Publikation
A Case Study on Pros and Cons of Regular Expression Detection and Dependency Parsing for Negation Extraction from German Medical Documents. Technical Report
Hans-Jürgen Profitlich; Daniel Sonntag
Technical Report, BMBF, DFKI Research Reports (RR), Vol. 1, 5/2021.
Zusammenfassung
We describe our work on information extraction in medical documents written in German, especially detecting negations using an architecture based on the UIMA pipeline. Based on our previous work on software modules to cover medical concepts like diagnoses, examinations, etc. we employ a version of the NegEx regular expression algorithm with a large set of triggers as a baseline. We show how a significantly smaller trigger set is sufficient to achieve similar results, in order to reduce adaptation times to new text types. We elaborate on the question whether dependency parsing (based on the Stanford CoreNLP model) is a good alternative and describe the potentials and shortcomings of both approaches.
Projekte
- KDI - Klinische Datenintelligenz
- pAItient - Innovationszentrum mit integrierter, rechtssicherer Umgebung zur Entwicklung, Testung, und klinischen Bewertung Kl-basierter Anwendungen.