure (dorsal or ventral) to body area. Shape was expressed as a deviation from circularity, using Formula (1):
S = P 2 π A
where “P” represents the perimeter and “A” represents the area of a given structure (dorsal or ventral). Increasing values denote deviations from a circular shape; where a value of 1 represents a (perfect) circle and values > 1 represent elongated shapes (with a long perimeter relative to area).

2.2. Land Use Diversity

The GIS map layer for land use at the municipal level for El Salvador was created by the Salvadoran National Records Center and made available by the GIS Laboratory in the School of Physics at the College of Natural Sciences and Mathematics in the University of El Salvador. The land use GIS shapefile (*.shp) contained information on the distribution of 57 different land use categories in 257 municipalities (of 262 total), distributed across 14 departments (of 14 total) in El Salvador.
Land use types were reorganized under three constructs sensu [16]: urban and natural green space, natural landscapes, and agricultural landscapes. The category of urban and natural green space represented 43 land use types (Table 1), encompassing vegetation classes found in urban, natural, and agricultural habitats. The category of natural landscapes represented 22 land use types (Table 1), encompassing naturally occurring vegetation or habitats. The category agricultural landscapes represented 17 land use types (Table 1), encompassing diverse crops. The richness (S) of land use in each municipality was quantified as the number of land use types represented in that municipality. The diversity (H) of land use in each municipality was quantified using the Shannon–Weiner diversity index (2):
H = p i * ln p i
where p i is the proportional abundance of the area occupied by a given land use type (km2), relative to the total municipal area (km2). As a measure of equitability, the evenness (J) of land use categories in each municipality was quantified using formula (3):
J = H ln s
where H is the Shannon–Weiner diversity index of land use types in a given municipality and S is the richness of land use types in that municipality.

2.3. Statistical Analysis

Variation in the color (i.e., total pixel intensity, average pixel intensity, average red pixel intensity, average blue pixel intensity, and average green pixel intensity) and morphological (i.e., both dorsal and ventral area, shape, and proportion of the area of a given structure relative to body area) characteristics of T. dimidiata were evaluated as dependent variables to changes in municipal-level land use (i.e., percent urban and natural green-space, percent natural landscapes, percent agricultural landscapes, land use type richness, land use type diversity index, and land use type evenness) using linear regression models. The null hypothesis for a linear regression (H0: x ¯ = 0) was rejected at α < 0.05. Data analyses were conducted using the software Statistica, version 13 (TIBCO Software Inc., Palo Alto, CA, USA).

3. Results

3.1. Percent Urban and Natural Green Space

There was a positive relationship between urban and natural green space (%) and the following T. dimidiata chromatic characteristics: total pixel intensity of spots on the dorsal connexivial plate, average green pixel intensity of the light region on the dorsal connexivial plate, average red pixel intensity of the light region on the dorsal connexivial plate, average green pixel intensity of the ventral light region, average pixel intensity of the ventral light region, total pixel intensity of the ventral light region, and total pixel intensity of the ventral dark region (Table 2). There was a negative relationship between urban and natural green space (%) and the following T. dimidiata chromatic characteristics: average blue pixel intensity of spots on the dorsal connexivial plate, average green pixel intensity of spots on the dorsal connexivial plate, average red pixel intensity of spots on the dorsal connexivial plate, average pixel intensity of spots on the dorsal connexivial plate, average blue pixel intensity of the light region on the dorsal connexivial plate, average blue pixel intensity of the ventral dark region, and average pixel intensity of the ventral dark region (Table 2).
There was a positive relationship between urban and natural green space (%) and the following T. dimidiata morphological characteristics: ventral light region proportion to the body area, ventral dark proportion to the body area, and ventral dark region area (Table 2). There was a negative relationship between urban and natural green space (%) and the following T. dimidiata morphological characteristics: light region on the dorsal connexivial plate area, light region on the dorsal connexivial plate shape, and ventral light region shape (Table 2).

