| Literature DB >> 26798554 |
Fawad Ali1, Naila Kanwal1, Muhammmad Ahsan1, Qurban Ali2, Irshad Bibi3, Nabeel Khan Niazi3.
Abstract
This study was carried out to evaluate F1 single cross-maize hybrids in four crop growing seasons (2010-2012). Morphological traits and physiological parameters of twelve maize hybrids were evaluated (i) to construct seed yield equation and (ii) to determine grain yield attributing traits of well-performing maize genotype using a previously unexplored method of two-way hierarchical clustering. In seed yield predicting equation photosynthetic rate contributed the highest variation (46%). Principal component analysis data showed that investigated traits contributed up to 90.55% variation in dependent structure. From factor analysis, we found that factor 1 contributed 49.6% variation (P < 0.05) with primary important traits (i.e., number of leaves per plant, plant height, stem diameter, fresh leaves weight, leaf area, stomata conductance, substomata CO2 absorption rate, and photosynthetic rate). The results of two-way hierarchical clustering demonstrated that Cluster III had outperforming genotype H12 (Sultan × Soneri) along with its most closely related traits (photosynthetic rate, stomata conductance, substomata CO2 absorption rate, chlorophyll contents, leaf area, and fresh stem weight). Our data shows that H12 (Sultan × Soneri) possessed the highest grain yield per plant under environmentally stress conditions, which are most likely to exist in arid and semiarid climatic conditions, such as in Pakistan.Entities:
Year: 2015 PMID: 26798554 PMCID: PMC4699226 DOI: 10.1155/2015/563869
Source DB: PubMed Journal: Scientifica (Cairo) ISSN: 2090-908X
Stepwise multiple linear regression of grain yield attributing traits (see Section 2 for traits description).
| Variable | Regression coefficients |
| Cumulative | Partial | ||
|---|---|---|---|---|---|---|
|
| SE (±) | |||||
|
|
| −0.03532 | 0.01436 | 1.99 | 0.4692 | 46.9% |
|
|
| −0.04996 | 0.03239 | 1.33 | 0.3340 | 33.4% |
|
| Ch.c. | 0.00797 | 0.00200 | 1.20 | 0.3044 | 30.4% |
|
| FSW | −0.12108 | 0.01756 | −1.06 | −0.2717 | 27.1% |
|
| nlp | −0.06664 | 0.02666 | −1.00 | −0.2581 | 25.8% |
|
| SD | 0.00152 | 1.523 | −0.99 | −0.2568 | 25.6% |
|
|
| −0.06247 | 0.00797 | 0.98 | 0.2544 | 25.4% |
|
| LW | −0.01236 | 0.00385 | −0.93 | −0.2418 | 24.1% |
|
| PH | 0.13092 | 0.01899 | 0.57 | 0.1515 | 15.1% |
|
| FLSWR | −0.01528 | 0.00358 | −0.49 | −0.1306 | 13.1% |
|
| LA | 0.02657 | 0.00494 | 0.44 | 0.1179 | 11.7% |
|
| LL | 1.32010 | 0.20570 | −0.33 | −0.0870 | 8.7% |
|
|
| −0.37968 | 0.07671 | 0.28 | 0.0733 | 7.3% |
|
| FLW | 0.00241 | 4.012 | −0.22 | −0.0588 | 5.8% |
|
| LT | −0.01345 | 0.01183 | 0.03 | 0.0080 | 0.8% |
Intercept = −22.23. Multiple R = 0.87 (87%). R 2 = 0.74 (74%). Adjusted R 2 = 0.73 (73%). Standard error (SE) of estimation = 5.12.
Figure 1(a) Principal component analysis of grain yield and its attributing traits. (b) Scree plot and respective eigenvalues (see Section 2 for hybrid codes and traits description).
Factor loadings of grain yield attributing morphophysiological and agronomic traits (see Section 2 for traits description).
| Variables | Loadings | % of total communality |
|---|---|---|
| Factor 1 | 49.85 | |
| nlp | 0.818 | |
| PH | 0.824 | |
| SD | 0.502 | |
| FLW | 0.790 | |
| LA | 0.764 | |
|
| 0.866 | |
|
| 0.759 | |
|
| 0.803 | |
|
| ||
| Factor 2 | 29.47 | |
| Ch.c. | −0.749 | |
|
| −0.899 | |
| FLSWR | −0.950 | |
|
| ||
| Factor 3 | 11.22 | |
| LL | 0.373 | |
| LT | 0.171 | |
| Cumulative variance | 90.55 | |
Figure 2Dendrogram analysis based on two-way hierarchal clustering. Association of hybrids and traits based on genetic basis (see Section 2 for hybrid codes and traits description).