Peter Klügl
University of Würzburg
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Publication
Featured researches published by Peter Klügl.
BMC Medical Informatics and Decision Making | 2015
Martin Toepfer; Hamo Corovic; Georg Fette; Peter Klügl; Stefan Störk; Frank Puppe
BackgroundInformation extraction techniques that get structured representations out of unstructured data make a large amount of clinically relevant information about patients accessible for semantic applications. These methods typically rely on standardized terminologies that guide this process. Many languages and clinical domains, however, lack appropriate resources and tools, as well as evaluations of their applications, especially if detailed conceptualizations of the domain are required. For instance, German transthoracic echocardiography reports have not been targeted sufficiently before, despite of their importance for clinical trials. This work therefore aimed at development and evaluation of an information extraction component with a fine-grained terminology that enables to recognize almost all relevant information stated in German transthoracic echocardiography reports at the University Hospital of Würzburg.MethodsA domain expert validated and iteratively refined an automatically inferred base terminology. The terminology was used by an ontology-driven information extraction system that outputs attribute value pairs. The final component has been mapped to the central elements of a standardized terminology, and it has been evaluated according to documents with different layouts.ResultsThe final system achieved state-of-the-art precision (micro average.996) and recall (micro average.961) on 100 test documents that represent more than 90 % of all reports. In particular, principal aspects as defined in a standardized external terminology were recognized with f1=.989 (micro average) and f1=.963 (macro average). As a result of keyword matching and restraint concept extraction, the system obtained high precision also on unstructured or exceptionally short documents, and documents with uncommon layout.ConclusionsThe developed terminology and the proposed information extraction system allow to extract fine-grained information from German semi-structured transthoracic echocardiography reports with very high precision and high recall on the majority of documents at the University Hospital of Würzburg. Extracted results populate a clinical data warehouse which supports clinical research.
international conference on knowledge capture | 2007
Martin Atzmueller; Peter Klügl; Joachim Baumeister; Frank Puppe
This paper presents an approach for rapid knowledge capture using subgroup-discovery techniques. The method enables the acquisition of scoring rules - a knowledge representation that is easy to understand and to maintain. Furthermore, the method features an incremental refinement step that can be applied for fine-tuning of the learned relations. We provide a case study demonstrating the applicability of the presented method using a knowledge base from the biological domain.
LWA | 2008
Martin Atzmüller; Peter Klügl; Frank Puppe
GI-Jahrestagung | 2012
Georg Fette; Maximilian Ertl; Anja Wörner; Peter Klügl; Stefan Störk; Frank Puppe
KI | 2008
Peter Klügl; Martin Atzmüller; Frank Puppe
KESE | 2008
Peter Klügl; Martin Atzmüller; Frank Puppe
UIMA@GSCL | 2013
Andreas Wittek; Martin Toepfer; Georg Fette; Peter Klügl; Frank Puppe
LWA | 2011
Benjamin Eckstein; Peter Klügl; Frank Puppe
LWA | 2011
Georg Fette; Peter Klügl; Maximilian Ertl; Stefan Störk; Frank Puppe
LWA | 2008
Peter Klügl; Martin Atzmüller; Frank Puppe