3.2. Percent Natural Green Space

There was a positive relationship between natural green space (%) and the following T. dimidiata chromatic characteristics: average blue pixel intensity of spots on the dorsal connexivial plate, average green pixel intensity of spots on the dorsal connexivial plate, average red pixel intensity of spots on the dorsal connexivial plate, average intensity of spots on the dorsal connexivial plate, average blue pixel intensity of the light region on the dorsal connexivial plate, average blue pixel intensity of the ventral dark region, average green pixel intensity of the ventral dark region, and average pixel intensity of the ventral dark region (Table 3). There was a negative relationship between natural green space (%) and the following T. dimidiata chromatic characteristics: total pixel intensity of the wing, total pixel intensity of spots on the dorsal connexivial plate, total pixel intensity of the body, total pixel intensity of the ventral light region, and total pixel intensity of the ventral dark region (Table 3).
There was a positive relationship between natural green space (%) and the following T. dimidiata morphological characteristics: spots on the dorsal connexivial plate proportion to the body area, spots on the dorsal connexivial plate area, body area, light region on the dorsal connexivial plate area proportion to the body area, light region on the dorsal connexivial plate area, ventral light region area, ventral light region shape, and ventral dark region shape (Table 3).

3.3. Percent Agricultural Space

There was a positive relationship between agricultural space (%) and the following T. dimidiata chromatic characteristics: total pixel intensity of the wing, total intensity of spots on the dorsal connexivial plate, total pixel intensity of the body, average green pixel intensity of the ventral light region, average red pixel intensity of the ventral light region, total pixel intensity of ventral light region, and total pixel intensity of the ventral dark region (Table 4). There was a negative relationship between agricultural space (%) and the following T. dimidiata chromatic characteristics: average blue pixel intensity of spots on the dorsal connexivial plate, average green pixel intensity of spots on the dorsal connexivial plate, average red pixel intensity of spots on the dorsal connexivial plate, average pixel intensity of spots on the dorsal connexivial plate, average blue pixel intensity of the light region on the dorsal connexivial plate, average blue pixel intensity of the ventral dark region, average green pixel intensity of the ventral dark region, average red pixel intensity of the ventral dark region, and average pixel intensity of the ventral dark region (Table 4).
There was a positive relationship between agricultural space (%) and the following T. dimidiata morphological characteristic: ventral dark region proportion to the body size (Table 4). There was a negative relationship between agricultural space (%) and the following T. dimidiata morphological characteristics: spots on the dorsal connexivial plate proportion to the body area, spots on the dorsal connexivial plate area and body area, light region on the dorsal connexivial plate proportion to body area, light region on the dorsal connexivial plate area, light region on the dorsal connexivial plate shape, ventral light region area, ventral light region shape, and ventral dark region shape (Table 4).

3.4. Diversity of Land Use

There was a positive relationship between the richness of land use and the following T. dimidiata chromatic characteristics: total intensity of spots on the dorsal connexivial plate, average green pixel intensity of the body, average pixel intensity of the body, average green pixel intensity of the light region on the dorsal connexivial plate, average red pixel intensity of the light region on the dorsal connexivial plate, average pixel intensity of the light region on the dorsal connexivial plate, average green pixel intensity of the ventral light region, average red pixel intensity of the ventral light region, total pixel intensity of the ventral light region, and total intensity of the ventral dark region (Table 5). There was a negative relationship between the diversity of land use and the following T. dimidiata chromatic characteristics: average green pixel intensity of the light region on the dorsal connexivial plate, average red pixel intensity of the light region on the dorsal connexivial plate, average green pixel intensity of the ventral light region, average red pixel intensity of the ventral light region, average pixel intensity of the ventral light region, total pixel intensity of the ventral light region, and total pixel intensity the ventral dark region (Table 6). There was a negative relationship between the evenness of land use and the following T. dimidiata chromatic characteristics: average green pixel intensity of the body, average green pixel intensity of the light region on the dorsal connexivial plate, average red pixel intensity of the light region on the dorsal connexivial plate, average pixel intensity of the light region on the dorsal connexivial plate, total pixel intensity of spots on the dorsal connexivial plate, average green pixel intensity of the ventral light region, average red pixel intensity of the ventral light region, average pixel intensity of the ventral light region, total pixel intensity of the ventral light region, and total pixel intensity of the ventral dark region (Table 7).
There was a positive relationship between the richness of land use and the following T. dimidiata morphological characteristics: light region on the dorsal connexivial plate proportion to the body area, ventral light region proportion to the body area, ventral dark region proportion to the body area, and ventral dark region area (Table 5). There was a negative relationship between the richness of land use and the following T. dimidiata morphological characteristics: light region on the dorsal connexivial plate area, light region on the dorsal connexivial plate shape, and ventral light region shape (Table 5). There was a positive relationship between the diversity of land use and the following T. dimidiata morphological characteristics: light region on the dorsal connexivial plate proportion to the body area, light region on the dorsal connexivial plate area, ventral light region area, ventral light region shape, and ventral dark region shape (Table 6). There was a negative relationship between the diversity of land use and the following T. dimidiata morphological characteristic: light region on the dorsal connexivial plate proportion to the body area (Table 6). There was a positive relationship between the equitability of land use and the following T. dimidiata morphological characteristics: light region on the dorsal connexivial plate area, light region on the dorsal connexivial plate shape, ventral light region shape, and ventral dark region shape (Table 7). There was a negative relationship between the equitability of land use and the following T. dimidiata morphological characteristics: light region on the dorsal connexivial plate proportion to the body area, ventral dark region proportion to the body area, and ventral dark region area (Table 7).

