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CFP MEDDOCAN track 2019 : CFP: Automated named entity and de-identification of medical document shared task: MEDDOCAN track and prize

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Link: http://temu.bsc.es/meddocan
 
When Sep 24, 2019 - Sep 24, 2019
Where Bilbao
Abstract Registration Due May 17, 2019
Submission Deadline May 31, 2019
Notification Due Jun 14, 2019
Final Version Due Jun 28, 2019
Categories    NLP   machine learning   named entity recognition   deep learning
 

Call For Papers

IberLEF/SEPLN: CFP MEDDOCAN track & task prize: named entity recognition and sensitive personal information identification


*** CFP MEDDOCAN track ***
First Medical Document Anonymization
http://temu.bsc.es/meddocan

SEAD – Plan TL Sponsoring Track Awards
Sub-tracks: 1,000€, 500€ and 200€ (first, second, third team)

Task description
Clinical records with protected health information (PHI) cannot be directly shared as is, due to privacy constraints, making it particularly cumbersome to carry out NLP research in the medical domain. A necessary precondition for accessing clinical records outside of hospitals is their de-identification, i.e., the exhaustive removal (or replacement) of all mentioned PHI phrases.

The practical relevance of anonymization or de-identification of clinical texts motivated the proposal of two shared tasks, the 2006 and 2014 de-identification tracks, organized under the umbrella of the i2b2 (i2b2.org) community evaluation effort. The i2b2 effort has deeply influenced the clinical NLP community worldwide, but was focused on documents in English and covering characteristics of US-healthcare data providers.

As part of the IberLEF 2019 (https://sites.google.com/view/iberlef-2019) initiative, we announce the first community challenge task specifically devoted to the anonymization of medical documents in Spanish, called the MEDDOCAN (Medical Document Anonymization) track.

In order to carry out these tasks we have prepared a synthetic corpus of 1000 clinical case studies. This corpus was selected manually by a practicing physician and augmented with PHI information from discharge summaries and medical genetics clinical records.

The MEDDOCAN task will be structured into two sub-tracks:
• NER offset and entity type classification
• Sensitive span detection.

Publications
Teams will be invited to send a workshop proceedings systems description paper, similarly to previous IberEval events.
We plan to invite selected works for full publication in a Q1 Journal – Special Issue devoted to MEDDOCAN. Invitation to the special issue will consider multiple aspects such as performance, novelty of the system, availability of the underlying system (software/web-service) as well as the workshop presentation.


Important Dates
• March 18, 2019: Sample set and Evaluation script released.
• March 20, 2019: Training set released.
• April 4, 2019: Development set released.
• April 29, 2019: Test set released (includes background set).
• May 17, 2019: End of evaluation period (system submissions).
• May 20, 2019: Results posted and Test set with GS annotations released.
• May 31, 2019: Working notes paper submission.
• June 14, 2019: Notification of acceptance (peer-reviews).
• June 28, 2019: Camera ready paper submission.
• September 24, 2019: IberLEF 2019 Workshop, Bilbao Spain


Task organizers
• Aitor Gonzalez-Agirre, Barcelona Supercomputing Center.
• Ander Intxaurrondo, Barcelona Supercomputing Center.
• Jose Antonio Lopez-Martin, Hospital 12 de Octubre.
• Montserrat Marimon, Barcelona Supercomputing Center.
• Felipe Soares, Barcelona Supercomputing Center.
• Marta Villegas, Barcelona Supercomputing Center.
• Martin Krallinger, Barcelona Supercomputing Center.


Scientific committee
• Hercules Dalianis, DSV/Stockholm University, Sweden
• Christoph Dieterich, Klaus-Tschira-Institute for Computational Cardiology, University Hospital Heidelberg, Germany
• Jelena Jacimovic, University of Belgrade, Serbia
• Bradley Malin, Vanderbilt University Medical Center, USA
• Øystein Nytrø, Norwegian University of Science and Technology, Norway
• Patrick Ruch, SIB Text Mining, HES-SO & Swiss Institute of Bioinformatics, Switzerland
• Angus Roberts, King’s College London, UK
• Arturo Romero Gutiérrez, Ministerio de Sanidad, Servicios Sociales e Igualdad, Spain
• Ozlem Uzuner, George Mason University, USA
• Alfonso Valencia, Barcelona Supercomputing Center, Spain





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