Author
Listed:
- Morgan E Smith
- Emily Griswold
- Brajendra K Singh
- Emmanuel Miri
- Abel Eigege
- Solomon Adelamo
- John Umaru
- Kenrick Nwodu
- Yohanna Sambo
- Jonathan Kadimbo
- Jacob Danyobi
- Frank O Richards
- Edwin Michael
Abstract
Although there is increasing importance placed on the use of mathematical models for the effective design and management of long-term parasite elimination, it is becoming clear that transmission models are most useful when they reflect the processes pertaining to local infection dynamics as opposed to generalized dynamics. Such localized models must also be developed even when the data required for characterizing local transmission processes are limited or incomplete, as is often the case for neglected tropical diseases, including the disease system studied in this work, viz. lymphatic filariasis (LF). Here, we draw on progress made in the field of computational knowledge discovery to present a reconstructive simulation framework that addresses these challenges by facilitating the discovery of both data and models concurrently in areas where we have insufficient observational data. Using available data from eight sites from Nigeria and elsewhere, we demonstrate that our data-model discovery system is able to estimate local transmission models and missing pre-control infection information using generalized knowledge of filarial transmission dynamics, monitoring survey data, and details of historical interventions. Forecasts of the impacts of interventions carried out in each site made by the models estimated using the reconstructed baseline data matched temporal infection observations and provided useful information regarding when transmission interruption is likely to have occurred. Assessments of elimination and resurgence probabilities based on the models also suggest a protective effect of vector control against the reemergence of LF transmission after stopping drug treatments. The reconstructive computational framework for model and data discovery developed here highlights how coupling models with available data can generate new knowledge about complex, data-limited systems, and support the effective management of disease programs in the face of critical data gaps.Author summary: As modelling becomes commonly used in the design and evaluation of parasite elimination programs, the need for well-defined models and datasets describing the nature of transmission processes in local settings is becoming pronounced. For many neglected tropical diseases, however, data for site-specific model identification are typically sparse or incomplete. In this study, we present a new data-model computational discovery system that couples data-assimilation methods based on existing monitoring survey data with model-generated data about baseline conditions to discover the local transmission models required for simulating the impacts of interventions in typical endemic locations for the macroparasitic disease, lymphatic filariasis (LF). Using data from eight study sites in Nigeria and elsewhere, we show that our reconstructive computational framework is able to combine information contained within partially-available site-specific monitoring data with knowledge of parasite transmission dynamics embedded in process-based models to generate the missing data required for inducing reliable locally applicable LF models. We also show that the models so discovered are able to generate the intervention forecasts required for supporting management-relevant decisions in parasite elimination.
Suggested Citation
Morgan E Smith & Emily Griswold & Brajendra K Singh & Emmanuel Miri & Abel Eigege & Solomon Adelamo & John Umaru & Kenrick Nwodu & Yohanna Sambo & Jonathan Kadimbo & Jacob Danyobi & Frank O Richards &, 2020.
"Predicting lymphatic filariasis elimination in data-limited settings: A reconstructive computational framework for combining data generation and model discovery,"
PLOS Computational Biology, Public Library of Science, vol. 16(7), pages 1-22, July.
Handle:
RePEc:plo:pcbi00:1007506
DOI: 10.1371/journal.pcbi.1007506
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References listed on IDEAS
- Edwin Michael & Swarnali Sharma & Morgan E Smith & Panayiota Touloupou & Federica Giardina & Joaquin M Prada & Wilma A Stolk & Deirdre Hollingsworth & Sake J de Vlas, 2018.
"Quantifying the value of surveillance data for improving model predictions of lymphatic filariasis elimination,"
PLOS Neglected Tropical Diseases, Public Library of Science, vol. 12(10), pages 1-26, October.
- Brajendra K Singh & Moses J Bockarie & Manoj Gambhir & Peter M Siba & Daniel J Tisch & James Kazura & Edwin Michael, 2013.
"Sequential Modelling of the Effects of Mass Drug Treatments on Anopheline-Mediated Lymphatic Filariasis Infection in Papua New Guinea,"
PLOS ONE, Public Library of Science, vol. 8(6), pages 1-16, June.
- Edwin Michael & Morgan E. Smith & Moses N. Katabarwa & Edson Byamukama & Emily Griswold & Peace Habomugisha & Thomson Lakwo & Edridah Tukahebwa & Emmanuel S. Miri & Abel Eigege & Evelyn Ngige & Thomas, 2018.
"Substantiating freedom from parasitic infection by combining transmission model predictions with disease surveys,"
Nature Communications, Nature, vol. 9(1), pages 1-13, December.
Full references (including those not matched with items on IDEAS)
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