A study of deep learning methods for de-identification of clinical notes in cross-institute settings

BACKGROUND: De-identification is a critical technology to facilitate the use of unstructured clinical text while protecting patient privacy and confidentiality. The clinical natural language processing (NLP) community has invested great efforts in developing methods and corpora for de-identification of clinical notes. These annotated corpora are valuable resources for developing automated systems to de-identify clinical text at local hospitals. However, existing studies often utilized training and test data collected from the same institution. There are few studies to explore automated de-identification under cross-institute settings. The goal of this study is to examine deep learning-based de-identification methods at a cross-institute setting, identify the bottlenecks, and provide potential solutions.

METHODS: We created a de-identification corpus using a total 500 clinical notes from the University of Florida (UF) Health, developed deep learning-based de-identification models using 2014 i2b2/UTHealth corpus, and evaluated the performance using UF corpus. We compared five different word embeddings trained from the general English text, clinical text, and biomedical literature, explored lexical and linguistic features, and compared two strategies to customize the deep learning models using UF notes and resources.

RESULTS: Pre-trained word embeddings using a general English corpus achieved better performance than embeddings from de-identified clinical text and biomedical literature. The performance of deep learning models trained using only i2b2 corpus significantly dropped (strict and relax F1 scores dropped from 0.9547 and 0.9646 to 0.8568 and 0.8958) when applied to another corpus annotated at UF Health. Linguistic features could further improve the performance of de-identification in cross-institute settings. After customizing the models using UF notes and resource, the best model achieved the strict and relaxed F1 scores of 0.9288 and 0.9584, respectively.

CONCLUSIONS: It is necessary to customize de-identification models using local clinical text and other resources when applied in cross-institute settings. Fine-tuning is a potential solution to re-use pre-trained parameters and reduce the training time to customize deep learning-based de-identification models trained using clinical corpus from a different institution.

Medienart:

E-Artikel

Erscheinungsjahr:

2019

Erschienen:

2019

Enthalten in:

Zur Gesamtaufnahme - volume:19

Enthalten in:

BMC medical informatics and decision making - 19(2019), Suppl 5 vom: 05. Dez., Seite 232

Sprache:

Englisch

Beteiligte Personen:

Yang, Xi [VerfasserIn]
Lyu, Tianchen [VerfasserIn]
Li, Qian [VerfasserIn]
Lee, Chih-Yin [VerfasserIn]
Bian, Jiang [VerfasserIn]
Hogan, William R [VerfasserIn]
Wu, Yonghui [VerfasserIn]

Links:

Volltext

Themen:

Cross institutions
De-identification
Deep learning
EHR
Journal Article
Protected health information
Research Support, N.I.H., Extramural

Anmerkungen:

Date Completed 30.06.2020

Date Revised 30.06.2020

published: Electronic

Citation Status MEDLINE

doi:

10.1186/s12911-019-0935-4

funding:

Förderinstitution / Projekttitel:

PPN (Katalog-ID):

NLM304032638