Background: Privacy of information is an increasing concern with the availability of large amounts of data from many individuals. Even when access to data is heavily controlled, and the data shared with researchers contain no personal identifying information, there is a possibility of reidentifying individuals. To avoid reidentification, several anonymization protocols are available. These include categorizing variables into broader categories to ensure more than one individual in each category, such as k-anonymization, as well as protocols aimed at adding noise to the data. However, data custodians rarely assess reidentification risks.Methods: We assessed the reidentification risk of a large realistic dataset based on screening data from over 5 million records on 0.9 million women in the Norwegian Cervical Cancer Screening Program, before and after we used old and new techniques of adding noise (fuzzification) of the data.Results: Categorizing date variables (applying k-anonymization) substantially reduced the possibility of reidentification of individuals. Adding a random factor, such as a fuzzy factor used here, makes it even more difficult to reidentify specific individuals.Conclusions: Our results show that simple techniques can substantially reduce the risk of reidentification.Impact: Registry owners and large-scale data custodians should consider estimating and if necessary, reducing reidentification risks before sharing large datasets. Cancer Epidemiol Biomarkers Prev; 26(8); 1-6. ©2017 AACR.
©2017 American Association for Cancer Research.