Automatic discovery of drug mode of action and drug repositioning from gene expression data
Abstract
The identification of the molecular pathway that is targeted by a compound,
combined with the dissection of the following reactions in the cellular environment,
i.e. the drug mode of action, is a key challenge in biomedicine.
Elucidation of drug mode of action has been attempted, in the past, with
different approaches. Methods based only on transcriptional responses are
those requiring the least amount of information and can be quickly applied
to new compounds. On the other hand, they have met with limited success
and, at the present, a general, robust and efficient gene-expression based
method to study drugs in mammalian systems is still missing.
We developed an efficient analysis framework to investigate the mode of
action of drugs by using gene expression data only. Particularly, by using
a large compendium of gene expression profiles following treatments with
more than 1,000 compounds on different human cell lines, we were able
to extract a synthetic consensual transcriptional response for each of the
tested compounds. This was obtained by developing an original rank merging
procedure. Then, we designed a novel similarity measure among the
transcriptional responses to each drug, endingending up with a “drug similarity
network”, where each drug is a node and edges represent significant
similarities between drugs.
By means of a novel hierarchical clustering algorithm, we then provided
this network with a modular topology, contanining groups of highly interconnected
nodes (i.e. network communities) whose exemplars form secondlevel
modules (i.e. network rich-clubs), and so on. We showed that these
topological modules are enriched for a given mode of action and that the
hierarchy of the resulting final network reflects the different levels of similarities
among the composing compound mode of actions.
Most importantly, by integrating a novel drug X into this network (which
can be done very quickly) the unknown mode of action can be inferred by
studying the topology of the subnetwork surrounding X. Moreover, novel
potential therapeutic applications can be assigned to safe and approved
drugs, that are already present in the network, by studying their neighborhood
(i.e. drug repositioning), hence in a very cheap, easy and fast way,
without the need of additional experiments.
By using this approach, we were able to correctly classify novel anti-cancer
compounds; to predict and experimentally validate an unexpected similarity
in the mode of action of CDK2 inhibitors and TopoIsomerase inhibitors
and to predict that Fasudil, a known and FDA-approved cardiotonic agent,
could be repositioned as novel enhancer of cellular autophagy.
Due to the extremely safe profile of this drug and its potential ability to
traverse the blood-brain barrier, this could have strong implications in the
treatment of several human neurodegenerative disorders, such as Huntington
and Parkinson diseases. [edited by author]