Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces

© 2020 The Author(s). Background: Understanding the genetic structure of natural populations provides insight into the demographic and adaptive processes that have affected those populations. Such information, particularly when integrated with geospatial data, can have translational applications for...

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Main Authors: Yao Li, Amol C. Shetty, Chanthap Lon, Michele Spring, David L. Saunders, Mark M. Fukuda, Tran Tinh Hien, Sasithon Pukrittayakamee, Rick M. Fairhurst, Arjen M. Dondorp, Christopher V. Plowe, Timothy D. O'Connor, Shannon Takala-Harrison, Kathleen Stewart
Other Authors: Oxford University Clinical Research Unit
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Published: 2020
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/54499
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spelling th-mahidol.544992020-05-05T12:35:15Z Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces Yao Li Amol C. Shetty Chanthap Lon Michele Spring David L. Saunders Mark M. Fukuda Tran Tinh Hien Sasithon Pukrittayakamee Rick M. Fairhurst Arjen M. Dondorp Christopher V. Plowe Timothy D. O'Connor Shannon Takala-Harrison Kathleen Stewart Oxford University Clinical Research Unit University of Maryland Armed Forces Research Institute of Medical Sciences, Thailand University of Maryland, Baltimore Mahidol University Duke University National Institutes of Health, Bethesda Business, Management and Accounting Computer Science Medicine © 2020 The Author(s). Background: Understanding the genetic structure of natural populations provides insight into the demographic and adaptive processes that have affected those populations. Such information, particularly when integrated with geospatial data, can have translational applications for a variety of fields, including public health. Estimated effective migration surfaces (EEMS) is an approach that allows visualization of the spatial patterns in genomic data to understand population structure and migration. In this study, we developed a workflow to optimize the resolution of spatial grids used to generate EEMS migration maps and applied this optimized workflow to estimate migration of Plasmodium falciparum in Cambodia and bordering regions of Thailand and Vietnam. Methods: The optimal density of EEMS grids was determined based on a new workflow created using density clustering to define genomic clusters and the spatial distance between genomic clusters. Topological skeletons were used to capture the spatial distribution for each genomic cluster and to determine the EEMS grid density; i.e., both genomic and spatial clustering were used to guide the optimization of EEMS grids. Model accuracy for migration estimates using the optimized workflow was tested and compared to grid resolutions selected without the optimized workflow. As a test case, the optimized workflow was applied to genomic data generated from P. falciparum sampled in Cambodia and bordering regions, and migration maps were compared to estimates of malaria endemicity, as well as geographic properties of the study area, as a means of validating observed migration patterns. Results: Optimized grids displayed both high model accuracy and reduced computing time compared to grid densities selected in an unguided manner. In addition, EEMS migration maps generated for P. falciparum using the optimized grid corresponded to estimates of malaria endemicity and geographic properties of the study region that might be expected to impact malaria parasite migration, supporting the validity of the observed migration patterns. Conclusions: Optimized grids reduce spatial uncertainty in the EEMS contours that can result from user-defined parameters, such as the resolution of the spatial grid used in the model. This workflow will be useful to a broad range of EEMS users as it can be applied to analyses involving other organisms of interest and geographic areas. 2020-05-05T05:10:07Z 2020-05-05T05:10:07Z 2020-04-10 Article International Journal of Health Geographics. Vol.19, No.1 (2020) 10.1186/s12942-020-00207-3 1476072X 2-s2.0-85083435283 https://repository.li.mahidol.ac.th/handle/123456789/54499 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85083435283&origin=inward
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Business, Management and Accounting
Computer Science
Medicine
spellingShingle Business, Management and Accounting
Computer Science
Medicine
Yao Li
Amol C. Shetty
Chanthap Lon
Michele Spring
David L. Saunders
Mark M. Fukuda
Tran Tinh Hien
Sasithon Pukrittayakamee
Rick M. Fairhurst
Arjen M. Dondorp
Christopher V. Plowe
Timothy D. O'Connor
Shannon Takala-Harrison
Kathleen Stewart
Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces
description © 2020 The Author(s). Background: Understanding the genetic structure of natural populations provides insight into the demographic and adaptive processes that have affected those populations. Such information, particularly when integrated with geospatial data, can have translational applications for a variety of fields, including public health. Estimated effective migration surfaces (EEMS) is an approach that allows visualization of the spatial patterns in genomic data to understand population structure and migration. In this study, we developed a workflow to optimize the resolution of spatial grids used to generate EEMS migration maps and applied this optimized workflow to estimate migration of Plasmodium falciparum in Cambodia and bordering regions of Thailand and Vietnam. Methods: The optimal density of EEMS grids was determined based on a new workflow created using density clustering to define genomic clusters and the spatial distance between genomic clusters. Topological skeletons were used to capture the spatial distribution for each genomic cluster and to determine the EEMS grid density; i.e., both genomic and spatial clustering were used to guide the optimization of EEMS grids. Model accuracy for migration estimates using the optimized workflow was tested and compared to grid resolutions selected without the optimized workflow. As a test case, the optimized workflow was applied to genomic data generated from P. falciparum sampled in Cambodia and bordering regions, and migration maps were compared to estimates of malaria endemicity, as well as geographic properties of the study area, as a means of validating observed migration patterns. Results: Optimized grids displayed both high model accuracy and reduced computing time compared to grid densities selected in an unguided manner. In addition, EEMS migration maps generated for P. falciparum using the optimized grid corresponded to estimates of malaria endemicity and geographic properties of the study region that might be expected to impact malaria parasite migration, supporting the validity of the observed migration patterns. Conclusions: Optimized grids reduce spatial uncertainty in the EEMS contours that can result from user-defined parameters, such as the resolution of the spatial grid used in the model. This workflow will be useful to a broad range of EEMS users as it can be applied to analyses involving other organisms of interest and geographic areas.
author2 Oxford University Clinical Research Unit
author_facet Oxford University Clinical Research Unit
Yao Li
Amol C. Shetty
Chanthap Lon
Michele Spring
David L. Saunders
Mark M. Fukuda
Tran Tinh Hien
Sasithon Pukrittayakamee
Rick M. Fairhurst
Arjen M. Dondorp
Christopher V. Plowe
Timothy D. O'Connor
Shannon Takala-Harrison
Kathleen Stewart
format Article
author Yao Li
Amol C. Shetty
Chanthap Lon
Michele Spring
David L. Saunders
Mark M. Fukuda
Tran Tinh Hien
Sasithon Pukrittayakamee
Rick M. Fairhurst
Arjen M. Dondorp
Christopher V. Plowe
Timothy D. O'Connor
Shannon Takala-Harrison
Kathleen Stewart
author_sort Yao Li
title Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces
title_short Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces
title_full Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces
title_fullStr Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces
title_full_unstemmed Detecting geospatial patterns of Plasmodium falciparum parasite migration in Cambodia using optimized estimated effective migration surfaces
title_sort detecting geospatial patterns of plasmodium falciparum parasite migration in cambodia using optimized estimated effective migration surfaces
publishDate 2020
url https://repository.li.mahidol.ac.th/handle/123456789/54499
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