Mining significant substructure pairs for interpreting polypharmacology in drug-target network.

A current key feature in drug-target network is that drugs often bind to multiple targets, known as polypharmacology or drug promiscuity. Recent literature has indicated that relatively small fragments in both drugs and targets are crucial in forming polypharmacology. We hypothesize that principles...

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Main Authors: Ichigaku Takigawa, Koji Tsuda, Hiroshi Mamitsuka
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3044142?pdf=render
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spelling doaj-eec28f070e074aff90abf091ad7b985f2020-11-24T21:35:43ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0162e1699910.1371/journal.pone.0016999Mining significant substructure pairs for interpreting polypharmacology in drug-target network.Ichigaku TakigawaKoji TsudaHiroshi MamitsukaA current key feature in drug-target network is that drugs often bind to multiple targets, known as polypharmacology or drug promiscuity. Recent literature has indicated that relatively small fragments in both drugs and targets are crucial in forming polypharmacology. We hypothesize that principles behind polypharmacology are embedded in paired fragments in molecular graphs and amino acid sequences of drug-target interactions. We developed a fast, scalable algorithm for mining significantly co-occurring subgraph-subsequence pairs from drug-target interactions. A noteworthy feature of our approach is to capture significant paired patterns of subgraph-subsequence, while patterns of either drugs or targets only have been considered in the literature so far. Significant substructure pairs allow the grouping of drug-target interactions into clusters, covering approximately 75% of interactions containing approved drugs. These clusters were highly exclusive to each other, being statistically significant and logically implying that each cluster corresponds to a distinguished type of polypharmacology. These exclusive clusters cannot be easily obtained by using either drug or target information only but are naturally found by highlighting significant substructure pairs in drug-target interactions. These results confirm the effectiveness of our method for interpreting polypharmacology in drug-target network.http://europepmc.org/articles/PMC3044142?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Ichigaku Takigawa
Koji Tsuda
Hiroshi Mamitsuka
spellingShingle Ichigaku Takigawa
Koji Tsuda
Hiroshi Mamitsuka
Mining significant substructure pairs for interpreting polypharmacology in drug-target network.
PLoS ONE
author_facet Ichigaku Takigawa
Koji Tsuda
Hiroshi Mamitsuka
author_sort Ichigaku Takigawa
title Mining significant substructure pairs for interpreting polypharmacology in drug-target network.
title_short Mining significant substructure pairs for interpreting polypharmacology in drug-target network.
title_full Mining significant substructure pairs for interpreting polypharmacology in drug-target network.
title_fullStr Mining significant substructure pairs for interpreting polypharmacology in drug-target network.
title_full_unstemmed Mining significant substructure pairs for interpreting polypharmacology in drug-target network.
title_sort mining significant substructure pairs for interpreting polypharmacology in drug-target network.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description A current key feature in drug-target network is that drugs often bind to multiple targets, known as polypharmacology or drug promiscuity. Recent literature has indicated that relatively small fragments in both drugs and targets are crucial in forming polypharmacology. We hypothesize that principles behind polypharmacology are embedded in paired fragments in molecular graphs and amino acid sequences of drug-target interactions. We developed a fast, scalable algorithm for mining significantly co-occurring subgraph-subsequence pairs from drug-target interactions. A noteworthy feature of our approach is to capture significant paired patterns of subgraph-subsequence, while patterns of either drugs or targets only have been considered in the literature so far. Significant substructure pairs allow the grouping of drug-target interactions into clusters, covering approximately 75% of interactions containing approved drugs. These clusters were highly exclusive to each other, being statistically significant and logically implying that each cluster corresponds to a distinguished type of polypharmacology. These exclusive clusters cannot be easily obtained by using either drug or target information only but are naturally found by highlighting significant substructure pairs in drug-target interactions. These results confirm the effectiveness of our method for interpreting polypharmacology in drug-target network.
url http://europepmc.org/articles/PMC3044142?pdf=render
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