For a number of years, facial features removal techniques such as ‘defacing’, ‘skull stripping’ and ‘face masking/blurring’, were considered adequate privacy preserving tools to openly share brain images. Scientifically, these measures were already a compromise between data protection requirements and research impact of such data. Now, recent advances in machine learning and deep learning that indicate an increased possibility of re-identifiability from defaced neuroimages, have increased the tension between open science and data protection requirements. Researchers are left pondering how best to comply with the different jurisdictional requirements of anonymization, pseudonymisation or de-identification without compromising the scientific utility of neuroimages even further. In this paper, we present perspectives intended to clarify the meaning and scope of these concepts and highlight the privacy limitations of available pseudonymisation and de-identification techniques. We also discuss possible technical and organizational measures and safeguards that can facilitate sharing of pseudonymised neuroimages without causing further reductions to the utility of the data.

Pseudonymisation of neuroimages and data protection : Increasing access to data while retaining scientific utility / D. Eke, I.E.J. Aasebø, S. Akintoye, W. Knight, A. Karakasidis, E. Mikulan, P. Ochang, G. Ogoh, R. Oostenveld, A. Pigorini, B.C. Stahl, T. White, L. Zehl. - In: NEUROIMAGE. REPORTS. - ISSN 2666-9560. - 1:4(2021 Dec), pp. 100053.1-100053.12. [10.1016/j.ynirp.2021.100053]

Pseudonymisation of neuroimages and data protection : Increasing access to data while retaining scientific utility

E. Mikulan;A. Pigorini;
2021

Abstract

For a number of years, facial features removal techniques such as ‘defacing’, ‘skull stripping’ and ‘face masking/blurring’, were considered adequate privacy preserving tools to openly share brain images. Scientifically, these measures were already a compromise between data protection requirements and research impact of such data. Now, recent advances in machine learning and deep learning that indicate an increased possibility of re-identifiability from defaced neuroimages, have increased the tension between open science and data protection requirements. Researchers are left pondering how best to comply with the different jurisdictional requirements of anonymization, pseudonymisation or de-identification without compromising the scientific utility of neuroimages even further. In this paper, we present perspectives intended to clarify the meaning and scope of these concepts and highlight the privacy limitations of available pseudonymisation and de-identification techniques. We also discuss possible technical and organizational measures and safeguards that can facilitate sharing of pseudonymised neuroimages without causing further reductions to the utility of the data.
English
neuroimages; anonymization; pseudonymisation; neurodata; de-identification; MRI; data protection
Settore BIO/09 - Fisiologia
Articolo
Esperti anonimi
Pubblicazione scientifica
   Human Brain Project Specific Grant Agreement 1 (HBP SGA1)
   HBP SGA1
   EUROPEAN COMMISSION
   H2020
   720270

   Human Brain Project Specific Grant Agreement 2 (HBP SGA2)
   HBP SGA2
   EUROPEAN COMMISSION
   H2020
   785907

   Human Brain Project Specific Grant Agreement 3 (HBP SGA3)
   HBP SGA3
   EUROPEAN COMMISSION
   H2020
   945539
dic-2021
Elsevier
1
4
100053
1
12
12
Pubblicato
Periodico con rilevanza internazionale
crossref
Aderisco
info:eu-repo/semantics/article
Pseudonymisation of neuroimages and data protection : Increasing access to data while retaining scientific utility / D. Eke, I.E.J. Aasebø, S. Akintoye, W. Knight, A. Karakasidis, E. Mikulan, P. Ochang, G. Ogoh, R. Oostenveld, A. Pigorini, B.C. Stahl, T. White, L. Zehl. - In: NEUROIMAGE. REPORTS. - ISSN 2666-9560. - 1:4(2021 Dec), pp. 100053.1-100053.12. [10.1016/j.ynirp.2021.100053]
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D. Eke, I.E.J. Aasebø, S. Akintoye, W. Knight, A. Karakasidis, E. Mikulan, P. Ochang, G. Ogoh, R. Oostenveld, A. Pigorini, B.C. Stahl, T. White, L. Ze...espandi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/929853
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