A STATISTICAL ANALYSIS TO FIND OUT AN APPROPRIATE DOCKING METHOD

Authors

  • Jun M Kalita Department of pharmaceutical Sciences, Dibrugarh University.
  • Surajit K Ghosh
  • Supriya Sahu
  • Mayurakhi Dutta

Abstract

Objective: The objective of the study was to determine a suitable and reliable docking protocol based on a statistical study.
Methods: Statistical analysis was done to find out the co-relation between in-silico and in-vitro results.
Results: All the docking method shown acceptable root mean square deviation (RMSD) value those were found to be less than that of 2 Ã…. Coefficient
of co-relation value was also quite satisfactory with highest of r = 0.6574 and rs=0.8322 for LigandFit.
Conclusion: Among the three docking method used for the study, LigandFit was found to be more appropriate as it shown low RMSD and high
co‑relation coefficient.

Keywords: Dihydrofolate reductase, 1J3I, LigandFit, CDOCKER, Gold, Karl Pearson's coefficient of correlation, Spearman's rank correlation (rs).

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Author Biography

Jun M Kalita, Department of pharmaceutical Sciences, Dibrugarh University.

reserch scholar, Department of pharm sciences, dibrugarh university, assam

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Published

01-01-2015

How to Cite

Kalita, J. M., S. K. Ghosh, S. Sahu, and M. Dutta. “A STATISTICAL ANALYSIS TO FIND OUT AN APPROPRIATE DOCKING METHOD”. Asian Journal of Pharmaceutical and Clinical Research, vol. 8, no. 1, Jan. 2015, pp. 158-60, https://journals.innovareacademics.in/index.php/ajpcr/article/view/2750.

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