Chapter 8 – Theoretical Biophysics 317
New molecular simulation tools have also been adapted to addressing biological questions
from nonbiological roots. For example, the Ising model of quantum statistical mechanics was
developed to account for emergent properties of ferromagnetism. Here it can also be used to
explain several emergent biological properties, such as modeling phase transition behaviors.
Powerful as they are, however, computer simulations of molecular behavior are only as
good as the fundamental data and the models that go into them. It often pays to take a step
back from the simulation results of all the different tools developed to really see if simulation
predictions make intuitive sense or not. In fact, a core feature to molecular simulations is the
ultimate need for “validation” by experimental tools. That is, when novel emergent behaviors
are predicted from simulation, then it is often prudent to view them with a slightly cynical
eye until experiments have really supported these theoretical findings.
8.2.1 GENERAL PRINCIPLES OF MD
A significant point to note concerning the structure of biomolecules determined using
conventional structural biology tools (see Chapter 5), including not just proteins but also
sugars and nucleic acids, is that biomolecules in a live cell in general have a highly dynamic
structure, which is not adequately rendered in the pages of a typical biochemistry textbook.
Ensemble-average structural determination methods of NMR, x-ray crystallography, and
EM all produce experimental outputs that are biased toward the least dynamic structures.
These investigations are also often performed using high local concentrations of the biomol
ecule in question far in excess to those found in the live cell that may result in tightly packed
conformations (such as crystals) that do not exist naturally. However, the largest mean
average signal measured is related to the most stable state that may not necessarily be the
most probabilistic state in the functioning cell. Also, thermal fluctuations of the biomolecules
due to the bombardment by surrounding water solvent molecules may result in considerable
variability around a mean-average structure. Similarly, different dissolved ions can result in
important differences in structural conformations that are often not recorded using standard
structural biology tools.
MD can model the effects of attractive and repulsive forces due to ions and water
molecules and of thermal fluctuations. The essence of MD is to theoretically determine
the force F experienced by each molecule in the system being simulated in very small time
intervals, typically around 1 fs (i.e., 10−15 s), starting from a predetermined set of atomic
obtained from atomistic level structural biology of usually either x-ray diffraction, NMR (see
Chapter 5), or sometimes homology modeling (discussed later in this chapter). Often, these
starting structures can be further optimized initially using the energy minimization methods
of MS simulations. After setting appropriate boundary conditions of system temperature and
pressure, and the presence of any walls and external forces, the initial velocities of all atoms
in the system are set. If the ith atom from a total of n has a velocity of magnitude Vi and mass
mi, then, at a system temperature T, the equipartition theorem (see Chapter 2) indicates, in
the very simplest ideal gas approximation of noninteracting atoms, that
(8.1)
3
2
2
1
2
nk T
m v
i
n
i
i
B
=
=∑
The variation of individual atomic speeds in this crude ideal gas model is characterized by the
Maxwell–Boltzmann distribution, such that the probability p(vx,i) of atom i having a speed vx
parallel to the x-axis is given by
(8.2)
p v
m v
k T
m v
k T
m
k T
x i
i
x i
i
n
i
x i
i
,
,
,
(
) =
−(
)
−(
)
=
=
∑
exp
/
exp
/
e
B
B
B
2
1
2
2
2
2π
xp
/
exp
/
B
−(
)
=
−(
)
m v
k T
v
i
x i
v
x i
v
,
,
2
2
2
2
2
1
2
2
πσ
πσ