Merging and scoring molecular interactions utilising existing community standards: tools, use-cases and a case study
Author(s) -
José Villaveces,
Rafael C. Jiménez,
Pablo Porras,
Noemí delToro,
Margaret Duesbury,
Marine Dumousseau,
Sandra Orchard,
Hongyoon Choi,
Peipei Ping,
Nansu Zong,
Manor Askenazi,
Bianca Habermann,
Henning Hermjakob
Publication year - 2015
Publication title -
database
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.406
H-Index - 62
ISSN - 1758-0463
DOI - 10.1093/database/bau131
Subject(s) - computer science , redundancy (engineering) , suite , data mining , information retrieval , data science , history , archaeology , operating system
The evidence that two molecules interact in a living cell is often inferred from multiple different experiments. Experimental data is captured in multiple repositories, but there is no simple way to assess the evidence of an interaction occurring in a cellular environment. Merging and scoring of data are commonly required operations after querying for the details of specific molecular interactions, to remove redundancy and assess the strength of accompanying experimental evidence. We have developed both a merging algorithm and a scoring system for molecular interactions based on the proteomics standard initiative-molecular interaction standards. In this manuscript, we introduce these two algorithms and provide community access to the tool suite, describe examples of how these tools are useful to selectively present molecular interaction data and demonstrate a case where the algorithms were successfully used to identify a systematic error in an existing dataset.
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