We have investigated the question of how CO ligands bind to iron
in metalloporphyrins and
metalloproteins by using a combination of nuclear magnetic resonance
(NMR), 57Fe Mössbauer, and infrared
spectroscopic techniques, combined with density functional theoretical
calculations to analyze the spectroscopic
results. The results of 13C NMR isotropic chemical
shift, 13C NMR chemical shift anisotropy, 17O
NMR
isotropic chemical shift, 17O nuclear quadrupole coupling
constant, 57Fe NMR isotropic chemical shift,
57Fe
Mössbauer quadrupolar splitting, and infrared measurements
indicate that CO binds to Fe in a close to linear
fashion in all conformational substates. The
13C-isotropic shift and shift anisotropy for an
Ao substate model
compound:
Fe(5,10,15,20-tetraphenylporphyrin)(CO)(N-methylimidazole),
as well as the 17O chemical shift,
and the 17O nuclear quadrupole coupling constant (NQCC) are
virtually the same as those found in the Ao
substate of Physeter catodon CO myoglobin and lead to most
probable ligand tilt (τ) and bend (β) angles of
0° and 1° when using a Bayesian probability or Z surface
method for structure determination. The infrared
νCO for the model compound of 1969
cm-1 is also that found for Ao
proteins. Results for the A1 substate
(including the 57Fe NMR chemical shift and
Mössbauer quadrupole splitting) are also consistent with close
to
linear and untilted Fe−C−O geometries (τ = 4°, β = 7°),
with the small changes in ligand spectroscopic
parameters being attributed to electrostatic field effects. When
taken together, the 13C shift, 13C shift
anisotropy,
17O shift, 17O NQCC, 57Fe
shift, 57Fe Mössbauer quadrupole splitting, and
νCO all strongly indicate very close
to linear and untilted Fe−C−O geometries for all carbonmonoxyheme
proteins. These results represent the
first detailed quantum chemical analysis of metal−ligand geometries
in metalloproteins using up to seven
different spectroscopic observables from three types of spectroscopy
and suggest a generalized approach to
structure determination.
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