Utilization of anonymization techniques to create an external control arm for clinical trial data

Author:

Mehtälä Juha1,Ali Mehreen2,Miettinen Timo2,Partanen Liisa3,Laapas Kaisa3,Niemelä Petri T.3,Khorlo Igor4,Strom Sanna3,Kurki Samu3,Vapalahti Jarno3,Abdelgawwad Khaled4,Leinonen Jussi V.3

Affiliation:

1. MedEngine Oy

2. Veil.AI Oy

3. Bayer Oy

4. Bayer AG

Abstract

Abstract Background Subject-level real-world data (RWD) collected during daily healthcare practices are increasingly used in medical research to assess questions that cannot be addressed in the context of a randomized controlled trial (RCT). A novel application of RWD arises from the need to create external control arms (ECAs) for single-arm RCTs. In the analysis of ECAs against RCT data, there is an evident need to manage and analyze RCT data and RWD in the same technical environment. In the Nordic countries, legal requirements may require that the original subject-level data be anonymized, i.e., modified so that the risk to identify any individual is minimal. The aim of this study was to investigate and compare how well pseudonymized and anonymized RWD perform in the creation of an ECA for an RCT. Methods This was a hybrid observational cohort study using clinical data from the control arm of the completed randomized phase II clinical trial (PACIFIC-AF) and RWD cohort from Finnish healthcare data sources. The initial pseudonymized RWD were anonymized within the (k, ε)-anonymity framework (a model for protecting individuals against identification). Propensity score matching and weighting methods were applied to the anonymized and pseudonymized RWD, to balance potential confounders against the RCT data. Descriptive statistics for the potential confounders and overall survival analyses were conducted prior to and after matching and weighting, using both the pseudonymized and anonymized RWD sets. Results Anonymization affected the baseline characteristics of potential confounders only marginally. The greatest difference was in the prevalence of chronic obstructive pulmonary disease (4.6% vs. 5.4% in the pseudonymized compared to the anonymized data, respectively). Moreover, the overall survival changed in anonymization by only 8% (95% CI 4–22%). Both the pseudonymized and anonymized RWD were able to produce matched ECAs for the RCT data. Anonymization after matching impacted overall survival analysis by 22% (95% CI -21–87%). Conclusions Anonymization is a viable technique for cases where flexible data transfer and sharing are required. However, as anonymization necessarily affects some aspects of the original data, careful consideration of anonymization strategy is recommended.

Publisher

Research Square Platform LLC

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