Transferability of neural network clinical deidentification systems

Author:

Lee Kahyun1,Dobbins Nicholas J2ORCID,McInnes Bridget3,Yetisgen Meliha2,Uzuner Özlem1

Affiliation:

1. Department of Information Science and Technology, George Mason University, Fairfax, Virginia, USA

2. Department of Biomedical Informatics and Medical Education, University of Washington, Seattle, Washington, USA

3. Department of Computer Science, Virginia Commonwealth University, Richmond, Virginia, USA

Abstract

Abstract Objective Neural network deidentification studies have focused on individual datasets. These studies assume the availability of a sufficient amount of human-annotated data to train models that can generalize to corresponding test data. In real-world situations, however, researchers often have limited or no in-house training data. Existing systems and external data can help jump-start deidentification on in-house data; however, the most efficient way of utilizing existing systems and external data is unclear. This article investigates the transferability of a state-of-the-art neural clinical deidentification system, NeuroNER, across a variety of datasets, when it is modified architecturally for domain generalization and when it is trained strategically for domain transfer. Materials and Methods We conducted a comparative study of the transferability of NeuroNER using 4 clinical note corpora with multiple note types from 2 institutions. We modified NeuroNER architecturally to integrate 2 types of domain generalization approaches. We evaluated each architecture using 3 training strategies. We measured transferability from external sources; transferability across note types; the contribution of external source data when in-domain training data are available; and transferability across institutions. Results and Conclusions Transferability from a single external source gave inconsistent results. Using additional external sources consistently yielded an F1-score of approximately 80%. Fine-tuning emerged as a dominant transfer strategy, with or without domain generalization. We also found that external sources were useful even in cases where in-domain training data were available. Transferability across institutions differed by note type and annotation label but resulted in improved performance.

Funder

National Library of Medicine

National Center for Advancing Translational Sciences of National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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