(Apologies for cross-posting) Call for Participation DISTEMIST Shared Task (CLEF 2022)
Detection and normalization of diseases mentions https://temu.bsc.es/distemist/ DISTEMIST is the first track focusing specifically on the automatic detection of disease mentions and their normalization (Snomed CT) in Spanish clinical case reports. The DISTEMIST data was tested to develop disease taggers previously applied on a diversity of medical records. Key information: - Web: https://temu.bsc.es/distemist/ - Data: https://doi.org/10.5281/zenodo.6408476 - Annotation guidelines: https://doi.org/10.5281/zenodo.6458078 - DISTEMIST gazetteer: https://doi.org/10.5281/zenodo.6458114 - Registration: https://temu.bsc.es/distemist/registration/ Motivation Systems able to detect and normalize disease mentions from medical content are crucial for a diversity of applications such as semantic indexing for improved retrieval/classification, clinical coding, drug-repurposing, relation extraction (disease-symptom, disease-drug/treatment, disease-gene/mutation), etc. It was estimated that around 20% of PubMed queries are related to diseases, disorders, and anomalies, stressing the importance for different users (researchers, clinicians, Pharma, biologists, healthcare practitioners,..) to extract this key information. Disease mention recognition tools are also relevant to process other kinds of content like social media (e.g. SMM4H/COLING2022 track - SocialDisNER). Disease mention detection systems have been implemented and used to process a diversity of content types, including scientific publications, clinical records, clinical trials, patient forums or social media, resulting in a component integrated into a diversity of practically relevant application types, such as: - health data analytics software and study of disease trajectories - disease outbreak monitoring/surveillance and epidemiology tools - extraction of disease phenotype or comorbidities - drug discovery, repurposing and off label indications - occupational health studies - pharmacogenomics - clinical coding of diagnosis The DISTEMIST organizers will release multilingual resources to foster the development of multilingual tools and generate systems not only for Spanish but also for content in English and Romance languages (French, Portuguese, Italian and Romanian): DISTEMIST-English, DISTEMIST-Italian, DISTEMIST-French, DISTEMIST-Portuguese, DISTEMIST-Catalan and DISTEMIST-Romanian. We foresee that participation in the DISTEMIST track will contribute to generate resources that will improve the exploitation of clinical unstructured data and thus unlock valuable health information, assist data curation and facilitate quality evaluation and interpretability of disease mention detection systems. Inspired by previous initiatives (n2c2, BioCreative) and shared tasks (CANTEMIST, PharmaCoNER, or CodiEsp), we are launching the DISTEMIST shared task as part of the BioASQ 2022 evaluation initiative (co-located with CLEF 2022), with the following two sub-tracks: - DISTEMIST-entities: automatic detection of mentions of diseases. - DISTEMIST-linking: finding mentions of diseases and normalizing them to their Snomed-CT concept identifiers. Schedule - DISTEMIST-linking 2nd Training Set Release: April 23th, 2022 - Test Set Release (DISTEMIST-entities and linking): May 10th, 2022 - Participant Test Prediction Due (DISTEMIST-entities and linking): May 15th, 2022 ("Anywhere on Earth") - Working papers submission: May 27th, 2022 - Notification of acceptance (peer-reviews): June 13th, 2022 - Camera-ready system descriptions: July 1st, 2022 - BioASQ @ CLEF 2022: September 2022 Publications and BioASQ/CLEF2022 workshop Teams participating in DISTEMIST will be invited to contribute a systems description paper for the CLEF 2022 Working Notes proceedings (published on CEUR-WS) and a short presentation of their approach at the CLEF 2022 workshop. Main Organizers - Martin Krallinger, Barcelona Supercomputing Center, Spain - Eulàlia Farré-Maduell, Barcelona Supercomputing Center, Spain - Luis Gascó, Barcelona Supercomputing Center, Spain - Anastasios Nentidis, National Center for Scientific Research Demokritos, Greece - Salvador Lima, Barcelona Supercomputing Center, Spain - Antonio Miranda-Escalada, Barcelona Supercomputing Center, Spain -- ======================================= Martin Krallinger, Dr. Head of Biological Text Mining Unit Barcelona Supercomputing Center (BSC-CNS) =======================================
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