Root mean square deviation of atomic positions

In bioinformatics, the root mean square deviation of atomic positions, or simply root mean square deviation (RMSD), is the measure of the average distance between the atoms (usually the backbone atoms) of superimposed molecules.[1] In the study of globular protein conformations, one customarily measures the similarity in three-dimensional structure by the RMSD of the atomic coordinates after optimal rigid body superposition.

When a dynamical system fluctuates about some well-defined average position, the RMSD from the average over time can be referred to as the RMSF or root mean square fluctuation. The size of this fluctuation can be measured, for example using Mössbauer spectroscopy or nuclear magnetic resonance, and can provide important physical information. The Lindemann index is a method of placing the RMSF in the context of the parameters of the system.

A widely used way to compare the structures of biomolecules or solid bodies is to translate and rotate one structure with respect to the other to minimize the RMSD. Coutsias, et al. presented a simple derivation, based on quaternions, for the optimal solid body transformation (rotation-translation) that minimizes the RMSD between two sets of vectors.[2] They proved that the quaternion method is equivalent to the well-known Kabsch algorithm.[3] The solution given by Kabsch is an instance of the solution of the d-dimensional problem, introduced by Hurley and Cattell.[4] The quaternion solution to compute the optimal rotation was published in the appendix of a paper of Petitjean.[5] This quaternion solution and the calculation of the optimal isometry in the d-dimensional case were both extended to infinite sets and to the continuous case in the appendix A of another paper of Petitjean.[6]

  1. ^ "Molecular docking, estimating free energies of binding, and AutoDock's semi-empirical force field". Sebastian Raschka's Website. 2014-06-26. Retrieved 2016-06-07.
  2. ^ Coutsias EA, Seok C, Dill KA (2004). "Using quaternions to calculate RMSD". J Comput Chem. 25 (15): 1849–1857. doi:10.1002/jcc.20110. PMID 15376254. S2CID 18224579.
  3. ^ Kabsch W (1976). "A solution for the best rotation to relate two sets of vectors". Acta Crystallographica. 32 (5): 922–923. Bibcode:1976AcCrA..32..922K. doi:10.1107/S0567739476001873.
  4. ^ Hurley JR, Cattell RB (1962). "The Procrustes Program: Producing direct rotation to test a hypothesized factor structure". Behavioral Science. 7 (2): 258–262. doi:10.1002/bs.3830070216.
  5. ^ Petitjean M (1999). "On the Root Mean Square quantitative chirality and quantitative symmetry measures" (PDF). Journal of Mathematical Physics. 40 (9): 4587–4595. Bibcode:1999JMP....40.4587P. doi:10.1063/1.532988.
  6. ^ Petitjean M (2002). "Chiral mixtures" (PDF). Journal of Mathematical Physics. 43 (8): 185–192. Bibcode:2002JMP....43.4147P. doi:10.1063/1.1484559.