Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors

Abstract Background Accurate prediction of crop flowering time is required for reaching maximal farm efficiency. Several models developed to accomplish this goal are based on deep knowledge of plant phenology, requiring large investment for every individual crop or new variety. Mathematical modeling...

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Main Authors: Konstantin Kozlov, Anupam Singh, Jens Berger, Eric Bishop-von Wettberg, Abdullah Kahraman, Abdulkadir Aydogan, Douglas Cook, Sergey Nuzhdin, Maria Samsonova
Format: Article
Language:English
Published: BMC 2019-03-01
Series:BMC Plant Biology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12870-019-1685-2
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spelling doaj-b1acfcd2ed7240a0a8c270029d8b28892020-11-25T02:07:44ZengBMCBMC Plant Biology1471-22292019-03-0119S211410.1186/s12870-019-1685-2Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factorsKonstantin Kozlov0Anupam Singh1Jens Berger2Eric Bishop-von Wettberg3Abdullah Kahraman4Abdulkadir Aydogan5Douglas Cook6Sergey Nuzhdin7Maria Samsonova8Peter the Great St. Petersburg Polytechnic UniversityProgram Molecular and Computation Biology, University of CaliforniaCommonwealth Scientific and Industrial Research Organization (CSIRO), Agriculture and FoodDepartment of Plant and Soil Science, University of VermontDepartment of Field Crops, Faculty of Agriculture, Harran UniversityCentral Research Institute for Field Crops (CRIFC)Deptartment of Plant Pathology, University of CaliforniaProgram Molecular and Computation Biology, University of CaliforniaPeter the Great St. Petersburg Polytechnic UniversityAbstract Background Accurate prediction of crop flowering time is required for reaching maximal farm efficiency. Several models developed to accomplish this goal are based on deep knowledge of plant phenology, requiring large investment for every individual crop or new variety. Mathematical modeling can be used to make better use of more shallow data and to extract information from it with higher efficiency. Cultivars of chickpea, Cicer arietanum, are currently being improved by introgressing wild C. reticulatum biodiversity with very different flowering time requirements. More understanding is required for how flowering time will depend on environmental conditions in these cultivars developed by introgression of wild alleles. Results We built a novel model for flowering time of wild chickpeas collected at 21 different sites in Turkey and grown in 4 distinct environmental conditions over several different years and seasons. We propose a general approach, in which the analytic forms of dependence of flowering time on climatic parameters, their regression coefficients, and a set of predictors are inferred automatically by stochastic minimization of the deviation of the model output from data. By using a combination of Grammatical Evolution and Differential Evolution Entirely Parallel method, we have identified a model that reflects the influence of effects of day length, temperature, humidity and precipitation and has a coefficient of determination of R 2=0.97. Conclusions We used our model to test two important hypotheses. We propose that chickpea phenology may be strongly predicted by accession geographic origin, as well as local environmental conditions at the site of growth. Indeed, the site of origin-by-growth environment interaction accounts for about 14.7% of variation in time period from sowing to flowering. Secondly, as the adaptation to specific environments is blueprinted in genomes, the effects of genes on flowering time may be conditioned on environmental factors. Genotype-by-environment interaction accounts for about 17.2% of overall variation in flowering time. We also identified several genomic markers associated with different reactions to climatic factor changes. Our methodology is general and can be further applied to extend existing crop models, especially when phenological information is limited.http://link.springer.com/article/10.1186/s12870-019-1685-2Wild chickpeaModelClimatic factorsGWAS
collection DOAJ
language English
format Article
sources DOAJ
author Konstantin Kozlov
Anupam Singh
Jens Berger
Eric Bishop-von Wettberg
Abdullah Kahraman
Abdulkadir Aydogan
Douglas Cook
Sergey Nuzhdin
Maria Samsonova
spellingShingle Konstantin Kozlov
Anupam Singh
Jens Berger
Eric Bishop-von Wettberg
Abdullah Kahraman
Abdulkadir Aydogan
Douglas Cook
Sergey Nuzhdin
Maria Samsonova
Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors
BMC Plant Biology
Wild chickpea
Model
Climatic factors
GWAS
author_facet Konstantin Kozlov
Anupam Singh
Jens Berger
Eric Bishop-von Wettberg
Abdullah Kahraman
Abdulkadir Aydogan
Douglas Cook
Sergey Nuzhdin
Maria Samsonova
author_sort Konstantin Kozlov
title Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors
title_short Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors
title_full Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors
title_fullStr Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors
title_full_unstemmed Non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors
title_sort non-linear regression models for time to flowering in wild chickpea combine genetic and climatic factors
publisher BMC
series BMC Plant Biology
issn 1471-2229
publishDate 2019-03-01
description Abstract Background Accurate prediction of crop flowering time is required for reaching maximal farm efficiency. Several models developed to accomplish this goal are based on deep knowledge of plant phenology, requiring large investment for every individual crop or new variety. Mathematical modeling can be used to make better use of more shallow data and to extract information from it with higher efficiency. Cultivars of chickpea, Cicer arietanum, are currently being improved by introgressing wild C. reticulatum biodiversity with very different flowering time requirements. More understanding is required for how flowering time will depend on environmental conditions in these cultivars developed by introgression of wild alleles. Results We built a novel model for flowering time of wild chickpeas collected at 21 different sites in Turkey and grown in 4 distinct environmental conditions over several different years and seasons. We propose a general approach, in which the analytic forms of dependence of flowering time on climatic parameters, their regression coefficients, and a set of predictors are inferred automatically by stochastic minimization of the deviation of the model output from data. By using a combination of Grammatical Evolution and Differential Evolution Entirely Parallel method, we have identified a model that reflects the influence of effects of day length, temperature, humidity and precipitation and has a coefficient of determination of R 2=0.97. Conclusions We used our model to test two important hypotheses. We propose that chickpea phenology may be strongly predicted by accession geographic origin, as well as local environmental conditions at the site of growth. Indeed, the site of origin-by-growth environment interaction accounts for about 14.7% of variation in time period from sowing to flowering. Secondly, as the adaptation to specific environments is blueprinted in genomes, the effects of genes on flowering time may be conditioned on environmental factors. Genotype-by-environment interaction accounts for about 17.2% of overall variation in flowering time. We also identified several genomic markers associated with different reactions to climatic factor changes. Our methodology is general and can be further applied to extend existing crop models, especially when phenological information is limited.
topic Wild chickpea
Model
Climatic factors
GWAS
url http://link.springer.com/article/10.1186/s12870-019-1685-2
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