Rank-based data synthesis of common bean on-farm trials across four Central American countries

Location-specific information is required to support decision making in crop vari-ety management, especially under increasingly challenging climate conditions. Datasynthesis can aggregate data from individual trials to produce information that sup-ports decision making in plant breeding programs, ex...

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Autores principales: Brown, David, Bruin, Sytze de, Sousa, Kauê de, Aguilar, Amílcar, Barrios, Mirna, Chaves, Néstor, Gómez, Marvin, Hernández, Juan Carlos, Machida, Lewis, Madriz, Brandon, Mejía, Pablo, Mercado, Leida, Pavón, Mainor, Rosas, Juan Carlos, Steinke, Jonathan, Suchini, José Gabriel, Zelaya, Verónica, Etten, Jacob van
Formato: Journal Article
Lenguaje:Inglés
Publicado: Wiley 2022
Materias:
Acceso en línea:https://hdl.handle.net/10568/125654
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author Brown, David
Bruin, Sytze de
Sousa, Kauê de
Aguilar, Amílcar
Barrios, Mirna
Chaves, Néstor
Gómez, Marvin
Hernández, Juan Carlos
Machida, Lewis
Madriz, Brandon
Mejía, Pablo
Mercado, Leida
Pavón, Mainor
Rosas, Juan Carlos
Steinke, Jonathan
Suchini, José Gabriel
Zelaya, Verónica
Etten, Jacob van
author_browse Aguilar, Amílcar
Barrios, Mirna
Brown, David
Bruin, Sytze de
Chaves, Néstor
Etten, Jacob van
Gómez, Marvin
Hernández, Juan Carlos
Machida, Lewis
Madriz, Brandon
Mejía, Pablo
Mercado, Leida
Pavón, Mainor
Rosas, Juan Carlos
Sousa, Kauê de
Steinke, Jonathan
Suchini, José Gabriel
Zelaya, Verónica
author_facet Brown, David
Bruin, Sytze de
Sousa, Kauê de
Aguilar, Amílcar
Barrios, Mirna
Chaves, Néstor
Gómez, Marvin
Hernández, Juan Carlos
Machida, Lewis
Madriz, Brandon
Mejía, Pablo
Mercado, Leida
Pavón, Mainor
Rosas, Juan Carlos
Steinke, Jonathan
Suchini, José Gabriel
Zelaya, Verónica
Etten, Jacob van
author_sort Brown, David
collection Repository of Agricultural Research Outputs (CGSpace)
description Location-specific information is required to support decision making in crop vari-ety management, especially under increasingly challenging climate conditions. Datasynthesis can aggregate data from individual trials to produce information that sup-ports decision making in plant breeding programs, extension services, and of farmers.Data from on-farm trials using the novel approach of triadic comparison of technolo-gies (tricot) are increasingly available, from which more insights could be gainedusing a data synthesis approach. The objective of our study was to present the appli-cability of a rank-based data synthesis approach to several datasets from tricot trialsAbbreviations:AIC, Akaike information criteria; AOA, area of applicability; DAP, daily accumulated precipitation; DI, dissimilarity index; DP, dailyprecipitation; DSRF, daily solar radiation flux; tricot, triadic comparison of technologies.This is an open access article under the terms of theCreative Commons AttributionLicense, which permits use, distribution and reproduction in any medium, provided the originalwork is properly cited.©2022 The Authors. Crop Science published by Wiley Periodicals LLC on behalf of Crop Science Society of America.2246wileyonlinelibrary.com/journal/csc2Crop Science.2022;62:2246–2266.BROWNET AL.2247Crop Scienceto generate location-specific information supporting decision making in crop varietymanagement. Our study focuses on tricot data from 14 trials of common bean (Phase-olus vulgarisL.) performed between 2015 and 2018 across four countries in CentralAmerica (Costa Rica, El Salvador, Honduras, and Nicaragua). The combined data of17 common bean genotypes were rank aggregated and analyzed with the Plackett–Luce model. Model-based recursive partitioning was used to assess the influenceof spatially explicit environmental covariates on the performance of common beangenotypes. Location-specific performance was predicted for the three main grow-ing seasons in Central America. We demonstrate how the rank-based data synthesismethodology allows integrating tricot trial data from heterogenous sources to providelocation-specific information to support decision making in crop variety manage-ment. Maps of genotype performance can support decision making in crop varietyevaluation such as variety recommendations to farmers and variety release processes.
