Search or add a thesis

Advanced Search (Beta)
Home > Detection of Norfloxacin Residues in Broiler Meat Using High Performance Liquid Chromatography

Detection of Norfloxacin Residues in Broiler Meat Using High Performance Liquid Chromatography

Thesis Info

Author

Bushra Ijaz

Department

Deptt. of Biochemistry, QAU.

Program

Mphil

Institute

Quaid-i-Azam University

Institute Type

Public

City

Islamabad

Province

Islamabad

Country

Pakistan

Thesis Completing Year

2007

Thesis Completion Status

Completed

Page

viii, 67

Subject

Biochemistry

Language

English

Other

Call No: DISS/M.Phil BIO/1740

Added

2021-02-17 19:49:13

Modified

2023-02-19 12:33:56

ARI ID

1676715768455

Similar


Loading...
Loading...

Similar Books

Loading...

Similar Chapters

Loading...

Similar News

Loading...

Similar Articles

Loading...

Similar Article Headings

Loading...

ڈاکٹر ہادی حسن

ڈاکٹر ہادی حسن
افسوس ہے پچھلے دنوں علی گڑھ میں ڈاکٹر ہادی حسن کابھی انتقال ہوگیا۔ مرحوم مسلم یونیورسٹی میں فارسی کے بڑے دیرینہ پروفیسر تھے،انگریزی اورفارسی دونوں زبانوں کے بڑے خوش بیان مقرر اورفارسی شعروادب کے نامور محقق تھے، حافظہ بلاکاتھا ،کسی کتاب کے صفحہ کے صفحہ بلا تکلف اپنی یاد سے پڑھ دیتے تھے۔ مسلم یونیورسٹی کے علاوہ ملک کی دوسری یونیورسٹیوں میں بھی ان کے علم وفضل اور تقریر وخطابت کی دھوم تھی۔ متعدد بلند پایہ کتابوں اورمقالات کے مصنف تھے۔ان کے فیضِ تعلیم وتربیت نے سینکڑوں نوجوانوں کو علم و فن کااستاذ اورماہر بنا دیا۔ بیوی کی وفات اور یونیورسٹی کی ملازمت سے سبکدوش ہونے کے بعد بالکل گوشہ نشین اورزندگی سے بیزار ہوگئے تھے،مگر مطالعہ اور تصنیف وتالیف کا شغل پھر بھی جاری تھا۔خوداُن کاذاتی کتب خانہ بڑی تعداد میں اہم اوربعض نادرالوجودکتابوں پر مشتمل ہے۔اﷲ تعالیٰ مغفرت ورحمت سے نوازے!
[جون۱۹۶۳ء]

 

تدوین و مشتملات ارتھ شاستر

This paper describes that the Kautiliya Athashastra is the oldest and most exhaustive   treatise on the governance and administration of a state. Starting with the bringing up and education of the young prince, it proceeds to the appointment of ministers and the organization and functioning of various state departments, including the setting up of a secret service. It then sets forth a code of civil and criminal law. In the matter of foreign relations, it puts before the ruler the idea of a "Vijigisu" (would be world conqueror) and discusses in great detail the various situations he may have to face in his dealing with foreign states, whether  friendly or inimical, and points out how he should conduct himself in every case so as to achieve his goal.

Investigating Machine Learning Based Prediction of Protein Interactions

Protein interactions are crucial in the cell for performing cellular functions and the study of protein interactions is a very important domain of research in bioinformatics. In reference to protein interactions, biologists are usually interested in three core problems: determining pairwise protein interactions, determination of binding affinity, and identification of the interface. Computational methods to solve these protein interaction problems have emerged as an active research area due to tedious, costly, and time-consuming experimental procedures. Our aim in this work is to develop novel machine learning based methods for protein interaction, binding affinity and interaction prediction with improved generalization performance. In this dissertation, we have developed host-pathogen protein interaction predictors using machine learning. One of our findings is that existing methods for protein interaction prediction that use K-fold cross-validation for performance assessment report over-estimated accuracy values as K-fold cross-validation does not take pairwise protein similarity between training and test examples into account. To control this data redundancy at pathogen protein level, we have proposed and advocated the use of an alternate evaluation scheme called Leave One Pathogen Protein Out (LOPO) cross-validation along with some biologist centric metrics for designing protein-protein interaction prediction methods. We have also designed a novel machine learning model called CaMELS (CalModulin intEraction Learning System) for interaction and interaction site prediction of Calmodulin (CaM) which is a very important and highly conserved protein across all eukaryotes. CaMELS relies on a novel implementation of multiple instance learning solver for protein binding site prediction that leads to significant improvement in predictive performance. One of our collaborators has confirmed the effectiveness of CaMELS through wet-lab experiments as well. We have also focused on the more generic problem of predicting binding affinity in protein interactions and presented various sequence-based machine learning models. xxiv For this purpose, we have developed a novel machine learning method which is based on the framework of Learning Using Privileged Information (LUPI). Our state-of-the-art method uses protein 3D structure as privileged information at training time while expecting only protein sequence information during testing. This makes our machine learning method flexible by allowing it to leverage protein structure information during training while requiring only protein sequence information during testing. We have also developed a webserver for an existing state-of-the-art protein-protein interface prediction method called PAIRPred. The accuracy of this webserver has also been validated by our collaborators through wet-lab experiments as well.