Friday, July 28, 2017

2 methods to de-identify large patient datasets greatly reduced risk of re-identification

Two de-identification methods, k-anonymization and adding a 'fuzzy factor,' significantly reduced the risk of re-identification of patients in a dataset of 5 million patient records from a large cervical cancer screening program in Norway.
https://www.sciencedaily.com/releases/2017/07/170728092600.htm