Search or add a thesis

Advanced Search (Beta)
Home > Determination of Combining Ability and Hybrid Authentication Using Molecular Markers in Wheat

Determination of Combining Ability and Hybrid Authentication Using Molecular Markers in Wheat

Thesis Info

Access Option

External Link

Author

Muhammad Rashid Abbasi

Program

PhD

Institute

University of Agriculture

City

Faisalabad

Province

Punjab

Country

Pakistan

Thesis Completing Year

2016

Thesis Completion Status

Completed

Subject

Biotechnology

Language

English

Link

http://prr.hec.gov.pk/jspui/bitstream/123456789/9622/1/Muhammad_Rashid_Abbasi_Biotechnology_HSR_UAF_2016_10.01.2017.pdf

Added

2021-02-17 19:49:13

Modified

2024-03-24 20:25:49

ARI ID

1676725841017

Asian Research Index Whatsapp Chanel
Asian Research Index Whatsapp Chanel

Join our Whatsapp Channel to get regular updates.

Similar


Wheat is one of the most important cereal crop and present study is conducted to explore the potential of experimental material for high grain yield and protein contents through a planned breeding programme. In the proposed study molecular markers have also been planned for the detection of polymorphism as well as hybrid purity assessment for the improvement of yield and quality in wheat. Ten wheat cultivars/ lines were hybridized according to Line × Tester fashion in randomized complete block design with triplicates. Data was recorded for various quantitative and qualitative traits and then it was subjected to biometrical analysis. Significant variability was observed between parents and their hybrids. This study revealed the importance of general combining ability (GCA) as compared to the specific combining ability (SCA). Line WN-146 showed significant positive GCA for number of spikelets per spike, number of grains per spike, grains weight per spike and grain protein contents. Chakwal-86 and Punjab-11 showed significant GCA effects for grain yield per plant among testers. Punjab-11 and WN-146 were found to be the best general combiners among testers and lines for grain yield as well as grain protein contents. Cross combinations WN-146 x Miraj-08, WN-136 x Punjab-11, and WN-64 x Punjab-11 exposed highest positive and significant SCA effects for grain yield per plant. Crosses WN-122 x Miraj-08 and WN-64 x Chakwal-86 had best SCA for grain yield and protein contents. The results of the genetic studies showed that almost all the traits except total soluble sugars showed additive genetic effects with moderate to high heritability. Heterosis studies showed that hybrid vigour existed could be exploited for the commercial production of wheat and selection of enviable crosses is the best option to improve the wheat grain yield. The cross combinations WN-113 x Saher-06, WN-136 x Chakwal-86, WN-64 x Aas-11, WN-64 x Saher-06 and WN-122 x Miraj-08 were the superior hybrids which could be further exploited because of their potential to produce high yield as well as nutrition. Substantial heterosis (23.79%) and heterobeltiosis (20.37%) for grain protein contents was shown by the cross WN-136 x Chakwal-86. Cross combinations WN-64 x Aas-11, WN-64 x Punjab-11, WN-122 x Aas-11 and WN-136 x Saher-06 exposed significantly positive and exploitable heterosis and heterobeltiosis for grain yield per plant. Cross combinations WN-122 x Aas-11 and WN-136 x Saher-06 produced better yield and grain protein contents simultaneously. Grain yield per plant is most important and preferred in wheat breeding that revealed significant positive association with flag leaf area, plant height and number of grains per spike but it had strongly negative correlation with grain protein contents. Simple sequence repeats (SSRs) amplifications showed highest similarity between genotypes WN-146 and WN-146 x Aas-11 (84.73%) while the most diverse genotypes were Chakwal-86 and WN-122 x Saher-06 (68.2%). Genetic diversity between the wheat genotypes ranged from 17.4 to 70.3 percent as revealed by using twenty three (SSRs) markers. Confirmation of twenty five hybrids was also verified using SSRs. The information acquired from these results during the current studies may be used to develop high yielding and more nutritive varieties which can produce economic yield.
Loading...
Loading...

Similar Books

Loading...

Similar Chapters

Loading...

Similar News

Loading...

Similar Articles

Loading...

Similar Article Headings

Loading...

