Next, a number of loop models are generated from
loopmodel.loop.starting_model to loopmodel.loop.ending_model. Each
takes the initial loop conformation
and randomizes it by
in each of the Cartesian directions. The
model is then optimized thoroughly twice, firstly considering only the
loop atoms and secondly with these atoms ``feeling'' the rest of the
system. The loop optimization relies on an atomistic distance-dependent
statistical potential of mean force for nonbond
interactions [Melo & Feytmans, 1997]. This classifies all amino acid atoms into one
of 40 atom classes
(as defined in $LIB/atmcls-melo.lib) and applies a potential as
MODELLER cubic spline restraints (as defined in $LIB/melo-dist1.lib).
No homology-derived restraints are used during this procedure.
Each loop model is written out with the .BL extension.
For more information, please consult the loop modeling paper [Fiser et al., 2000] or look at the loop modeling class itself in modlib/modeller/automodel/loopmodel.py.