BIONLP 2023 and Shared Tasks @ ACL 2023
https://aclweb.org/aclwiki/BioNLP_Workshop#SHARED_TASKS_2023
*Tentative* Important Dates(All submission deadlines are 11:59 p.m.
UTC-12:00 “anywhere on Earth”)May 1, 2023: Workshop Paper Due DateJune 15,
2023: Camera-ready papers dueBioNLP 2023 Workshop at ACL, July 13 OR 14,
2023, Toronto, Canada
Please watch for the updates!
SUBMISSION INSTRUCTIONS-----------------------------------------Two types
of submissions are invited: full papers and short papers.
Full papers should not exceed eight (8) pages of text, plus unlimited
references. These are intended to be reports of original research. BioNLP
aims to be the forum for interesting, innovative, and promising work
involving biomedicine and language technology, whether or not yielding high
performance at the moment. This by no means precludes our interest in and
preference for mature results, strong performance, and thorough
evaluation.  Both types of research and combinations thereof are
encouraged.
Short papers may consist of up to four (4) pages of content, plus unlimited
references. Appropriate short paper topics include preliminary results,
application notes, descriptions of work in progress, etc.
Electronic SubmissionSubmissions must be electronic and in PDF format,
using the Softconf START conference management system Submissions need to
be anonymous.
*The submission site will be announced shortly.*
Dual submission policy: papers may NOT be submitted to  the BioNLP 2017
workshop if they are or will be concurrently submitted to another meeting
or publication.

WORKSHOP OVERVIEW AND
SCOPE---------------------------------------------------The BioNLP workshop
associated with the ACL SIGBIOMED special interest group has established
itself as the primary venue for presenting foundational research in
language processing for the biological and medical domains. The workshop is
running every year since 2002 and continues getting stronger. BioNLP
welcomes and encourages work on languages other than English, and inclusion
and diversity. BioNLP truly encompasses the breadth of the domain and
brings together researchers in bio- and clinical NLP from all over the
world. The workshop will continue presenting work on a broad and
interesting range of topics in NLP. The interest to biomedical language has
broadened significantly due to the COVID-19 pandemic and continues to grow:
as access to information becomes easier and more people generate and access
health-related text, it becomes clearer that only language technologies can
enable and support adequate use of the biomedical text.
BioNLP 2023 will be particularly interested in language processing that
supports DEIA (Diversity, Equity, Inclusion and Accessibility). The work on
detection and mitigation of bias and misinformation continues to be of
interest. Research in languages other than English, particularly,
under-represented languages, and health disparities are always of interest
to BioNLP.
Other active areas of research include, but are not limited to:
Tangible results of biomedical language processing applications;Entity
identification and normalization (linking) for a broad range of semantic
categories;Extraction of complex relations and events;Discourse
analysis;Anaphora/coreference resolution;Text mining / Literature based
discovery;Summarization;Τext simplification;Question Answering;Resources
and strategies for system testing and evaluation;Infrastructures and
pre-trained language models for biomedical NLP (Processing and annotation
platforms);Development of synthetic data & data augmentation;Translating
NLP research into practice;Getting reproducible results.
SHARED TASKS 2023-------------------------------------Shared Tasks on
Summarization of Clinical Notes and Scientific Articles
The first task focuses on Clinical Text.
Task 1A. Problem List SummarizationAutomatically summarizing patients’ main
problems from the daily care notes in the electronic health record can help
mitigate information and cognitive overload for clinicians and provide
augmented intelligence via computerized diagnostic decision support at the
bedside. The task of Problem List Summarization aims to generate a list of
diagnoses and problems in a patient’s daily care plan using input from the
provider’s progress notes during hospitalization.This task aims to promote
NLP model development for downstream applications in diagnostic decision
support systems that could improve efficiency and reduce diagnostic errors
in hospitals. This task will contain 768 hospital daily progress notes and
2783 diagnoses in the training set, and a new set of 300 daily progress
notes will be annotated by physicians as the test set. The annotation
methods and annotation quality have previously been reported here. The goal
of this shared task is to attract future research efforts in building NLP
models for real-world decision support applications, where a system
generating relevant and accurate diagnoses will assist the healthcare
providers’ decision-making process and improve the quality of care for
patients.
Task 1B. Radiology report summarizationRadiology report summarization is a
growing area of research. Given the Findings and/or Background sections of
a radiology report, the goal is to generate a summary (called an Impression
section) that highlights the key observations and conclusions of the
radiology study.
The research area of radiology report summarization currently faces an
important limitation: most research is carried out on chest X-rays. To
palliate these limitations, we propose two datasets: A shared summarization
task that includes six different modalities and anatomies, totalling 79,779
samples, based on the MIMIC-III database.A shared summarization task on
chest x-ray radiology reports with images and a brand new out-of-domain
test-set from Stanford.
SEE MORE at: https://vilmedic.app/misc/bionlp23/sharedtask
Task 2. Lay Summarization of Biomedical Research ArticlesBiomedical
publications contain the latest research on prominent health-related
topics, ranging from common illnesses to global pandemics. This can often
result in their content being of interest to a wide variety of audiences
including researchers, medical professionals, journalists, and even members
of the public. However, the highly technical and specialist language used
within such articles typically makes it difficult for non-expert audiences
to understand their contents.
Abstractive summarization models can be used to generate a concise summary
of an article, capturing its salient point using words and sentences that
aren’t used in the original text. As such, these models have the potential
to help broaden access to highly technical documents when trained to
generate summaries that are more readable, containing more background
information and less technical terminology (i.e., a “lay summary”).
This shared task surrounds the abstractive summarization of biomedical
research articles, with an emphasis on controllability and catering to
non-expert audiences. Through this task, we aim to help foster increased
research interest in controllable summarization that helps broaden access
to technical texts and progress toward more usable abstractive
summarization models in the biomedical domain.
For more information, see:
Main site: https://biolaysumm.org/CodaLab page - subtask 1:
https://codalab.lisn.upsaclay.fr/competitions/9541CodaLab page - subtask 2:
https://codalab.lisn.upsaclay.fr/competitions/9544

*Workshop Organizers*  Dina Demner-Fushman, US National Library of
Medicine  Kevin Bretonnel Cohen, University of Colorado School of Medicine
Sophia Ananiadou, National Centre for Text Mining and University of
Manchester, UK  Jun-ichi Tsujii, National Institute of Advanced Industrial
Science and Technology, Japan
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