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SHR Neuro Cancer Cardio Lipid Metab Microb

Stoger, K; Schneeberger, D; Kieseberg, P; Holzinger, A.
Legal aspects of data cleansing in medical AI
COMPUT LAW SECUR REV. 2021; 42: 105587 Doi: 10.1016/j.clsr.2021.105587
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Co-authors Med Uni Graz
Holzinger Andreas
Schneeberger David Michael
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Abstract:
Data quality is of paramount importance for the smooth functioning of modem data-driven AI applications with machine learning as a core technology. This is also true for medical AI, where malfunctions due to "dirty data" can have particularly dramatic harmful implications. Consequently, data cleansing is an important part in improving the usability of (Big) Data for medical AI systems. However, it should not be overlooked that data cleansing can also have negative effects on data quality if not performed carefully. This paper takes an interdisciplinary look at some of the technical and legal challenges of data cleansing against the background of European medical device law, with the key message that technical and legal aspects must always be considered together in such a sensitive context. (c) 2021 Karl Stdger, David Schneeberger, Peter Kieseberg, Andreas Holzinger. Published by Elsevier Ltd. This is an open access article under the CC BY license ( http://creativecommons.org/licenses/by/4.0/ )

Find related publications in this database (Keywords)
Data cleansing
Data quality
Medical AI
Medical devices
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