HealthcareNLP: where are we and what is next?
Lifeng Han, Paul Rayson, Suzan Verberne, Andrew Moore, Goran Nenadic

TL;DR
This tutorial reviews the current state of HealthcareNLP, highlighting achievements, challenges, and future directions across data management, NLP tasks, and patient engagement, with practical hands-on applications.
Contribution
It provides a comprehensive overview of HealthcareNLP, including overlooked tasks, methodologies, and future challenges, serving as an introductory guide for practitioners and researchers.
Findings
Identifies key tasks and methodologies in HealthcareNLP.
Highlights challenges like privacy, explainability, and integration.
Includes practical applications and hands-on sessions.
Abstract
This proposed tutorial focuses on Healthcare Domain Applications of NLP, what we have achieved around HealthcareNLP, and the challenges that lie ahead for the future. Existing reviews in this domain either overlook some important tasks, such as synthetic data generation for addressing privacy concerns, or explainable clinical NLP for improved integration and implementation, or fail to mention important methodologies, including retrieval augmented generation and the neural symbolic integration of LLMs and KGs. In light of this, the goal of this tutorial is to provide an introductory overview of the most important sub-areas of a patient- and resource-oriented HealthcareNLP, with three layers of hierarchy: data/resource layer: annotation guidelines, ethical approvals, governance, synthetic data; NLP-Eval layer: NLP tasks such as NER, RE, sentiment analysis, and linking/coding with…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Topic Modeling · Machine Learning in Healthcare
