Join the CT-DEB’26 Shared Task on Predicting Medication Dosing Errors

Date:

Overview

The CT-DEB’26 Shared Task is an open machine learning challenge focused on predicting medication dosing errors in clinical trials. This initiative is part of the CL4Health’26 Workshop at LREC 2026, aiming to enhance the safety and efficiency of clinical trial protocols. Participants are encouraged to submit papers detailing their methodologies, contributing to the collective knowledge in this critical area of healthcare.

Background & Relevance

Medication errors, particularly those related to dosing, pose significant challenges in clinical trials, leading to delays, increased costs, and potential patient harm. The CT-DEB’26 initiative seeks to develop robust and transparent machine learning methods that can proactively identify clinical trial protocols at risk of such errors. By addressing this issue, the task aims to improve patient safety and streamline clinical trial processes, making it a vital endeavor for the AI and healthcare communities.

Key Details

  • Event: CT-DEB’26 Shared Task
  • Workshop: CL4Health’26 at LREC 2026
  • Dataset: ct-dosing-errors-benchmark (available on HuggingFace)
  • Primary Metric: ROC-AUC
  • Submission Platform: CodaBench

Timeline

  • Phase 1:
  • December 1, 2025: Release of training and validation features
  • January 10, 2026: Phase 1 submission deadline
  • January 12, 2026: Validation leaderboard revealed
  • Phase 2:
  • January 13, 2026: Test features release
  • January 27, 2026: Phase 2 submission deadline
  • January 31, 2026: Final leaderboard and code verification requests
  • February 7, 2026: Deadline for responding to code verification

Workshop Paper Submission

  • Paper Submission Deadline: February 18, 2026
  • Notification of Acceptance: March 13, 2026
  • Camera-Ready Deadline: March 20, 2026
  • Workshop Date: May 16, 2026

Eligibility & Participation

The CT-DEB’26 Shared Task is open to all researchers and practitioners interested in machine learning applications in healthcare. It targets individuals and teams from the ML and NLP communities who are keen to contribute to improving clinical trial design and patient outcomes.

Submission or Application Guidelines

Participants must develop predictive models using the ct-dosing-errors-benchmark dataset and submit their results via CodaBench. Code repositories are required for leaderboard eligibility. Participants are also invited to submit short papers summarizing their methodologies to the CL4Health’26 workshop.

More Information

This shared task represents a significant opportunity for researchers to engage with real-world challenges in clinical trials. By leveraging machine learning techniques, participants can contribute to the advancement of safe clinical practices and enhance patient care. The integration of AI in healthcare is crucial for developing innovative solutions that address pressing issues in clinical research.

Conclusion

The CT-DEB’26 Shared Task invites the machine learning and natural language processing communities to collaborate in addressing medication dosing errors in clinical trials. Researchers are encouraged to participate, share their insights, and contribute to this important field of study. Explore the task, engage with the community, and help shape the future of clinical trial safety.


Category: Conferences & Workshops
Tags: machine learning, clinical trials, medication errors, predictive modeling, healthcare, NLP, LREC, CodaBench, data science, clinical research

Share post:

Subscribe

Popular

More like this
Related

Call for Papers: Submit to Academia AI and Applications Journal

Overview Academia AI and Applications invites researchers to submit their...

Postdoctoral Opportunity in World Models and Reinforcement Learning at University of Toronto

Overview This is an exciting opportunity for qualified candidates to...

PhD and Postdoc Opportunities in Data Science at Danish Institutions

Overview The Danish Data Science Academy is offering exciting PhD...

Fully Funded PhD and Postdoc Opportunities in Ecological Neuroscience at TU Darmstadt

Overview The Centre for Cognitive Science at TU Darmstadt is...