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spelling CGSpace1256542025-12-08T09:54:28Z Rank-based data synthesis of common bean on-farm trials across four Central American countries Brown, David Bruin, Sytze de Sousa, Kauê de Aguilar, Amílcar Barrios, Mirna Chaves, Néstor Gómez, Marvin Hernández, Juan Carlos Machida, Lewis Madriz, Brandon Mejía, Pablo Mercado, Leida Pavón, Mainor Rosas, Juan Carlos Steinke, Jonathan Suchini, José Gabriel Zelaya, Verónica Etten, Jacob van crop management variety (taxa) climate change access to information-data access manejo del cultivo variedades cambio climático Location-specific information is required to support decision making in crop vari-ety management, especially under increasingly challenging climate conditions. Datasynthesis can aggregate data from individual trials to produce information that sup-ports decision making in plant breeding programs, extension services, and of farmers.Data from on-farm trials using the novel approach of triadic comparison of technolo-gies (tricot) are increasingly available, from which more insights could be gainedusing a data synthesis approach. The objective of our study was to present the appli-cability of a rank-based data synthesis approach to several datasets from tricot trialsAbbreviations:AIC, Akaike information criteria; AOA, area of applicability; DAP, daily accumulated precipitation; DI, dissimilarity index; DP, dailyprecipitation; DSRF, daily solar radiation flux; tricot, triadic comparison of technologies.This is an open access article under the terms of theCreative Commons AttributionLicense, which permits use, distribution and reproduction in any medium, provided the originalwork is properly cited.©2022 The Authors. Crop Science published by Wiley Periodicals LLC on behalf of Crop Science Society of America.2246wileyonlinelibrary.com/journal/csc2Crop Science.2022;62:2246–2266.BROWNET AL.2247Crop Scienceto generate location-specific information supporting decision making in crop varietymanagement. Our study focuses on tricot data from 14 trials of common bean (Phase-olus vulgarisL.) performed between 2015 and 2018 across four countries in CentralAmerica (Costa Rica, El Salvador, Honduras, and Nicaragua). The combined data of17 common bean genotypes were rank aggregated and analyzed with the Plackett–Luce model. Model-based recursive partitioning was used to assess the influenceof spatially explicit environmental covariates on the performance of common beangenotypes. Location-specific performance was predicted for the three main grow-ing seasons in Central America. We demonstrate how the rank-based data synthesismethodology allows integrating tricot trial data from heterogenous sources to providelocation-specific information to support decision making in crop variety manage-ment. Maps of genotype performance can support decision making in crop varietyevaluation such as variety recommendations to farmers and variety release processes. 2022-11 2022-11-23T11:49:43Z 2022-11-23T11:49:43Z Journal Article https://hdl.handle.net/10568/125654 en Open Access application/pdf Wiley Brown, D.; de Bruin, S.; de Sousa, K.; Aguilar, A.; Barrios, M.; Chaves, N.; Gómez, M.; Hernández, J.C.; Machida, L.; Madriz, B.; Mejía, P.; Mercado, L.; Pavón, M.; Rosas, J.C.; Steinke, J.; Suchini, J.G.; Zelaya, V.; van Etten, J. (2022) Rank-based data synthesis of common bean on-farm trials across four Central American countries. Crop Science 62 p. 2246–2266 ISSN: 0011-183X
spellingShingle crop management
variety (taxa)
climate change
access to information-data access
manejo del cultivo
variedades
cambio climático
Brown, David
Bruin, Sytze de
Sousa, Kauê de
Aguilar, Amílcar
Barrios, Mirna
Chaves, Néstor
Gómez, Marvin
Hernández, Juan Carlos
Machida, Lewis
Madriz, Brandon
Mejía, Pablo
Mercado, Leida
Pavón, Mainor
Rosas, Juan Carlos
Steinke, Jonathan
Suchini, José Gabriel
Zelaya, Verónica
Etten, Jacob van
Rank-based data synthesis of common bean on-farm trials across four Central American countries
title Rank-based data synthesis of common bean on-farm trials across four Central American countries
title_full Rank-based data synthesis of common bean on-farm trials across four Central American countries
title_fullStr Rank-based data synthesis of common bean on-farm trials across four Central American countries
title_full_unstemmed Rank-based data synthesis of common bean on-farm trials across four Central American countries
title_short Rank-based data synthesis of common bean on-farm trials across four Central American countries
title_sort rank based data synthesis of common bean on farm trials across four central american countries
topic crop management
variety (taxa)
climate change
access to information-data access
manejo del cultivo
variedades
cambio climático
url https://hdl.handle.net/10568/125654
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