Title
TEXT2TABLE: medical text summarization system based on named entity recognition and modality identification
Abstract
With the rapidly growing use of electronic health records, the possibility of large-scale clinical information extraction has drawn much attention. It is not, however, easy to extract information because these reports are written in natural language. To address this problem, this paper presents a system that converts a medical text into a table structure. This system's core technologies are (1) medical event recognition modules and (2) a negative event identification module that judges whether an event actually occurred or not. Regarding the latter module, this paper also proposes an SVM-based classifier using syntactic information. Experimental results demonstrate empirically that syntactic information can contribute to the method's accuracy.
Year
Venue
Keywords
2009
BioNLP@HLT-NAACL
svm-based classifier,medical event recognition module,electronic health record,syntactic information,large-scale clinical information extraction,modality identification,medical text,entity recognition,latter module,medical text summarization system,core technology,negative event identification module
Field
DocType
Citations 
Computer science,Natural language processing,Artificial intelligence,Classifier (linguistics),Syntax,Event recognition,Automatic summarization,Support vector machine,Speech recognition,Information extraction,Natural language,Named-entity recognition,Machine learning
Conference
19
PageRank 
References 
Authors
1.23
12
6
Name
Order
Citations
PageRank
Eiji Aramaki137145.89
Yasuhide Miura2443.23
Masatsugu Tonoike3504.76
Tomoko Ohkuma49715.49
Hiroshi Mashuichi5191.23
Kazuhiko Ohe611515.91