A certified de-identification system for all clinical text documents for information extraction at scale

Author:

Radhakrishnan Lakshmi1,Schenk Gundolf2ORCID,Muenzen Kathleen2,Oskotsky Boris2,Ashouri Choshali Habibeh2,Plunkett Thomas3,Israni Sharat2,Butte Atul J245

Affiliation:

1. Academic Research Services, Information Technology, University of California, San Francisco , San Francisco, California, USA

2. Bakar Computational Health Sciences Institute, University of California, San Francisco , San Francisco, California, USA

3. ArcherHall LLC , Sacramento, California, USA

4. Department of Pediatrics, University of California, San Francisco , San Francisco, California, USA

5. Center for Data-Driven Insights and Innovation, University of California Health , Oakland, California, USA

Abstract

Abstract Objectives Clinical notes are a veritable treasure trove of information on a patient’s disease progression, medical history, and treatment plans, yet are locked in secured databases accessible for research only after extensive ethics review. Removing personally identifying and protected health information (PII/PHI) from the records can reduce the need for additional Institutional Review Boards (IRB) reviews. In this project, our goals were to: (1) develop a robust and scalable clinical text de-identification pipeline that is compliant with the Health Insurance Portability and Accountability Act (HIPAA) Privacy Rule for de-identification standards and (2) share routinely updated de-identified clinical notes with researchers. Materials and Methods Building on our open-source de-identification software called Philter, we added features to: (1) make the algorithm and the de-identified data HIPAA compliant, which also implies type 2 error-free redaction, as certified via external audit; (2) reduce over-redaction errors; and (3) normalize and shift date PHI. We also established a streamlined de-identification pipeline using MongoDB to automatically extract clinical notes and provide truly de-identified notes to researchers with periodic monthly refreshes at our institution. Results To the best of our knowledge, the Philter V1.0 pipeline is currently the first and only certified, de-identified redaction pipeline that makes clinical notes available to researchers for nonhuman subjects’ research, without further IRB approval needed. To date, we have made over 130 million certified de-identified clinical notes available to over 600 UCSF researchers. These notes were collected over the past 40 years, and represent data from 2757016 UCSF patients.

Funder

Marcus Foundation Grant for Precision Medicine

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference17 articles.

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