AI Article Synopsis

  • * This research aims to create a notes de-identification and adjudication framework specifically designed for narrative free-text notes, simplifying the process for clinical research without needing extra HIPAA approval.
  • * The developed system uses natural language processing and REDCap for verification, enabling researchers to effectively search and visualize over 45 million de-identified clinical notes at an enterprise level.

Article Abstract

Patient privacy is a major concern when allowing data sharing and the flow of health information. Hence, de-identification and anonymization techniques are used to ensure the protection of patient health information while supporting the secondary uses of data to advance the healthcare system and improve patient outcomes. Several de-identification tools have been developed for free-text, however, this research focuses on developing notes de-identification and adjudication framework that has been tested for i2b2 searches. The aim is to facilitate clinical notes research without an additional HIPAA approval process or consent by a clinician or patient especially for narrative free-text notes such as physician and nursing notes. In this paper, we build a scalable, accurate, and maintainable pipeline for notes de-identification utilizing the natural language processing and REDCap database as a method of adjudication verification. The system is deployed at an enterprise-scale where researchers can search and visualize over 45 million de-identified notes hosted in an i2b2 instance.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9285160PMC

Publication Analysis

Top Keywords

natural language
8
language processing
8
clinical notes
8
notes de-identification
8
notes
7
de-identification
5
processing enterprise-scale
4
enterprise-scale de-identification
4
de-identification protected
4
protected health
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!