4. Discussion

In El Salvador, several chromatic characteristics of T. dimidiata populations varied in relation to changing green spaces and land use at the municipal level. The spots on the dorsal connexivial plate of T. dimidiata got darker in color in terms of average blue pixel intensity, average green pixel intensity, average red pixel intensity, and average pixel intensity, with the increase of urban and natural green space, natural green space, and agriculture space. Spots on the dorsal connexivial plate got lighter in color in terms of average blue pixel intensity, green pixel intensity, average red pixel intensity, and average pixel intensity, with increasing natural green space. The spots on the dorsal connexivial plate also got lighter in color in terms of average pixel intensity, with increasing natural green space, but got darker with increasing urban and natural green space, as well as agriculture space. Spots on the dorsal connexivial plate got lighter in color in terms of total pixel intensity, with increasing urban, natural green, and agriculture space, as well as evenness of land use, but got darker in color with increasing natural green space and evenness of land use.
The ventral light region of T. dimidiata got lighter in color in terms of average green pixel intensity and average red pixel intensity, with increasing urban and natural green space, equitability of land use, and agriculture space, but got darker in color with an increase in diversity of land use, as well as evenness of land use. The ventral light region also got lighter in terms of average pixel intensity, with increasing urban and natural green space but got darker with increasing diversity of land use and evenness of land use. The ventral light region also got lighter in terms of total pixel intensity, with increasing urban and natural green space, agriculture space, and evenness of land use, but got darker with increasing natural green space percentage, diversity of land use, and evenness of land use. The ventral dark region got lighter in terms of average blue pixel intensity, with increasing natural green space, but got darker with increasing urban and natural green space, as well as agriculture space. The ventral dark region got darker in terms of average red pixel intensity, with increasing agriculture space. The ventral dark region got lighter in terms of average green pixel intensity, with increasing natural green space, but got darker with increasing agriculture space. The ventral dark region got lighter in terms of average pixel intensity, with increasing natural green space, but got darker with increasing urban and natural green space. The ventral dark region got lighter in terms of total pixel intensity, with urban and natural green space, as well as agriculture space, but got darker with increasing natural green space, as well as diversity of land use.
The light region on dorsal connexivial plate of T. dimidiata got lighter in color in terms of average blue pixel intensity, with increasing natural green space, but got darker in color with increasing urban and natural green space. The light region on dorsal connexivial plate average got lighter in terms of average green pixel intensity, with increasing urban and natural green space, as well as richness of land use, but got darker with increasing diversity of land use, as well as evenness of land use. The light region on dorsal connexivial plate got lighter in terms of average red pixel intensity with increasing urban and natural green space, as well as equitability of land use, but got darker with increasing diversity of land use, as well as evenness of land use. The light region on dorsal connexivial plate got lighter in terms of average pixel intensity, with increasing evenness of land use, but got darker with increasing evenness of land use.
The body of T. dimidiata got lighter in color in terms of average green pixel intensity, with increasing equitability of land use, but got darker in color with increasing evenness of land use. The body got lighter in terms of average pixel intensity, with increasing evenness of land use, and got darker in terms of total pixel intensity, with increasing natural green space and agriculture space. The wings of T. dimidiata got lighter in terms of total pixel intensity, with increasing agriculture space, but got darker with increasing natural green space.
In El Salvador, several morphological features of T. dimidiata populations also varied in relation to changing green spaces and land use at the municipal level. Both the ventral light region, as well as the ventral dark region, increased in size with increasing urban and natural green space, as well as richness of land use. The ventral dark region decreased in size, with increasing evenness of land use. The ventral light region increased in size with increasing natural green space, as well as diversity of land use, but decreased in size with increasing agricultural space. The ventral dark region increased in size with increasing urban and natural green space, as well as richness of land use, but decreased in size, with increasing evenness of land use. The ventral light region increased in size, with increasing diversity of land use, as well as evenness of land use, but decreased in size, with increasing urban and natural green space, agricultural space, and richness of land use. The ventral dark region increased in size, with increasing natural green space, diversity of land use, and evenness of land use, but decreased in size, with increasing agricultural space. The ventral dark region increased in size, with increasing agricultural space.
