Abstract

BackgroundAutomatic semantic role labeling (SRL) is a natural language processing (NLP) technique that maps sentences to semantic representations. This technique has been widely studied in the recent years, but mostly with data in newswire domains. Here, we report on a SRL model for identifying the semantic roles of biomedical predicates describing protein transport in GeneRIFs – manually curated sentences focusing on gene functions. To avoid the computational cost of syntactic parsing, and because the boundaries of our protein transport roles often did not match up with syntactic phrase boundaries, we approached this problem with a word-chunking paradigm and trained support vector machine classifiers to classify words as being at the beginning, inside or outside of a protein transport role.ResultsWe collected a set of 837 GeneRIFs describing movements of proteins between cellular components, whose predicates were annotated for the semantic roles AGENT, PATIENT, ORIGIN and DESTINATION. We trained these models with the features of previous word-chunking models, features adapted from phrase-chunking models, and features derived from an analysis of our data. Our models were able to label protein transport semantic roles with 87.6% precision and 79.0% recall when using manually annotated protein boundaries, and 87.0% precision and 74.5% recall when using automatically identified ones.ConclusionWe successfully adapted the word-chunking classification paradigm to semantic role labeling, applying it to a new domain with predicates completely absent from any previous studies. By combining the traditional word and phrasal role labeling features with biomedical features like protein boundaries and MEDPOST part of speech tags, we were able to address the challenges posed by the new domain data and subsequently build robust models that achieved F-measures as high as 83.1. This system for extracting protein transport information from GeneRIFs performs well even with proteins identified automatically, and is therefore more robust than the rule-based methods previously used to extract protein transport roles.

Highlights

  • IntroductionAutomatic semantic role labeling (SRL) is a natural language processing (NLP) technique that maps sentences to semantic representations

  • Automatic semantic role labeling (SRL) is a natural language processing (NLP) technique that maps sentences to semantic representations, which can be useful for many NLP tasks

  • Protein transport data analysis We constructed a corpus of 837 Gene Reference Into Function (GeneRIF) annotated with protein transport predicates and their AGENT, PATIENT, ORIGIN and DESTINATION roles. (See Methods section for details.) There were some interesting differences between this protein transport data and the more traditional semantic role data of resources like FrameNet and PropBank

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Summary

Introduction

Automatic semantic role labeling (SRL) is a natural language processing (NLP) technique that maps sentences to semantic representations. This technique has been widely studied in the recent years, but mostly with data in newswire domains. We report on a SRL model for identifying the semantic roles of biomedical predicates describing protein transport in GeneRIFs – manually curated sentences focusing on gene functions. Automatic semantic role labeling (SRL) is a natural language processing (NLP) technique that maps sentences to semantic representations, which can be useful for many NLP tasks (e.g. information extraction). Our goal is to accept as input sentences describing biological processes and infer structures like the following:

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