Dr Pascal Berrang BSc

Dr Pascal Berrang

School of Computer Science
Lecturer in Computer Science

Contact details

University of Birmingham
B15 2TT

Dr Pascal Berrang is a lecturer for the School of Computer Science, at the University of Birmingham. His research interests are in the field of IT Security & Privacy with a focus on Health Data, Blockchain Technology, and Artificial Intelligence & Machine Learning.

Please follow the link below to find out more about Pascal's work:

Dr Pascal Berrang - personal webpage


  • PhD in Computer Science (topic: privacy of biomedical data), Saarland University, 2018
  • BSc in Computer Science, Saarland University, 2013


Pascal Berrang qualified with a BSc in computer science at Saarland University in 2013. Subsequently, he joined the Graduate School at Saarland University and became a PhD student in the Information Security and Cryptography Group under supervision of Michael Backes. He submitted his PhD thesis in November 2017 and received his PhD in July 2018 being awarded the highest possible grade “summa cum laude". His PhD thesis has the title "Quantifying and Mitigating Privacy Risks in Biomedical Data" and received the Dr. Eduard-Martin award 2019 for the best PhD thesis in the category in mathematics and computer science.

In 2017, Pascal Berrang started working as a freelance researcher and consultant for the blockchain project Nimiq. In October 2020, he then became Lecturer at the University of Birmingham working on Privacy of Health Data, Blockchain Protocols, and the intersection of Security & Privacy with Artificial Intelligence and Machine Learning.


Recent publications


Salem, A, Berrang, P, Humbert, M & Backes, M 2019, 'Privacy-Preserving Similar Patient Queries for Combined Biomedical Data', PoPETs, vol. 2019, no. 1, pp. 47-67. https://doi.org/10.2478/popets-2019-0004


Backes, M, Berrang, P & Manoharan, P 2016, From Zoos to Safaris -- From Closed-World Enforcement to Open-World Assessment of Privacy. in Foundations of Security Analysis and Design VIII. Springer Verlag, pp. 87-138.

Conference contribution

Hagestedt, I, Humbert, M, Berrang, P, Lehmann, I, Eils, R, Backes, M & Zhang, Y 2020, Membership Inference Against DNA Methylation Databases. in IEEE European Symposium on Security and Privacy (EuroS&P).

Hagestedt, I, Zhang, Y, Humbert, M, Berrang, P, Tang, H, Wang, X & Backes, M 2019, MBeacon: Privacy-Preserving Beacons for DNA Methylation Data. in Proceedings of the 26th Annual Network and Distributed System Security Symposium (NDSS).

Salem, A, Zhang, Y, Humbert, M, Berrang, P, Fritz, M & Backes, M 2019, ML-Leaks: Model and Data Independent Membership Inference Attacks and Defenses on Machine Learning Models. in Proceedings of the 26th Annual Network and Distributed System Security Symposium (NDSS).

Berrang, P, Humbert, M, Zhang, Y, Lehmann, I, Eils, R & Backes, M 2018, Dissecting Privacy Risks in Biomedical Data. in Proceedings of the 2018 IEEE European Symposium on Security and Privacy (EuroSP). IEEE.

Backes, M, Berrang, P, Bieg, M, Eils, R, Herrmann, C, Humbert, M & Lehmann, I 2017, Identifying Personal DNA Methylation Profiles by Genotype Inference. in Proceedings of the 38th IEEE Symposium on Security and Privacy (S&P). IEEE, pp. 957-976.

Backes, M, Berrang, P, Humbert, M & Manoharan, P 2016, Membership Privacy in MicroRNA-based Studies. in Proceedings of the 23rd ACM Conference on Computer and Communication Security (CCS). Association for Computing Machinery (ACM), pp. 319-330.

Backes, M, Berrang, P, Hecksteden, A, Humbert, M, Keller, A & Meyer, T 2016, Privacy in Epigenetics: Temporal Linkability of MicroRNA Expression Profiles. in Proceedings of the 25th USENIX Security Symposium (Security). USENIX Association, pp. 1223-1240.

Backes, M, Berrang, P, Goga, O, Gummadi, K & Manoharan, P 2016, Profile Linkability despite Anonymity in Social Media Systems. in Proceedings of the 15th ACM Workshop on Privacy in the Electronic Society (WPES). Association for Computing Machinery (ACM).

Backes, M, Berrang, P, Humbert, M, Shen, X & Wolf, V 2016, Simulating the Large-scale Erosion of Genomic Privacy Over Time. in 3rd International Workshop on Genome Privacy and Security (GenoPri), Selected for publication in IEEE/ACM Transactions on Computational Biology and Bioinformatics.

Doctoral Thesis

Berrang, P 2017, 'Quantifying and Mitigating Privacy Risks in Biomedical Data', University of Saarland, Saarbrucken, Germany.. https://doi.org/doi:10.22028/D291-27302

View all publications in research portal