3 research outputs found
Virtual Affinity Fingerprints for Target Fishing: A New Application of Drug Profile Matching
We recently introduced Drug Profile Matching (DPM), a
novel virtual affinity fingerprinting bioactivity prediction method.
DPM is based on the docking profiles of ca. 1200 FDA-approved small-molecule
drugs against a set of nontarget proteins and creates bioactivity
predictions based on this pattern. The effectiveness of this approach
was previously demonstrated for therapeutic effect prediction of drug
molecules. In the current work, we investigated the applicability
of DPM for target fishing, i.e. for the prediction of biological targets
for compounds. Predictions were made for 77 targets, and their accuracy
was measured by Receiver Operating Characteristic (ROC) analysis.
Robustness was tested by a rigorous 10-fold cross-validation procedure.
This procedure identified targets (<i>N</i> = 45) with high
reliability based on DPM performance. These 45 categories were used
in a subsequent study which aimed at predicting the off-target profiles
of currently approved FDA drugs. In this data set, 79% of the known
drug-target interactions were correctly predicted by DPM, and additionally
1074 new drug–target interactions were suggested. We focused
our further investigation on the suggested interactions of antipsychotic
molecules and confirmed several interactions by a review of the literature
Experimental Confirmation of New Drug–Target Interactions Predicted by Drug Profile Matching
We
recently introduced Drug Profile Matching (DPM), a novel affinity
fingerprinting-based in silico drug repositioning approach. DPM is
able to quantitatively predict the complete effect profiles of compounds
via probability scores. In the present work, in order to investigate
the predictive power of DPM, three effect categories, namely, angiotensin-converting
enzyme inhibitor, cyclooxygenase inhibitor, and dopamine agent, were
selected and predictions were verified by literature analysis as well
as experimentally. A total of 72% of the newly predicted and tested
dopaminergic compounds were confirmed by tests on D1 and D2 expressing
cell cultures. 33% and 23% of the ACE and COX inhibitory predictions
were confirmed by in vitro tests, respectively. Dose-dependent inhibition
curves were measured for seven drugs, and their inhibitory constants
(<i>K</i><sub>i</sub>) were determined. Our study overall
demonstrates that DPM is an effective approach to reveal novel drug–target
pairs that may result in repositioning these drugs
Drug Effect Prediction by Polypharmacology-Based Interaction Profiling
Most drugs exert their effects via multitarget interactions, as hypothesized by polypharmacology. While these multitarget interactions are responsible for the clinical effect profiles of drugs, current methods have failed to uncover the complex relationships between them. Here, we introduce an approach which is able to relate complex drug–protein interaction profiles with effect profiles. Structural data and registered effect profiles of all small-molecule drugs were collected, and interactions to a series of nontarget protein binding sites of each drug were calculated. Statistical analyses confirmed a close relationship between the studied 177 major effect categories and interaction profiles of ca. 1200 FDA-approved small-molecule drugs. On the basis of this relationship, the effect profiles of drugs were revealed in their entirety, and hitherto uncovered effects could be predicted in a systematic manner. Our results show that the prediction power is independent of the composition of the protein set used for interaction profile generation