The shape of the light region on the dorsal connexivial plate of T. dimidiata became more elongated with increasing evenness of land use but became more circular with increasing urban and natural green space, agricultural space, and richness of land use. The light region on dorsal connexivial plate increased in area with increasing natural green space, diversity of land use, and evenness of land use, but decreased with increasing urban and natural green space, as well as richness of land use. The body of T. dimidiata increased in area with increasing natural green space but decreased in area with increasing agricultural space. The light region on dorsal connexivial plate of T. dimidiata increased in proportional size with increasing richness of land use but decreased in size with increasing diversity of land use, as well as evenness of land use. The light region on dorsal connexivial plate increased in area with increasing natural green space, as well as diversity of land use, but decreased in area with increasing agricultural space. The spots on dorsal connexivial plate of T. dimidiata increased in area with increasing natural green space but decreased in area with increasing agricultural space. The spots on the dorsal connexivial plate increased in area with increasing natural green space but decreased in area with increasing agricultural space.
Human behavior continually changes how land is used [16]; in recent decades, global croplands, pastures, plantations, and urban areas have all continued to expand [27]. Our study characterized adaptive shifts in the chromatic and morphological variation of T. dimidiata populations, with respect to the municipal management and modification of natural and agricultural landscapes in El Salvador. Anthropogenic changes to natural habitats can contribute to directional selection pressures on sylvatic populations [28], which in turn can contribute to variation in terms of morphology as well as species assemblages in both urban and natural environments [29]. An evaluation of T. infestans color polymorphism in a rural area of Cordoba Province, Argentina, documented life-history tradeoffs associated with melanic individuals and suggested pleiotropic effects linked to environment-specific adaptations [30]. As such, our findings align with other field studies by suggesting that anthropogenic management and modification of rural and urban environments can exert selection pressures on Triatominae populations in domiciliary habitats [26,30].
It is important to note that morphological studies of Triatominae cryptic species have found that variability corresponds closely with genetic variability [31,32]. Multivariate modeling of Triatominae speciation also points to a rapid process driven primarily by localized ecological factors [33]. As such, the variability of T. dimidiata characterized in our study further suggests an understated capacity to adapt to climate change. Climate change studies document that human behavior contributes significantly to global warming, fragmentation of natural environments, and the loss of ecosystem processes and ecological resilience [34]. Global warming has contributed to significant changes to insect morphology, as well as physiological processes, such as development rates [35]. As poikilothermic organisms, insects are highly sensitive to increased global temperatures and exhibit high rates of adaptation [35,36].
While inferential statistics can help identify categorical predictors that significantly describe some of the variation observed in a natural population, ultimately, the integration of biological null-models (e.g., the Hardy–Weinberg principle), with machine learning algorithms, will better serve to characterize anthropogenic contributions to (or interruptions of) evolutionary selective landscapes [37,38]. The ecological and evolutionary response of species populations to anthropogenically-imposed selective pressures vary richly with taxa and region [39,40,41], but the epidemiological importance of Triatominae vectors will largely depend on their dispersal ability and adaptation to localized environments [42]. As such, the characterization of Triatominae ecotypes (e.g., phenotypic plasticity and genotype × environment interactions) stand to better conect the current development of machine-learning algorithms for the identification of vector species [43,44] and the eco-epidemiological re-evaluation of Chagas disease [45].
The symptomology of Chagas disease varies greatly in both the acute and chronic phases, ranging from asymptomatic or mild to extreme [46]; however, the causes remain uncharacterized [6]. The relatively small size of El Salvador (21,041 km2) allows for field studies to document how the behavior, morphology, and physiology of vector species for Chagas disease can change as a result of anthropogenic transformations of both natural and urban environments [9,12,26,30]. Additionally, the limited number of main Triatominae vector-species remaining in-country [47] and the limited number of T. cruzi strains in-country [48] further suggest that future field-studies in El Salvador can also begin to explore the relationship between the variation in T. dimidiata morphology and the symptomology of Chagas disease, specifically as it relates to the transmission efficacy and differential virulence of T. cruzi strains [9,49].

