Automated Drug-Related Information Extraction from French Clinical
Documents: ReLyfe Approach
- URL: http://arxiv.org/abs/2112.11439v1
- Date: Mon, 29 Nov 2021 22:11:23 GMT
- Title: Automated Drug-Related Information Extraction from French Clinical
Documents: ReLyfe Approach
- Authors: Azzam Alwan, Maayane Attias, Larry Rubin, Adnan El Bakri
- Abstract summary: This paper proposes a new approach for extracting drug-related information from French clinical scanned documents.
It is a combination of a rule-based phase and a Deep Learning approach.
- Score: 0.4588028371034407
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Structuring medical data in France remains a challenge mainly because of the
lack of medical data due to privacy concerns and the lack of methods and
approaches on processing the French language. One of these challenges is
structuring drug-related information in French clinical documents. To our
knowledge, over the last decade, there are less than five relevant papers that
study French prescriptions. This paper proposes a new approach for extracting
drug-related information from French clinical scanned documents while
preserving patients' privacy. In addition, we deployed our method in a health
data management platform where it is used to structure drug medical data and
help patients organize their drug schedules. It can be implemented on any web
or mobile platform. This work closes the gap between theoretical and practical
work by creating an application adapted to real production problems. It is a
combination of a rule-based phase and a Deep Learning approach. Finally,
numerical results show the outperformance and relevance of the proposed
methodology.
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