A Natural Language Processing Approach to Support Biomedical Data Harmonization: Leveraging Large Language Models
Zexu Li, Suraj P. Prabhu, Zachary T. Popp, Shubhi S. Jain, Vijetha, Balakundi, Ting Fang Alvin Ang, Rhoda Au, Jinying Chen

TL;DR
This study develops and evaluates large language model-based and ensemble learning methods to automate variable matching in biomedical datasets, significantly improving accuracy over traditional approaches.
Contribution
Introduces a novel ensemble learning approach combining LLM and fuzzy matching for automated variable matching in biomedical data harmonization.
Findings
RF ensemble outperformed individual NLP methods in matching accuracy
LLM features contributed most to the ensemble's performance
Automatic matching achieved high top-30 hit ratio of 0.98
Abstract
Biomedical research requires large, diverse samples to produce unbiased results. Automated methods for matching variables across datasets can accelerate this process. Research in this area has been limited, primarily focusing on lexical matching and ontology based semantic matching. We aimed to develop new methods, leveraging large language models (LLM) and ensemble learning, to automate variable matching. Methods: We utilized data from two GERAS cohort (European and Japan) studies to develop variable matching methods. We first manually created a dataset by matching 352 EU variables with 1322 candidate JP variables, where matched variable pairs were positive and unmatched pairs were negative instances. Using this dataset, we developed and evaluated two types of natural language processing (NLP) methods, which matched variables based on variable labels and definitions from data…
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Taxonomy
TopicsMachine Learning in Healthcare · Biomedical Text Mining and Ontologies · Topic Modeling
MethodsOntology