Author Contributions

Conceptualization, V.D.C.-G., C.C.S., M.L.B., and M.R.K.; methodology, V.D.C.-G., C.C.S., M.L.B., M.R.K., M.F.M.-R., and J.J.C.; software, M.F.M.-R. and J.J.C.; validation, V.D.C.-G.; formal analysis, V.D.C.-G., C.C.S., M.L.B., M.R.K., M.F.M.-R., and J.J.C.; investigation, V.D.C.-G., C.C.S., M.L.B., and M.R.K.; resources, V.D.C.-G. and V.C.d.A.; data curation, M.F.M.-R., J.J.C., and V.C.d.A.; writing—original draft preparation, V.D.C.-G., C.C.S., M.L.B., and M.R.K.; writing—review and editing, V.D.C.-G.; visualization, V.D.C.-G.; supervision, V.D.C.-G.; project administration, V.D.C.-G., C.C.S., M.L.B., and M.R.K.; funding acquisition, V.D.C.-G. and V.C.d.A. All authors have read and agreed to the published version of the manuscript.

Funding

Funding support for Víctor D. Carmona-Galindo was awarded by the Core Fulbright U.S. Scholar Program.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are available on request from the corresponding author.

Acknowledgments

We would like to thank the Center for Eco Health Research (CENSALUD) at the University of El Salvador for logistical support, as well as the Department of Vector Studies at Salvadoran Ministry of Health for shared access to the T. dimidiata specimen collection.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

