International audienceIn France, structured data from emergency room (ER) visits are aggregated at the national level to build a syndromic surveillance system for several health events. For visits motivated by a traumatic event, information on the causes are stored in free-text clinical notes. To exploit these data, an automated de-identification system guaranteeing protection of privacy is required.In this study we review available de-identification tools to de-identify free-text clinical documents in French. A key point is how to overcome the resource barrier that hampers NLP applications in languages other than English. We compare rule-based, named entity recognition, new Transformer-based deep learning and hybrid systems using, when req...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
A major hurdle in the development of natural language processing (NLP) methods for Electronic Health...
International audienceIn France, structured data from emergency room (ER) visits are aggregated at t...
National audienceIn France, structured data on emergency room visits are aggregated at the national ...
Unstructured textual data are at the heart of health systems: liaison letters between doctors, opera...
AbstractBackgroundTo facilitate research applying Natural Language Processing to clinical documents,...
Unstructured textual data are at the heart of health systems: liaison letters between doctors, opera...
International audiencen this paper, we present a comparison of two approaches to automatically de-id...
Abstract. Recent renewed interest in de-identification (also known as “anonymisation”) has led to th...
Unstructured textual data is at the heart of healthcare systems. For obvious privacy reasons, these ...
Background: Text-based patient medical records are a vital resource in medical research. In order to...
International audienceBackground Information related to patient medication is crucial for health car...
Abstract Background The identification of patients who pose an epidemic hazard when they are admitte...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
A major hurdle in the development of natural language processing (NLP) methods for Electronic Health...
International audienceIn France, structured data from emergency room (ER) visits are aggregated at t...
National audienceIn France, structured data on emergency room visits are aggregated at the national ...
Unstructured textual data are at the heart of health systems: liaison letters between doctors, opera...
AbstractBackgroundTo facilitate research applying Natural Language Processing to clinical documents,...
Unstructured textual data are at the heart of health systems: liaison letters between doctors, opera...
International audiencen this paper, we present a comparison of two approaches to automatically de-id...
Abstract. Recent renewed interest in de-identification (also known as “anonymisation”) has led to th...
Unstructured textual data is at the heart of healthcare systems. For obvious privacy reasons, these ...
Background: Text-based patient medical records are a vital resource in medical research. In order to...
International audienceBackground Information related to patient medication is crucial for health car...
Abstract Background The identification of patients who pose an epidemic hazard when they are admitte...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
A major hurdle in the development of natural language processing (NLP) methods for Electronic Health...