Genetics of Plant Architecture and Its Effect on Yield in Cassava (Manihot esculenta Crantz)
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University of Ghana
Abstract
Cassava (Manihot esculenta Crantz) is a significant starch source for various industrial
applications. However, cassava's traditional cultivation and harvesting methods are labour
intensive and inefficient, limiting the supply of fresh cassava roots for industrial starch production.
Cassava cultivars with compact plant architecture and moderate plant height are required to
increase the productivity and quality of fresh cassava roots through mechanical farming. Plant
architecture-related parameters such as plant height, height at first branch, harvest index, branching
level, stem diameter, branching angle, and lodging tolerance are crucial for crop yield and
adaptability to mechanized cultivation. However, the genetics of cassava plant architecture still
need to be better understood. The purpose of this study was to determine the genetic bases of the
plant architecture, yield and productivity-related traits in cassava, especially starch content. A
panel of 434 cassava clones developed at the International Institute of Tropical Agriculture,
Nigeria, was genotyped and phenotyped for 17 plant architecture, yield and productivity-related
traits at four locations across four growing seasons in Nigeria. which constitute five test
environments. A genome-wide association study (GWAS) was conducted using the phenotypic
data from a panel of 434 clones and 54,574 high-quality DArTseq-derived SNP markers evenly
distributed across the cassava genome. Significant associations between 17 SNPs and eight plant
architecture and yield component traits were identified through GWAS. Out of these 17 SNPs, 13
were linked to 18 putative candidate genes for seven traits including angle of branching (4), plant
type (4), overall plant appearance (2), level of branching (4), harvest index (3), and number of
harvested plants (1). These candidate genes exhibit various functions in relation to plant
architecture, adaptation, yield, plant growth, development, stress response, and starch metabolism.
One of the 18 putative candidate genes identified in this study is a novel gene (Manes.01G077900).
This represents a significant contribution to knowledge. The effect of genotype by environment
interaction on the stability of genotypes was evaluated using the AMMI (Additive Main Effects
and Multiplicative Interaction), Finlay-Wilkinson, and GGE (Genotype Main Effects and
Genotype by Environment Interaction) biplots while the test environments were delineated into
mega environments using statistical models such as AMMI (Additive Main Effects and
Multiplicative Interaction), and GGE (Genotype Main Effects and Genotype by Environment
Interaction) biplots. The genotypic main effect showed sufficient variation that could be exploited
for genetic gains, but the interaction between genotype and environment could complicate this. Two cassava accessions with erect plant type G424 (TMS18F1436P0049) and G83
(TMS18F1096P0013) were found to be adaptable and stable for fresh root yield and starch content,
making them early selection candidates for these traits. The prospect of adopting the use of near
infrared spectroscopy data obtained using the affordable SCiO sensor spectrometer in predicting
starch and dry matter content from fresh cassava roots was evaluated. The results obtained from
this research produced identical results to the prediction metrics that were reported in previous
trials with respect to the consistency and accuracy of spectra (NIRS) data that were obtained using
SCiO sensor spectrometer. The results validate the previous findings with desirable accuracy of
prediction. A high throughput phenotyping procedure that enhances the rapid and cost-effective
estimation of plant architecture and yield traits in cassava was developed using normalized
difference vegetation index (NDVI) data obtained using an affordable handheld sensor
manufactured by Trimble. Two models (linear regression and polynomial regression model) were
used in developing phenotyping protocols for predicting yield and plant architecture traits in
cassava using NDVI data. The polynomial regression model showed similar prediction accuracy
for fresh root yield across two environments at 3, 6, and 9 months after planting. The linear
regression model used NDVI data to predict yield or plant architecture traits directly. Based on
prediction accuracy, there exist a significant disparity between NDVI data obtained from the two
trial locations (Mokwa and Onne), this affirms the effect of the significant genotype by
environment interaction on the performance of the cassava accessions across the test environments.
The cassava accessions that combine the desirable plant architecture traits, high yield and more
than 25% starch content would be selected for further evaluation at the advanced yield trial (AYT)
stage and subsequent stages of the cassava improvement program.
Description
PhD. Plant Breeding