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Table 1. Assignments of land use types (from GIS shapefile) for green space evaluations.
Table 1. Assignments of land use types (from GIS shapefile) for green space evaluations.
Urban & Natural Green SpaceNatural LandscapesAgricultural Landscapes
Fruiting Trees
Deciduous Forest
Riparian Forest
Mangrove Forest
Evergreen Forest
Coniferous Forest
Mixed Forest
Semi-deciduous Forest
Sugar Cane
Coffee
Pineapple Crop
Annually Associated Crop
Permanent Herbaceous
Crop
Spaces with Sparse
Greenery
Estuaries
Staple Grains
Vegetables
Lakes and Lagoons
Coastal Lagoons and Estuaries
“Morrales” in Pastures
Mosaic of Crops and Pastures
Other Irrigated Crops
American Oil Palm Trees
Cultivated Pastures
Natural Pastures
Monospecific Forest Plantations
Plantains and Bananas
Beaches, Dunes, and Sandbanks
Marshy Meadows
Lava Rock
Salt Flats
Agroforestry Systems
Mainly Agricultural Land
Aquatic Greenery Around
Bodies of Water
Beach Shrub Vegetation
Sclerophyll or Thorny Vegetation
Natural Herbaceous Vegetation
Short Shrub Vegetation
Ornamental Plant Nurseries and Others
Ecotonal Zones
Construction Zones
Port Zones
Urban Green Zones
Deciduous Forest
Riparian Forest
Mangrove Forest
Evergreen Forest
Coniferous Forest
Mixed Forest
Semi-deciduous Forest
Spaces with Sparse Greenery
Estuaries
Lakes and Lagoons
Coastal Lagoons and Estuaries
Beaches, Dunes, and Sandbanks
Marshy Meadows
Rivers
Lava Rock
Salt Flats
Aquatic Greenery Around Bodies of Water
Beach Shrub Vegetation
Sclerophyll or Thorny Vegetation
Natural Herbaceous Vegetation
Short Shrub Vegetation
Urban Green Zones
Fruiting Trees
Sugar Cane
Coffee
Pineapple Crop
Annually Associated Crop
Permanent Herbaceous Crop
Staple Grains
Vegetables
Mosaic of Crops and Pastures
Other Irrigated Crops
American Oil Palm Trees
Cultivated Pastures
Natural Pastures
Monospecific Forest Plantations
Plantains and Bananas
Agroforestry Systems
Mainly Agricultural Land
Table 2. Linear relationships between municipal urban and natural green space (%) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Table 2. Linear relationships between municipal urban and natural green space (%) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Morphologyp-ValueSlope (m)R2y-Intercept (b)
B of Spots on Dorsal Connexivial Plate0.004−0.6250.157117.282
G of Spots on Dorsal Connexivial Plate 0.014−0.5460.115116.442
R of Spots on Dorsal Connexivial Plate 0.003−0.7270.159135.921
Average I of Spots on Dorsal Connexivial Plate 0.004−0.6250.152121.950
Total I of Spots on Dorsal Connexivial Plate0.033998.6080.088−46,830.4
B of Light Region on Dorsal Connexivial Plate0.016−0.5580.111117.854
G of Light Region on Dorsal Connexivial Plate
R of Light Region on Dorsal Connexivial Plate
Area of Light Region on Dorsal Connexivial Plate
Shape of Light Region on Dorsal Connexivial Plate
G of Ventral Light Region
R of Ventral Light Region
Average I of Ventral Light Region
Total I of Ventral Light Region
P of Ventral Light Region
Shape of Ventral Light Region
B of Ventral Dark Region
Average I of Ventral Dark Region
Total I of Ventral Dark Region
P of Ventral Dark Region
Area of Ventral Dark Region
0.047
0.015
0.001
0.001
0.004
0.004
0.015
0.011
0.001
0.011
0.012
0.036
0.028
0.001
0.001
0.715
1.085
−1.254
−0.010
1.283
1.562
1.001
139,131.795
0.014
−0.004
−0.453
−0.440
516,201.796
0.012
2.078
0.077
0.112
0.415
0.424
0.151
0.157
0.113
0.123
0.295
0.121
0.104
0.085
0.093
0.329
0.255
28.914
12.205
140.889
1.076
−12.355
−23.869
8.418
−10,561,676.07
−0.859
0.558
103.325
104.697
−38,683,702.48
−0.686
−106.807
Table 3. Linear relationships between municipal natural green space (%) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Table 3. Linear relationships between municipal natural green space (%) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Morphology p-ValueSlope (m)R2y-Intercept (b)
Total I of Wing 0.030−69,687.30.0907,219,776
B of Spots on Dorsal Connexivial Plate 0.0210.1500.10155.410
