Prescott Klassen


2016

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Annotating and Detecting Medical Events in Clinical Notes
Prescott Klassen | Fei Xia | Meliha Yetisgen
Proceedings of the Tenth International Conference on Language Resources and Evaluation (LREC'16)

Early detection and treatment of diseases that onset after a patient is admitted to a hospital, such as pneumonia, is critical to improving and reducing costs in healthcare. Previous studies (Tepper et al., 2013) showed that change-of-state events in clinical notes could be important cues for phenotype detection. In this paper, we extend the annotation schema proposed in (Klassen et al., 2014) to mark change-of-state events, diagnosis events, coordination, and negation. After we have completed the annotation, we build NLP systems to automatically identify named entities and medical events, which yield an f-score of 94.7% and 91.8%, respectively.

2015

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Annotation of Clinically Important Follow-up Recommendations in Radiology Reports
Meliha Yetisgen | Prescott Klassen | Lucas McCarthy | Elena Pellicer | Tom Payne | Martin Gunn
Proceedings of the Sixth International Workshop on Health Text Mining and Information Analysis

2014

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Annotating Clinical Events in Text Snippets for Phenotype Detection
Prescott Klassen | Fei Xia | Lucy Vanderwende | Meliha Yetisgen
Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14)

Early detection and treatment of diseases that onset after a patient is admitted to a hospital, such as pneumonia, is critical to improving and reducing costs in healthcare. NLP systems that analyze the narrative data embedded in clinical artifacts such as x-ray reports can help support early detection. In this paper, we consider the importance of identifying the change of state for events - in particular, clinical events that measure and compare the multiple states of a patient’s health across time. We propose a schema for event annotation comprised of five fields and create preliminary annotation guidelines for annotators to apply the schema. We then train annotators, measure their performance, and finalize our guidelines. With the complete guidelines, we then annotate a corpus of snippets extracted from chest x-ray reports in order to integrate the annotations as a new source of features for classification tasks.

2012

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Entropy-based Training Data Selection for Domain Adaptation
Yan Song | Prescott Klassen | Fei Xia | Chunyu Kit
Proceedings of COLING 2012: Posters