Submitted:
28 August 2025
Posted:
29 August 2025
You are already at the latest version
Abstract
This study evaluated the yield stability and environmental responsiveness of 42 pro-vitamin A cassava genotypes across multi-season trials using Finlay-Wilkinson regression and trait-based clustering approaches. Regression parameters-intercept and slope were used to quantify baseline yield potential and sensitivity to environmental variation, respectively. Hierarchical and k-means clustering grouped genotypes into three biologically distinct clusters with clear agronomic relevance. Cluster 2 genotypes exhibited moderate responsiveness and positive yield baselines, indicating broad adaptability and suitability for regional deployment. Cluster 3 showed high environmental sensitivity but low yield potential, suggesting limited resilience under marginal conditions. Cluster 1 comprised highly responsive genotypes with poor baseline productivity, reflecting unstable performance and strong genotype × environment interaction. One-way ANOVA confirmed significant differences among clusters for both slope (F(2,39) = 40.89, P < 0.001) and intercept (F(2,39) = 102.10, P < 0.001), validating the clustering structure. Dendrogram profiling reinforced these classifications, offering a quantitative framework for genotype prioritization. The findings support strategic breeding decisions tailored to agroecological contexts and highlight the need for multi-trait integration in future clustering models to enhance cultivar deployment precision.
Keywords:
1. Introduction
2. Materials and Methods
2.1. Study Location and Plant Materials
2.2. Experimental Design and Field Layout
2.3. Trait Measurement
2.4. Statistical Analysis and Model Specification
2.5. Genotype Stability Analysis via Finlay–Wilkinson Regression
3. Results
3.1. High-Yielding Cassava Genotypes and Their Environmental Responsiveness
3.2. Cassava Genotypes Exhibiting Extreme Yield Sensitivity to Environmental Conditions
3.3. Stable and Predictable Cassava Genotypes with Near-Unit Environmental Response Slopes
3.4. Cluster-Defined Performance Profiles from Finlay–Wilkinson Regression Traits
3.5. Visual Summary of Environmental Sensitivity Across Clusters
3.6. Baseline Performance Variation Across Clusters
3.7. Genetic Clustering Reveals Population Structure Among Cassava Genotypes
3.8. Yield-Responsiveness Analysis Highlights Genotypic Adaptability Across Environments
4. Discussion
4.1. Genotype Performance and Stability Based on Finlay–Wilkinson Regression
4.2. Trait-Based Hierarchical Clustering of Genotypic Performance
4.3. Trait-Based Hierarchical Clustering of Genotypic Performance
4.4. Cluster-Based Variation in Yield Stability and Environmental Sensitivity
4.4.1. ANOVA-Based Validation of Cluster Differentiation
4.4.2. Centroid Analysis and Agronomic Implications
4.4.3. Convergent Performance Among Genetically Diverse Cassava Genotypes
5. Recommendation
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
| CMD | Cassava Mosaic Disease |
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| Genotype | Intercept | Slope | Insight |
|---|---|---|---|
| IITA-TMS-IBA180037 | 5.25 | 2.75 | High yield, responsive |
| IITA-TMS-IBA180294 | 3.44 | 0.588 | High yield, low sensitivity |
| IITA-TMS-IBA180070 | 2.29 | 2.23 | Good yield, moderately responsive |
| IITA-TMS-IBA180256 | 1.52 | 2.84 | Stable but responsive |
| IITA-TMS-IBA180259 | 1.51 | 1.27 | Balanced and modest performer |
| Genotype | Slope | Interpretation |
|---|---|---|
| IITA-TMS-IBA180081 | 8.42 | Highly sensitive, erratic under stress |
| IITA-TMS-IBA180073 | 7.61 | Responsive but potentially unstable |
| IITA-TMS-IBA180017 | 7.37 | Very sensitive, may lack reliability |
| IITA-TMS-IBA180182 | 6.93 | Possible strong G×E interaction |
| IITA-TMS-IBA180146 | 9.04 | Extreme response, risky adaptability |
| Genotype | Intercept | Slope | Stability |
|---|---|---|---|
| IITA-TMS-IBA180018 | 0.47 | 1.54 | Stable, slight responsiveness |
| IITA-TMS-IBA180051 | 1.81 | 1.74 | Responsive with modest yield |
| IITA-TMS-IBA180098 | 4.02 | 1.17 | Slightly sensitive, high yield |
| IITA-TMS-IBA180259 | 1.51 | 1.27 | Balanced performance |
| Cluster | Representative Genotypes | Mean Intercept (Yield) | Mean Slope (Sensitivity) | Trait Profile | Agronomic Interpretation |
| 1 | IITA-TMS-IBA180146, IITA-TMS-IBA180081 | -7.23 | 6.87 | Extremely sensitive, low yield | Unstable genotypes; high G×E interaction |
| 2 | IITA-TMS-IBA180073, IITA-TMS-IBA180256, IITA-TMS-IBA180244 | 1.64 | 2.20 | Moderate responsiveness, positive yield | Balanced and adaptable performers |
| 3 | IITA-TMS-IBA180037, IITA-TMS-IBA180049 | -2.35 | 4.08 | High sensitivity with low baseline yield | Inconsistent performance under stress |
| Trait | Source | Df | Sum Sq | Mean Sq | F-value | P-value | Significance |
|---|---|---|---|---|---|---|---|
| Slope | Cluster | 2 | 149.83 | 74.91 | 40.89 | <0.001 | *** |
| Residuals | 39 | 71.44 | 1.83 | ||||
| Intercept | Cluster | 2 | 539.10 | 269.57 | 102.10 | <0.001 | *** |
| Residuals | 39 | 103.00 | 2.64 |
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