G of Spots on Dorsal Connexivial Plate 0.0430.1350.08062.280
R of Spots on Dorsal Connexivial Plate 0.0130.1870.11863.631
Average I of Spots on Dorsal Connexivial Plate0.0190.1550.10559.972
Total I of Spots on Dorsal Connexivial Plate 0.038−290.6270.08353,489.16
P of Spots on Dorsal Connexivial Plate
Area of Spots on Dorsal Connexivial Plate
Total I of Body
Area of Body
B of Light Region on Dorsal Connexivial Plate
P of Light Region on Dorsal Connexivial Plate Area
Area of Light Region on Dorsal Connexivial Plate
Total I of Ventral Light Region
Area of Ventral Light Region
Shape of Ventral Light Region
B of Ventral Dark Region
G of Ventral Dark Region
I of Ventral Dark Region
Total I of Ventral Dark Region
Shape of Ventral Dark Region
0.011
0.002
0.041
0.001
0.030
0.002
0.001
0.005
0.010
0.037
0.021
0.037
0.028
0.010
0.005
0.001
0.006
−134,604.474
0.689
0.150
0.004
0.266
−45,385.556
0.1889
0.001
0.134
0.037
0.137
−179,370.257
0.001
0.122
0.414
0.081
0.261
0.090
0.171
0.210
0.148
0.124
0.084
0.103
0.084
0.093
0.126
0.147
0.023
1.492
14,808,561.12
225.418
62.137
0.247
17.857
3,560,541.547
11.690
0.120
57.721
61.753
60.223
14,037,744.61
0.589
Table 4. Linear relationships between municipal agricultural space (%) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Table 4. Linear relationships between municipal agricultural space (%) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Morphology p-ValueSlope (m)R2y-Intercept (b)
Total I of Wing 0.013138,490.80.117−5,773,723
B of Spots on Dorsal Connexivial Plate 0.005−0.3150.14784.676
G of Spots on Dorsal Connexivial Plate 0.013−0.2850.11688.780
R of Spots on Dorsal Connexivial Plate 0.002−0.3940.173100.243
Average I of Spots on Dorsal Connexivial Plate 0.004−0.3250.15390.231
Total I of Spots on Dorsal Connexivial Plate 0.017575.9500.108−571.863
P of Spots on Dorsal Connexivial Plate
Area of Spots on Dorsal Connexivial Plate
Total I of Body
Area of Body
B of Light Region on Dorsal Connexivial Plate
P of Light Region on Dorsal Connexivial Plate
Area of Light Region on Dorsal Connexivial Plate
Shape of Light Region on Dorsal Connexivial Plate
G of Ventral Light Region
R of Ventral Light Region
Total I of Ventral Light Region
Area of Ventral Light Region
Shape of Ventral Light Region
B of Ventral Dark Region
G of Ventral Dark Region
R of Ventral Dark Region
Average I of Ventral Dark Region
Total I of Ventral Dark Region
P of Ventral Dark Region
Shape of Ventral Dark Region
0.034
0.005
0.017
0.001
0.008
0.004
0.001
0.013
0.011
0.010
0.001
0.020
0.007
0.006
0.013
0.020
0.009
0.003
0.045
0.002
−0.001
−0.010
271,180.95
−1.130
−0.318
−0.007
−0.583
−0.003
0.599
0.725
91,580.101
−0.300
−0.002
−0.274
−0.271
−0.309
−0.282
354,006.922
0.003
−0.002
0.087
0.144
0.108
0.231
0.133
0.155
0.333
0.117
0.122
0.126
0.198
0.103
0.137
0.140
0.117
0.104
0.130
0.162
0.078
0.184
0.072
2.426
−10,579,306.2
334.973
91.655
0.881
71.774
0.378
58.139
62.366
−5,011,035.25
40.950
0.345
83.318
87.081
90.617
86.549
−19,212,626.2
0.212
0.735
Table 5. Linear relationships between the richness of land use types (S) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Table 5. Linear relationships between the richness of land use types (S) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Morphology p-ValueSlope (m)R2y-Intercept (b)
Total I of Spots on Dorsal Connexivial Plate 0.0012,315.6340.2502,609.797
G of Body 0.0140.7460.11573.120
Average I of Body 0.0350.5910.08571.890
P of Light Region on Dorsal Connexivial Plate0.0260.0010.0951.000
G of Light Region on Dorsal Connexivial Plate 0.00211.4640.17167.819
R of Light Region on Dorsal Connexivial Plate 0.0031.8200.16778.658
Average I of Light Region on Dorsal Connexivial Plate 0.0041.0960.15768.299
Area of Light Region on Dorsal Connexivial Plate 0.001−1.1500.18546.733
Shape of Light Region on Dorsal Connexivial Plate 0.004−0.0080.1520.313
G of Ventral Light Region 0.0431.2770.07982.125
R of Ventral Light Region0.0501.4800.07592.586
Total I of Ventral Light Region 0.039155,914.240.082−630,879.771
