| Literature DB >> 34027972 |
Catherine A Lippi1,2, Sadie J Ryan1,2,3, Alexis L White1,2, Holly D Gaff4,5, Colin J Carlson6,7.
Abstract
Tick-borne diseases are a growing problem in many parts of the world, and their surveillance and control touch on challenging issues in medical entomology, agricultural health, veterinary medicine, and biosecurity. Spatial approaches can be used to synthesize the data generated by integrative One Health surveillance systems, and help stakeholders, managers, and medical geographers understand the current and future distribution of risk. Here, we performed a systematic review of over 8,000 studies and identified a total of 303 scientific publications that map tick-borne diseases using data on vectors, pathogens, and hosts (including wildlife, livestock, and human cases). We find that the field is growing rapidly, with the major Ixodes-borne diseases (Lyme disease and tick-borne encephalitis in particular) giving way to monitoring efforts that encompass a broader range of threats. We find a tremendous diversity of methods used to map tick-borne disease, but also find major gaps: data on the enzootic cycle of tick-borne pathogens is severely underutilized, and mapping efforts are mostly limited to Europe and North America. We suggest that future work can readily apply available methods to track the distributions of tick-borne diseases in Africa and Asia, following a One Health approach that combines medical and veterinary surveillance for maximum impact.Entities:
Keywords: geospatial; maps; prevalence species distribution modeling; tick-borne diseases
Mesh:
Year: 2021 PMID: 34027972 PMCID: PMC8577696 DOI: 10.1093/jme/tjab086
Source DB: PubMed Journal: J Med Entomol ISSN: 0022-2585 Impact factor: 2.435
Viruses included in the study
| Pathogen | Family | Vectors |
|---|---|---|
| African swine fever virus | Asfarviridae |
|
| bourbon virus | Orthomyxoviridae |
|
| Colorado tick fever virus | Reoviridae | Not in literature |
| Crimean-Congo hemorrhagic fever virus | Bunyaviridae |
|
| Heartland virus | Bunyaviridae |
|
| Huaiyangshan banyangvirus | Bunyaviridae |
|
| Kyasanur forest disease virus | Flaviviridae |
|
| Louping Ill virus | Flaviviridae |
|
| Nairobi sheep disease virus | Bunyaviridae |
|
| Omsk hemorrhagic fever virus | Flaviviridae | Not in literature |
| Powassan virus | Flaviviridae |
|
| Sawgrass virus | Rhabdoviridae | Not in literature |
| Tick-borne encephalitis virus | Flaviviridae |
|
Bacteria and protozoan parasites included in the study
| Pathogen | Disease | Vectors |
|---|---|---|
|
| Human Granulocytic Anaplasmosis |
|
|
| Babesiosis |
|
|
| Lyme borreliosis |
|
|
|
|
|
|
|
|
|
|
| Tick relapsing fever |
|
|
| Q fever |
|
|
| Human Monocytic Ehrlichiosis |
|
|
| Panola Mountain Ehrlichia |
|
|
| Tularemia |
|
|
| African tick bite fever | Not in literature |
|
| Mediterranean spotted fever |
|
|
| Tidewater spotted fever |
|
|
| Rocky mountain spotted fever |
|
Eight types of study methodologies defined in this review
| Type of study | Definition (example) |
|---|---|
| Cluster analysis | Any type of cluster analysis was used, including SatScan cluster analysis, kernel density hotspot modeling, or similar, e.g. (15). |
| Ecological niche modeling | A species distribution modeling (SDM) algorithm was applied to point data of occurrences of ticks or tick-borne disease, and the resulting map was a function of environmental drivers of geographic distributions. |
| Endemicity mapping | Mapping the extent of ticks or tick-borne disease occurrence, based on a systematic or manual review of historical or published data and expert opinion, typically expressed with administrative boundaries or zones of suspected risk. |
| Genetic mapping | Maps which included locations of phylogenetic descriptions—e.g., a pie chart of strain type frequency at a given location. |
| Point data | Spatial data points of information (e.g., the incidence of human cases, presence or absence of vectors), presented on a map in a format accessible for reuse through digitization. |
| Prevalence mapping | Maps of tick-borne disease prevalence, in humans or other hosts, visualized using raw (unaltered and unmodeled) data. |
| Prevalence modeling | Maps are generated as predicted functions of prevalence through some sort of quantitative modeling. |
| Risk mapping | Projection of a modeled output (such as linear regression model output) onto a continuous geographic area or region, intended to communicate the geographic extent and intensity of transmission risk. |
Fig. 1.PRISMA flow diagram outlining the literature search and screening process.
Fig. 2.The cumulative number of studies that collected data about a given genus of tick vector (A) or tick-borne disease (B).
Fig. 3.The cumulative number of studies using any of eight given methodologies.
Fig. 4.The proportion of studies using different data sources to generate maps of tick-borne disease distribution, transmission, or risk. Many studies use (A) pathogen data directly (75%) and (B) human case data (40%), while fewer use (C) livestock infection data (12%) or (D) wildlife infection data (10%).
Fig. 5.Proportion of studies with data on different wildlife (A) and livestock species (B).
Fig. 6.Number of studies describing the geography of tick-borne disease by country, excluding a handful of explicitly continental studies (most notably 20 in Europe, as well as four in Africa, two in the eastern Mediterranean, one in Asia, and four global mapping studies).