Abstract

Curation of biomedical literature is often supported by the automatic analysis of textual content that generally involves a sequence of individual processing components. Text mining (TM) has been used to enhance the process of manual biocuration, but has been focused on specific databases and tasks rather than an environment integrating TM tools into the curation pipeline, catering for a variety of tasks, types of information and applications. Processing components usually come from different sources and often lack interoperability. The well established Unstructured Information Management Architecture is a framework that addresses interoperability by defining common data structures and interfaces. However, most of the efforts are targeted towards software developers and are not suitable for curators, or are otherwise inconvenient to use on a higher level of abstraction. To overcome these issues we introduce Argo, an interoperable, integrative, interactive and collaborative system for text analysis with a convenient graphic user interface to ease the development of processing workflows and boost productivity in labour-intensive manual curation. Robust, scalable text analytics follow a modular approach, adopting component modules for distinct levels of text analysis. The user interface is available entirely through a web browser that saves the user from going through often complicated and platform-dependent installation procedures. Argo comes with a predefined set of processing components commonly used in text analysis, while giving the users the ability to deposit their own components. The system accommodates various areas and levels of user expertise, from TM and computational linguistics to ontology-based curation. One of the key functionalities of Argo is its ability to seamlessly incorporate user-interactive components, such as manual annotation editors, into otherwise completely automatic pipelines. As a use case, we demonstrate the functionality of an in-built manual annotation editor that is well suited for in-text corpus annotation tasks.Database URL: http://www.nactem.ac.uk/Argo

Highlights

  • Text mining (TM) is used increasingly to support biomedical knowledge discovery [1,2,3], hypothesis generation [4] and to manage the mass of biological literature [5]

  • TM tools are generally composed of multiple independent processing components bridged together in a pipeline/workflow [7]

  • TM components available for biomedical TM usually come from different sources and lack interoperability

Read more

Summary

Introduction

Text mining (TM) is used increasingly to support biomedical knowledge discovery [1,2,3], hypothesis generation [4] and to manage the mass of biological literature [5]. TM tools are generally composed of multiple independent processing components bridged together in a pipeline/workflow [7]. UIMA defines data representations and interfaces to support interoperability between such processing components. UIMA component repositories usually provide only limited support for building task-oriented systems such as a curation system. Argo incorporates user-interactive processing components designed for a non-technical audience. Argo naturally supports software developers by taking away the burden of having to build peripheral, yet crucial elements of a complete UIMA system, allowing the developers to focus on building individual processing components.

Related work
Findings
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call