Abstract:
Early consideration of Absorption, Distribution, Metabolism, Excretion
and Toxicity (ADMET) properties is highly necessitated for the reduction of
high attrition rates associated with new chemical entities (NCEs) during the
later phases of drug development. In addition to the experimtal testing a
plethora of computational methods have been applied to complement the
screening of NCEs with undesirable ADMET properties. The assessment of
ADMET properties and the interactions of NCEs with Cytochrome P450
(CYP450) family of enzymes remains a central constituent of the current drug
discovery process. The CYP450 superfamily of heme containing proteins are a
group of clinically important enzymes that are involved in the metabolism of
structurally diverse endogenous and exogenous compounds with CYP1A2,
CYP2C9, CYP2C19, CYP2D6 and CYP3A4 subtypes playing a major role in
the overall metabolism of currently marketed drugs.
The CYP450 binding site is highly promiscuous allowing the metabolism
of a broader range of structurally diverse chemical entities thus, leading to the
modulation of enzymatic activity through the induction or inhibition of
CYP450 subtype. The induction of CYP450 isoform might lead to an
increased enzymatic activity, reduced efficacy and high clearance however,
the inhibition of CYP medited metabolism might lead to the undesirable drug-
drug interactions and toxicological outcomes. The adverse drug-drug
interactions associated with CYP450s has led to the withdrawal of various
marketed drugs (Seldane, Posicor, Hismanal, Propulsid, Lotronex, Baycol, and
Seraone). Therefore, there is an earnest need for the early categorization of
compounds as inhibitors, substrates and inducers of the CYP subtypes that
would ultimately reduce the drug-drug interactions related adverse outcomes
and result in the overall improvement of the therapeutic profile of a drug .
The major goal of this thesis was to elucidate the physicochemical
properties and drug efficiency metrics for the inhibitors of the major metabolic
enzymes across various activity levels. Herein, we identified a set of highly
efficient inhibitors of the five CYP ( CYP1A2, CYP2C9, CYP2C19, CYP2D6
and CYP3A4) subtypes. We also investigated the binding hypothesis of the
Abstract
selected inhibitors against the specific CYP450 isozymes. Towards this goal,
the refined databases of CYP1A2, CYP2C9, CYP2C19, CYP2D6 and
CYP3A4 inhibitors were collected for which physicochemical descriptors
were calculated, the Lipophilic and Ligand Efficiency profiling was also
performed. Initially, the concept of the drug efficiency was applied to binders
of the true targets but here we apply these to a class of anti-targets the
CYP450s.
The CYP1A2, CYP2C9, CYP2C19, CYP2D6 and CYP3A4 inhibitors with
best potency/lipophilicity and optimal fit within the binding site were
identified as the highly efficient inhibitors that were further used for the
exploration of the binding hypothesis using molecular docking, molecular
dynamics simulations (MD) and binding energy predictions. Results show the
affinities of the selected inhibitors against the CYP450 subtypes and the
contribution of important binding site residues towards the overall
stabilization of the inhibitor bound complexes through the WaterSwap
method. The residue wise decompositions were also visualized which might
provide an additional insight of the binding site residues essential for ligand
binding that might assist in the optimization of leads for the development of
new therapeutic options by increasing the specificity and reducing the adverse
toxicological outcomes.
Additionally, the metabolic attributes of CYP450 substrates were also
explored using the structurally diverse datasets of CYP1A2, CYP2C9,
CYP2C19, CYP2D6 and CYP3A4 substrates. Important parameters including
metabolic stability, intrinsic clearance and lipophilicity were also monitored
for the selected data sets to define meaningful relationships. The metabolic
stability and intrinsic clearance of CYP450 substrates are linked with the
respective lipophilicity (logP or logD) which necessitates the normalization of
lipophilicity (logP or logD) of a given CYP450 substrate with respect to its
metabolic stability (LipMetE) and intrinsic clearance (log;oCLiy yy). Therefore,
the LipMetE values of already known substrates of CYP1A2, CYP2C9,
CYP2C19, CYP2D6 and CYP3A4 including some marketed drugs have been
calculated to elucidate the relationship between lipophilicity (logD74) and in
vitro clearance. Moreover, drug efficiency metrics including Lipophilic
Abstract
Efficiency (LipE) and Ligand Efficiency (LE) have also been evaluated and
the thresholds of these parameters have been defined for the CYP450
substrates exhibiting normalized LipMetE. Our results indicate that for a given
range of LipMetE, greater the logD value of the substrate the more avidly it
will bind to a given CYP450 resulting in more intrinsic clearance
(log10CLincu)- It is obereved that majority of the model substrates of CYP450
isoforms and the already marketed drugs in our data sets exhibit logD74 values
of ~2.5 with LipMetE values in the range of 0-2.5 and LipE values of <3. The
consideration of the studied parameters and optimal property thresholds of
substrates in the ADME profiling could assist in reducing the drug failure rate
in the later stages of clinical investigations. Overall, this work could help in
increasing the therapeutic efficiency of drugs by reducing the adverse
toxicological outcomes ultimately paving the way towards safer drug
development.