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arxiv: 1807.03674 · v1 · pith:5LYT5NC5new · submitted 2018-07-10 · 💻 cs.CL

IAM at CLEF eHealth 2018: Concept Annotation and Coding in French Death Certificates

classification 💻 cs.CL
keywords taskwereapproachcertificateschallengeclefdeathehealth
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In this paper, we describe the approach and results for our participation in the task 1 (multilingual information extraction) of the CLEF eHealth 2018 challenge. We addressed the task of automatically assigning ICD-10 codes to French death certificates. We used a dictionary-based approach using materials provided by the task organizers. The terms of the ICD-10 terminology were normalized, tokenized and stored in a tree data structure. The Levenshtein distance was used to detect typos. Frequent abbreviations were detected by manually creating a small set of them. Our system achieved an F-score of 0.786 (precision: 0.794, recall: 0.779). These scores were substantially higher than the average score of the systems that participated in the challenge.

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