2017
DOI: 10.1101/119834
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From word models to executable models of signaling networks using automated assembly

Abstract: Word models (natural language descriptions of molecular mechanisms) are a common currency in spoken and written communication in biomedicine but are of limited use in predicting the behavior of complex biological networks. We present an approach to building computational models directly from natural language using automated assembly. Molecular mechanisms described in simple English are read by natural language processing algorithms, converted into an intermediate representation and assembled into executable or… Show more

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Cited by 49 publications
(88 citation statements)
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References 105 publications
(142 reference statements)
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“…The GeneWalk applications in this study used the INDRA 15,16 and Pathway Commons 14 knowledge bases which enable automated assembly of a GeneWalk network. Although these databases are optimized for human genes, we show that when mouse genes can be mapped unambiguously to their human orthologues, a network can still be assembled.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…The GeneWalk applications in this study used the INDRA 15,16 and Pathway Commons 14 knowledge bases which enable automated assembly of a GeneWalk network. Although these databases are optimized for human genes, we show that when mouse genes can be mapped unambiguously to their human orthologues, a network can still be assembled.…”
Section: Discussionmentioning
confidence: 99%
“…We calculated the log-likelihood ratio in Python and utilized the scipy.stats.chi2.sf function to determine the p-value of our test statistic. 15,16 or Pathway Commons 14,21 knowledge base, all molecular reactions in which these genes are involved, are retrieved and assembled in a condition-specific gene regulatory network, to which GO ontology and annotations are then connected. Through network representation learning, each gene and GO term can be represented as vectors, suitable for similarity significance testing.…”
Section: Likelihood Ratio Test For Uniform Distribution Of Similar Gomentioning
confidence: 99%
“…In addition to the core Java-based Paxtools library, programming libraries in other languages commonly used by computational biologists, including R (34) and Python (35) , have been developed by the PC team and the community. These packages enable users to access content in BioPAX and act as clients for the PC web service.…”
Section: Tools For Querying and Visualizing Pathway Commons Data Usinmentioning
confidence: 99%
“…A clearly defined set of best practices can facilitate this process, similarly to protocols for construction of biomodels [27]. External resources like Gene2Disease or MalaCards, and tools like Integrated Network and Dynamical Reasoning Assembler (INDRA) [28][29][30] can help in organizing and referencing the disease-related knowledge integrated into a map.…”
Section: Biocuration and Knowledge Representation Standardsmentioning
confidence: 99%