آغا محمد نعیم

آغا محمد ندیم

ہم اپنی جدو جہد کے ساتھی آغا محمد ندیم کو پاکستان پیپلز پارٹی ڈنمارک کا جنرل سیکریٹری منتخب ہونے پر دلی مبارک باد پیش کرتے ہیں ۔پاکستان پیپلز پارٹی آغا برادران کی مقروض ہے ،جنرل ضیاء الحق کے مارشل لاء کے خلاف اس خاندان کی بے مثال جد وجہد کسی سے ڈھکی چھپی نہیں ۔شاہی قلعہ کے عقو بت خانے ہوں یا پاکستان کی جیلیں یاجلا وطنیاں ہر جگہ یہ ثابت قدمی سے ڈٹے رہے ۔ شکریہ چیئر مین پاکستا ن پیپلز پارٹی۔ اگر پاکستان پیپلز پارٹی کو ایک بار پھر چاروں صوبوں کی زنجیر بنانا ہے تو ایسے بہادر قربانیاں دینے والے جیالوںکو آ گے لانا ہو گا ۔

 

امت مسلمہ کى عالمگیریت قرآنى تعلیمات کى روشنى میں

The spirit of Islam binds Muslims into an Ummah. This bonding of a unique feature of any Muslim Society. As Muslims, we should defy splits or differences within our societies to avoid factions or divisions. There must prevail tolerance peaceful co-existence to promote the universal brotherhood amongst Muslims. Only then, the Muslims may rise to supremacy and lead the nations of the world.

Improving Software Quality Prediction Using Intelligent Computing Techniques

Software Quality Prediction (SQP) has been an area of interest for the last four decades. The aim of quality prediction has been to identify the defect prone modules in software. With the help of SQP the defect prone modules can be identified and thus improved at early stages of software development. SQP is done using models that predict the defect prone modules. These prediction are based on software metrics. Software metrics and defect related information is recorded in form of datasets. These defect datasets contain instances of defect prone and not-defect prone modules. Major motive behind quality prediction is to identify defect prone modules correctly in early phases of development. Imbalanced datasets and late predictions are problems that affect this motive. In most of the datasets, the number of instances of not-defect prone modules dominate the number of instances of defect prone modules. This creates imbalance in the datasets. The defect prone modules are not identified effectively due to the imbalance. Effectively predicting defect prone modules and achieving high Recall using the public datasets becomes a challenging task. Predictions based on code metrics are considered late. Majority of the metrics in the datasets are code metrics which means that accurate predictions can be made once code metrics become available. Another issue in the domain of software quality and metrics is that software metrics used so far have inconsistent nomenclature which makes it difficult to study certain software metrics. In this thesis an association mining (AM) based approach is proposed that improves prediction of defect prone modules. The proposed approach modifies the data in a manner that a prediction model learns defect prone modules better even if there are few instances of defect prone modules. We use Recall to measure performance of the model developed after proposed preprocessing. The issue of late predictions has been handled by using a model which can work with imprecise values of software metrics. This thesis proposes a Fuzzy Inference System (FIS) based model that helps predict defect prone modules when exact values of code metrics are not available. To handle the issue of inconsistent nomenclature this thesis provides a unification and categorization framework that works on the principle of chronological use of metric names. The framework has been used to identify same metrics with different names as well as different metrics with same name. The association mining based approach has been tested using public datasets and Naive Bayes classifier. Naive Bayes classifier is the simplest and is considered as one of the best performers. The proposed approach has increased Recall of the Naive Bayes classifier upto 40%. Performance of the proposed Fuzzy Inference System (FIS), used to handle the issue of late predictions, has been compared with models like neural networks, classification trees, and linear regression based classifiers. The FIS model has performed as good as other models. Upto 10% improvement in Recall has been observed in case of FIS model. The nomenclature unification of approximately 140 metrics has been done using the proposed unification framework. Out of these 140 metrics approximately 6% different metrics have been used with same name in literature. Their naming issues have been resolved based on the chronological use of the names. Achieving better Recall using the proposed approach can help avoid costs incurred due to identification of a defect prone module late in software lifecycle when cost of fixing defects becomes higher. The proposed FIS model can be used for earlier rough estimates initially. Later, better and accurate estimates can be made when code metrics become available.