P of Ventral Light Region0.0010.0160.1950.133
Shape of Ventral Light Region 0.031−0.0050.0900.248
Total I of Ventral Dark Region 0.0011,019,245.6360.192−9,883,020.224
P of Ventral Dark Region 0.0010.0160.2720.177
Area of Ventral Dark Region 0.0062.1310.14245.103
Table 6. Linear relationships between the diversity of land use types (H) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Table 6. Linear relationships between the diversity of land use types (H) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Morphology p-ValueSlope (m)R2y-Intercept (b)
P of Light Region on Dorsal Connexivial Plate0.022−0.0010.1011.000
G of Light Region on Dorsal Connexivial Plate 0.005−22.7800.147132.510
R of Light Region on Dorsal Connexivial Plate 0.049−20.4850.075146.018
P of Light Region on Dorsal Connexivial Plate0.0430.2080.07960.017
Area of Light Region on Dorsal Connexivial Plate 0.02813.6790.0932.941
G of Ventral Light Region 0.005−29.5220.150154.652
R of Ventral Light Region 0.012−31.2690.119171.714
Average I of Ventral Light Region
Total I of Ventral Light Region
Area of Ventral Light Region
Shape of Ventral Light Region
Total I of Ventral Dark Region
Shape of Ventral Dark Region
0.025
0.006
0.004
0.008
0.013
0.016
−21.263
−3,458,224.213
16.402
0.107
−13,308,888.17
0.053
0.096
0.144
0.157
0.134
0.116
0.110
135.739
7,979,460.029
−10.050
−0.026
30,904,302.68
0.525
Table 7. Linear relationships between the evenness of land use types (J) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Table 7. Linear relationships between the evenness of land use types (J) and T. dimidiata morphology, where: I = pixel intensity; B = average blue pixel intensity; R = average red pixel intensity; G = average green pixel intensity; and P = proportion of given region to the body area.
Morphologyp-ValueSlope (m)R2y-Intercept (b)
G of Body0.034−28.7290.087103.812
P of Light Region on Dorsal Connexivial Plate0.008−0.0010.1341.000
G of Light Region on Dorsal Connexivial Plate 0.001−77.0700.240140.367
R of Light Region on Dorsal Connexivial Plate 0.002−83.2040.177161.349
Average I of Light Region on Dorsal Connexivial Plate0.008−44.6550.132114.855
Area of Light Region on Dorsal Connexivial Plate 0.00159.1750.249−9.446
Shape of Light Region on Dorsal Connexivial Plate 0.0040.3620.152−0.052
Total I of Spots on Dorsal Connexivial Plate0.002−8570.17495,860.46
G of Ventral Light Region0.001−99.4220.244164.561
R of Ventral Light Region 0.001−110.3260.211185.196
Average I of Ventral Light Region 0.002−76.4750.178145.771
Total I of Ventral Light Region0.002−10,022,914.60.1728,174,925.742
Shape of Ventral Light Region 0.0010.3770.238−0.071
Total I of Ventral Dark Region 0.001−47,041,775.70.20736,692,751.55
P of Ventral Dark Region 0.001−0.6280.2240.835
A of Ventral Dark Region 0.032−74.6970.089128.409
Shape of Ventral Dark Region 0.0040.1670.1570.513
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Carmona-Galindo, V.D.; Sheppard, C.C.; Bastin, M.L.; Kehrig, M.R.; Marín-Recinos, M.F.; Choi, J.J.; Castañeda de Abrego, V. Chromatic and Morphological Differentiation of Triatoma dimidiata (Hemiptera: Reduviidae) with Land Use Diversity in El Salvador. Pathogens 2021, 10, 753. https://doi.org/10.3390/pathogens10060753

AMA Style

Carmona-Galindo VD, Sheppard CC, Bastin ML, Kehrig MR, Marín-Recinos MF, Choi JJ, Castañeda de Abrego V. Chromatic and Morphological Differentiation of Triatoma dimidiata (Hemiptera: Reduviidae) with Land Use Diversity in El Salvador. Pathogens. 2021; 10(6):753. https://doi.org/10.3390/pathogens10060753

Chicago/Turabian Style

Carmona-Galindo, Víctor D., Claire C. Sheppard, Madelyn L. Bastin, Megan R. Kehrig, Maria F. Marín-Recinos, Joyce J. Choi, and Vianney Castañeda de Abrego. 2021. "Chromatic and Morphological Differentiation of Triatoma dimidiata (Hemiptera: Reduviidae) with Land Use Diversity in El Salvador" Pathogens 10, no. 6: 753. https://doi.org/10.3390/pathogens10060753

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