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Statistical biases due to anonymization evaluated in an open clinical dataset from COVID-19 patients

Authors :
Carolin E M, Koll
Sina M, Hopff
Thierry, Meurers
Chin Huang, Lee
Mirjam, Kohls
Christoph, Stellbrink
Charlotte, Thibeault
Lennart, Reinke
Sarah, Steinbrecher
Stefan, Schreiber
Lazar, Mitrov
Sandra, Frank
Olga, Miljukov
Johanna, Erber
Johannes C, Hellmuth
Jens-Peter, Reese
Fridolin, Steinbeis
Thomas, Bahmer
Marina, Hagen
Patrick, Meybohm
Stefan, Hansch
István, Vadász
Lilian, Krist
Steffi, Jiru-Hillmann
Fabian, Prasser
Jörg Janne, Vehreschild
O, Witzke
Source :
Scientific Data. 9
Publication Year :
2022
Publisher :
Springer Science and Business Media LLC, 2022.

Abstract

Anonymization has the potential to foster the sharing of medical data. State-of-the-art methods use mathematical models to modify data to reduce privacy risks. However, the degree of protection must be balanced against the impact on statistical properties. We studied an extreme case of this trade-off: the statistical validity of an open medical dataset based on the German National Pandemic Cohort Network (NAPKON), which was prepared for publication using a strong anonymization procedure. Descriptive statistics and results of regression analyses were compared before and after anonymization of multiple variants of the original dataset. Despite significant differences in value distributions, the statistical bias was found to be small in all cases. In the regression analyses, the median absolute deviations of the estimated adjusted odds ratios for different sample sizes ranged from 0.01 [minimum = 0, maximum = 0.58] to 0.52 [minimum = 0.25, maximum = 0.91]. Disproportionate impact on the statistical properties of data is a common argument against the use of anonymization. Our analysis demonstrates that anonymization can actually preserve validity of statistical results in relatively low-dimensional data.

Details

ISSN :
20524463
Volume :
9
Database :
OpenAIRE
Journal :
Scientific Data
Accession number :
edsair.doi.dedup.....04e72d1f4c5cc73f0a0af3f7682b1d74