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Web 2.0-Based Crowdsourcing for High-Quality Gold Standard Development in Clinical Natural Language Processing

2013·74 Zitationen·Journal of Medical Internet ResearchOpen Access
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74

Zitationen

7

Autoren

2013

Jahr

Abstract

This study offers three contributions. First, we proved that crowdsourcing is a feasible, inexpensive, fast, and practical approach to collect high-quality annotations for clinical text (when protected health information was excluded). We believe that well-designed user interfaces and rigorous quality control strategy for entity annotation and linking were critical to the success of this work. Second, as a further contribution to the Internet-based crowdsourcing field, we will publicly release the JavaScript and CrowdFlower Markup Language infrastructure code that is necessary to utilize CrowdFlower's quality control and crowdsourcing interfaces for named entity annotations. Finally, to spur future research, we will release the CTA annotations that were generated by traditional and crowdsourced approaches.

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Autoren

Institutionen

Themen

Mobile Crowdsensing and CrowdsourcingArtificial Intelligence in Healthcare and EducationReliability and Agreement in Measurement
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