Abstract

BackgroundScientific literature carries a wealth of information crucial for research, but only a fraction of it is present as structured information in databases and therefore can be analyzed using traditional data analysis tools. Natural language processing (NLP) is often and successfully employed to support humans by distilling relevant information from large corpora of free text and structuring it in a way that lends itself to further computational analyses. For this pilot, we developed a pipeline that uses NLP on biological literature to produce knowledge networks. We focused on the flesh color of potato, a well-studied trait with known associations, and we investigated whether these knowledge networks can assist us in formulating new hypotheses on the underlying biological processes.ResultsWe trained an NLP model based on a manually annotated corpus of 34 full-text potato articles, to recognize relevant biological entities and relationships between them in text (genes, proteins, metabolites and traits). This model detected the number of biological entities with a precision of 97.65% and a recall of 88.91% on the training set. We conducted a time series analysis on 4023 PubMed abstract of plant genetics-based articles which focus on 4 major Solanaceous crops (tomato, potato, eggplant and capsicum), to determine that the networks contained both previously known and contemporaneously unknown leads to subsequently discovered biological phenomena relating to flesh color. A novel time-based analysis of these networks indicates a connection between our trait and a candidate gene (zeaxanthin epoxidase) already two years prior to explicit statements of that connection in the literature.ConclusionsOur time-based analysis indicates that network-assisted hypothesis generation shows promise for knowledge discovery, data integration and hypothesis generation in scientific research.

Highlights

  • Scientific literature carries a wealth of information crucial for research, but only a fraction of it is present as structured information in databases and can be analyzed using traditional data analysis tools

  • We investigated whether the latent knowledge in scientific literature can be harnessed with Natural language processing (NLP), and if new leads for gene-trait associations can be highlighted for hypothesis generation in a timely manner

  • First, to confirm that our domain-specific NLP model performed as intended and extracted knowledge networks (KNs) with the focus on tuber flesh color from scientific literature, we deployed it on 2 different corpora, i.e. the training set with full-text articles and the test set with PubMed abstracts only

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Summary

Introduction

Scientific literature carries a wealth of information crucial for research, but only a fraction of it is present as structured information in databases and can be analyzed using traditional data analysis tools. Natural language processing (NLP) is often and successfully employed to support humans by distilling relevant information from large corpora of free text and structuring it in a way that lends itself to further computational analyses For this pilot, we developed a pipeline that uses NLP on biological literature to produce knowledge networks. High levels of beta-carotene accumulating in transgenic tubes are not observed in tetraploid potato cultivars [5], alleles contributing to orange flesh have been observed at a low allele frequency in the potato cultivars [4]. This suggests that breeding has selected for the light colored alleles

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