An Evolutionary Approach to the Annotation of Discharge Summaries.

Abstract:

We here describe the evolution of annotation guidelines for major clinical named entities, namely Diagnosis, Findings and Symptoms, on a corpus of approximately 1,000 German discharge letters. Due to their intrinsic opaqueness and complexity, clinical annotation tasks require continuous guideline tuning, beginning from the initial definition of crucial entities and the subsequent iterative evolution of guidelines based on empirical evidence. We describe rationales for adaptation, with focus on several metrical criteria and task-centered clinical constraints.

PubMed ID: 32570340

Projects: SMITH - Smart Medical Information Technology for Healthcare

Publication type: InProceedings

Journal: Stud Health Technol Inform

Human Diseases: No Human Disease specified

Citation: Stud Health Technol Inform. 2020 Jun 16;270:28-32. doi: 10.3233/SHTI200116.

Date Published: 16th Jun 2020

Registered Mode: by PubMed ID

Authors: C. Lohr, L. Modersohn, J. Hellrich, T. Kolditz, U. Hahn

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Created: 7th Sep 2020 at 13:26

Last updated: 30th Jan 2023 at 11:58

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