| Literature DB >> 33623008 |
Jamie M Caldwell1, A Desiree LaBeaud2, Eric F Lambin3,4, Anna M Stewart-Ibarra5,6, Bryson A Ndenga7, Francis M Mutuku8, Amy R Krystosik2, Efraín Beltrán Ayala9, Assaf Anyamba10, Mercy J Borbor-Cordova11, Richard Damoah12, Elysse N Grossi-Soyster2, Froilán Heras Heras13, Harun N Ngugi14,15, Sadie J Ryan16,17,18, Melisa M Shah19, Rachel Sippy13,20,21, Erin A Mordecai22.
Abstract
Climate drives population dynamics through multiple mechanisms, which can lead to seemingly context-dependent effects of climate on natural populations. For climate-sensitive diseases, such as dengue, chikungunya, and Zika, climate appears to have opposing effects in different contexts. Here we show that a model, parameterized with laboratory measured climate-driven mosquito physiology, captures three key epidemic characteristics across ecologically and culturally distinct settings in Ecuador and Kenya: the number, timing, and duration of outbreaks. The model generates a range of disease dynamics consistent with observed Aedes aegypti abundances and laboratory-confirmed arboviral incidence with variable accuracy (28-85% for vectors, 44-88% for incidence). The model predicted vector dynamics better in sites with a smaller proportion of young children in the population, lower mean temperature, and homes with piped water and made of cement. Models with limited calibration that robustly capture climate-virus relationships can help guide intervention efforts and climate change disease projections.Entities:
Mesh:
Year: 2021 PMID: 33623008 DOI: 10.1038/s41467-021-21496-7
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919