Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic Variance

Phenotyping individual trees to quantify interactions among genotype, environment, and management practices is critical to the development of precision forestry and to maximize the opportunity of improved tree breeds. In this study we utilized airborne laser scanning (ALS) data to detect and charact...

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Main Authors: David Pont, Heidi S. Dungey, Mari Suontama, Grahame T. Stovold
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-01-01
Series:Frontiers in Plant Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fpls.2020.596315/full
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spelling doaj-cd33e529af524591af7c428fe7521bf12021-01-07T04:21:38ZengFrontiers Media S.A.Frontiers in Plant Science1664-462X2021-01-011110.3389/fpls.2020.596315596315Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic VarianceDavid Pont0Heidi S. Dungey1Mari Suontama2Mari Suontama3Grahame T. Stovold4Forest Informatics, Scion, Rotorua, New ZealandForest Genetics, Scion, Rotorua, New ZealandForest Genetics, Scion, Rotorua, New ZealandTree Breeding, Skogforsk, Umeå, SwedenForest Genetics, Scion, Rotorua, New ZealandPhenotyping individual trees to quantify interactions among genotype, environment, and management practices is critical to the development of precision forestry and to maximize the opportunity of improved tree breeds. In this study we utilized airborne laser scanning (ALS) data to detect and characterize individual trees in order to generate tree-level phenotypes and tree-to-tree competition metrics. To examine our ability to account for environmental variation and its relative importance on individual-tree traits, we investigated the use of spatial models using ALS-derived competition metrics and conventional autoregressive spatial techniques. Models utilizing competition covariate terms were found to quantify previously unexplained phenotypic variation compared with standard models, substantially reducing residual variance and improving estimates of heritabilities for a set of operationally relevant traits. Models including terms for spatial autocorrelation and competition performed the best and were labelled ACE (autocorrelation-competition-error) models. The best ACE models provided statistically significant reductions in residuals ranging from −65.48% for tree height (H) to −21.03% for wood stiffness (A), and improvements in narrow sense heritabilities from 38.64% for H to 14.01% for A. Individual tree phenotyping using an ACE approach is therefore recommended for analyses of research trials where traits are susceptible to spatial effects.https://www.frontiersin.org/articles/10.3389/fpls.2020.596315/fullspatial analysistree competitionenvironmenttree phenotypingairborne laser scanningheritability
collection DOAJ
language English
format Article
sources DOAJ
author David Pont
Heidi S. Dungey
Mari Suontama
Mari Suontama
Grahame T. Stovold
spellingShingle David Pont
Heidi S. Dungey
Mari Suontama
Mari Suontama
Grahame T. Stovold
Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic Variance
Frontiers in Plant Science
spatial analysis
tree competition
environment
tree phenotyping
airborne laser scanning
heritability
author_facet David Pont
Heidi S. Dungey
Mari Suontama
Mari Suontama
Grahame T. Stovold
author_sort David Pont
title Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic Variance
title_short Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic Variance
title_full Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic Variance
title_fullStr Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic Variance
title_full_unstemmed Spatial Models With Inter-Tree Competition From Airborne Laser Scanning Improve Estimates of Genetic Variance
title_sort spatial models with inter-tree competition from airborne laser scanning improve estimates of genetic variance
publisher Frontiers Media S.A.
series Frontiers in Plant Science
issn 1664-462X
publishDate 2021-01-01
description Phenotyping individual trees to quantify interactions among genotype, environment, and management practices is critical to the development of precision forestry and to maximize the opportunity of improved tree breeds. In this study we utilized airborne laser scanning (ALS) data to detect and characterize individual trees in order to generate tree-level phenotypes and tree-to-tree competition metrics. To examine our ability to account for environmental variation and its relative importance on individual-tree traits, we investigated the use of spatial models using ALS-derived competition metrics and conventional autoregressive spatial techniques. Models utilizing competition covariate terms were found to quantify previously unexplained phenotypic variation compared with standard models, substantially reducing residual variance and improving estimates of heritabilities for a set of operationally relevant traits. Models including terms for spatial autocorrelation and competition performed the best and were labelled ACE (autocorrelation-competition-error) models. The best ACE models provided statistically significant reductions in residuals ranging from −65.48% for tree height (H) to −21.03% for wood stiffness (A), and improvements in narrow sense heritabilities from 38.64% for H to 14.01% for A. Individual tree phenotyping using an ACE approach is therefore recommended for analyses of research trials where traits are susceptible to spatial effects.
topic spatial analysis
tree competition
environment
tree phenotyping
airborne laser scanning
heritability
url https://www.frontiersin.org/articles/10.3389/fpls.2020.596315/full
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AT heidisdungey spatialmodelswithintertreecompetitionfromairbornelaserscanningimproveestimatesofgeneticvariance
AT marisuontama spatialmodelswithintertreecompetitionfromairbornelaserscanningimproveestimatesofgeneticvariance
AT marisuontama spatialmodelswithintertreecompetitionfromairbornelaserscanningimproveestimatesofgeneticvariance
AT grahametstovold spatialmodelswithintertreecompetitionfromairbornelaserscanningimproveestimatesofgeneticvariance
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