Q.27 Which one of the following is used for global alignment of two protein sequences?
(A) Chou–Fasman method
(B) Garnier–Osguthorpe–Robson (GOR) method
(C) Needleman–Wunsch algorithm
(D) Smith–Waterman algorithm
Needleman-Wunsch Algorithm for Global Alignment of Protein Sequences
The correct answer to the question is (C) Needleman-Wunsch algorithm, as it performs global alignment of two protein sequences by finding the optimal alignment across their entire lengths using dynamic programming.
Option Analysis
Chou-Fasman method predicts protein secondary structures like alpha-helices and beta-sheets based on amino acid propensities, not sequence alignment.
Garnier-Osguthorpe-Robson (GOR) method also focuses on secondary structure prediction through statistical analysis of sequence windows.
Needleman-Wunsch algorithm uses a scoring matrix and traceback to align entire sequences end-to-end, ideal for global protein comparisons.
Smith-Waterman algorithm handles local alignments by identifying the highest-scoring subsequences, differing from global methods.
Introduction to Sequence Alignment
Global alignment of two protein sequences compares entire proteins to reveal evolutionary relationships and functional similarities. The Needleman-Wunsch algorithm excels here by optimizing matches across full lengths.
Detailed Algorithm Breakdown
Needleman-Wunsch employs dynamic programming with a matrix where each cell scores alignment possibilities, penalizing gaps. Traceback from the bottom-right yields the best global alignment path.
Why Other Methods Fail
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Chou-Fasman and GOR predict secondary structures, analyzing local propensities rather than pairwise alignments.
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Smith-Waterman suits local alignments for similar domains within dissimilar sequences.
Exam Relevance
In competitive exams like IIT JAM or GATE Biotechnology, distinguishing global (Needleman-Wunsch) from local (Smith-Waterman) alignment is crucial for bioinformatics sections.


