Literature detail

Predicting Ebola virus disease risk and the role of African bat birthing.

C Reed Hranac1 Jonathan C Marshall2 Ara Monadjem3,4 David T S Hayman5
Affiliations 5 institutions
  1. Molecular Epidemiology and Public Health Laboratory, Hopkirk Research Institute, Massey University, Private Bag, 11 222, Palmerston North 4442, New Zealand. Electronic address: [email protected].
  2. Institute of Fundamental Sciences, Massey University, Private Bag 11 222, Palmerston North 4442, New Zealand.
  3. Department of Biological Sciences, University of Eswatini, Private Bag 4, Kwaluseni, Eswatini
  4. Mammal Research Institute, Department of Zoology and Entomology, University of Pretoria, Pretoria, Republic of South Africa.
  5. Molecular Epidemiology and Public Health Laboratory, Hopkirk Research Institute, Massey University, Private Bag, 11 222, Palmerston North 4442, New Zealand. Electronic address: [email protected].
PMID 31744768 2019 Epidemics eng ppublish
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Article

Publication summary

Ebola virus disease (EVD) presents a threat to public health throughout equatorial Africa. Despite numerous 'spillover' events into humans and apes, the maintenance reservoirs and mechanism of spillover are poorly understood. Evidence suggests fruit bats play a role in both instances, yet data remain sparse and bats exhibit a wide range of life history traits. Here we pool sparse data and use a mechanistic approach to examine how birthing cycles of African fruit bats, molossid bats, and non-molossid microbats inform the spatio-temporal occurrence of EVD spillover. We create ensemble niche models to predict spatio-temporally varying bat birthing and model outbreaks as spatio-temporal Poisson point processes. We predict three distinct annual birthing patterns among African bats along a latitudinal gradient. Of the EVD spillover models tested, the best by quasi-Akaike information criterion (qAIC) and by out of sample prediction included significant African bat birth-related terms. Temporal bat birthing terms fit in the best models for both human and animal outbreaks were consistent with hypothesized viral dynamics in bat populations, but purely spatial models also performed well. Our best model predicted risk of EVD spillover at locations of the two 2018 EVD outbreaks in the Democratic Republic of the Congo was within the top 12-35% and 0.1% of all 25 × 25 km spatial cells analyzed in sub-Saharan Africa. Results suggest that sparse data can be leveraged to help understand complex systems.

Chiroptera Ebolavirus Ecological niche model Pteropodidae Spatio-temporal Poisson point process Spillover Viral ecology Ebolavirus Animals Chiroptera Democratic Republic of the Congo Disease Outbreaks Disease Reservoirs Hemorrhagic Fever, Ebola Humans

Structured evidence records

Evidence records

3 total
1 records
Extraction confidence 0.85
Key finding

Birthing seasonality of African bats, including fruit bats, was identified as a significant ecological driver of Ebola virus spillover risk across Africa.

Virus
Host
Location
Supporting text

We pool sparse data and use a mechanistic approach to examine how birthing cycles of African fruit bats, molossid bats, and non‑molossid microbats inform the spatio‑temporal occurrence of EVD spillover. ... The best models included significant African bat birth‑related terms, consistent with hypothesized viral dynamics in bat populations.

Method
ensemble niche modeling; spatio‑temporal Poisson point process; mechanistic ecological modeling
Geographic raw
Africa
1 records
Extraction confidence 0.95
Key finding

Ebola virus disease spillover from fruit bats into humans and apes has occurred in Africa, suggesting bats as a source of animal-to-human Ebola virus transmission.

Virus
Location
Supporting text

Despite numerous 'spillover' events into humans and apes, the maintenance reservoirs and mechanism of spillover are poorly understood. Evidence suggests fruit bats play a role in both instances.

Method
mechanistic modeling; spatio-temporal Poisson point process; ensemble niche models
Study design
modeling study
Transmission direction
animal-to-human
Geographic raw
sub-Saharan Africa; Democratic Republic of the Congo
Country inferred
Democratic Republic of the Congo
1 records
Extraction confidence 0.70
Key finding

Ecological modeling of African fruit bats, molossid bats, and non-molossid microbats indicated that bat birthing cycles correspond with spatio-temporal patterns of Ebola virus disease spillover risk.

Virus
Location
Supporting text

We pool sparse data and use a mechanistic approach to examine how birthing cycles of African fruit bats, molossid bats, and non-molossid microbats inform the spatio-temporal occurrence of EVD spillover.

Method
ecological niche model; spatio-temporal Poisson point process
Geographic raw
Democratic Republic of the Congo
Country inferred
Democratic Republic of the Congo