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Secure, privacy-preserving and federated machine learning in medical imaging
by
Braren, Rickmer F.
, Kaissis, Georgios A.
, Makowski, Marcus R.
, Rückert, Daniel
in
59
/ 639/705
/ 692/308
/ Accountability
/ Algorithms
/ Archives & records
/ Artificial intelligence
/ Computer peripherals
/ Data encryption
/ Data exchange
/ Data storage
/ Datasets
/ Digital imaging
/ Digitization
/ Electronic health records
/ Engineering
/ Ethical standards
/ General Data Protection Regulation
/ Hospitals
/ Machine learning
/ Medical imaging
/ Medicine
/ Neural networks
/ Perspective
/ Privacy
/ Transparency
2020
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Secure, privacy-preserving and federated machine learning in medical imaging
by
Braren, Rickmer F.
, Kaissis, Georgios A.
, Makowski, Marcus R.
, Rückert, Daniel
in
59
/ 639/705
/ 692/308
/ Accountability
/ Algorithms
/ Archives & records
/ Artificial intelligence
/ Computer peripherals
/ Data encryption
/ Data exchange
/ Data storage
/ Datasets
/ Digital imaging
/ Digitization
/ Electronic health records
/ Engineering
/ Ethical standards
/ General Data Protection Regulation
/ Hospitals
/ Machine learning
/ Medical imaging
/ Medicine
/ Neural networks
/ Perspective
/ Privacy
/ Transparency
2020
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Do you wish to request the book?
Secure, privacy-preserving and federated machine learning in medical imaging
by
Braren, Rickmer F.
, Kaissis, Georgios A.
, Makowski, Marcus R.
, Rückert, Daniel
in
59
/ 639/705
/ 692/308
/ Accountability
/ Algorithms
/ Archives & records
/ Artificial intelligence
/ Computer peripherals
/ Data encryption
/ Data exchange
/ Data storage
/ Datasets
/ Digital imaging
/ Digitization
/ Electronic health records
/ Engineering
/ Ethical standards
/ General Data Protection Regulation
/ Hospitals
/ Machine learning
/ Medical imaging
/ Medicine
/ Neural networks
/ Perspective
/ Privacy
/ Transparency
2020
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Secure, privacy-preserving and federated machine learning in medical imaging
Journal Article
Secure, privacy-preserving and federated machine learning in medical imaging
2020
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Overview
The broad application of artificial intelligence techniques in medicine is currently hindered by limited dataset availability for algorithm training and validation, due to the absence of standardized electronic medical records, and strict legal and ethical requirements to protect patient privacy. In medical imaging, harmonized data exchange formats such as Digital Imaging and Communication in Medicine and electronic data storage are the standard, partially addressing the first issue, but the requirements for privacy preservation are equally strict. To prevent patient privacy compromise while promoting scientific research on large datasets that aims to improve patient care, the implementation of technical solutions to simultaneously address the demands for data protection and utilization is mandatory. Here we present an overview of current and next-generation methods for federated, secure and privacy-preserving artificial intelligence with a focus on medical imaging applications, alongside potential attack vectors and future prospects in medical imaging and beyond.
Medical imaging data is often subject to privacy and intellectual property restrictions. AI techniques can help out by offering tools like federated learning to bridge the gap between personal data protection and data utilisation for research and clinical routine, but these tools need to be secure.
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