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For a critical appraisal of artificial intelligence in healthcare: The problem of bias in <scp>mHealth</scp>
43
Zitationen
2
Autoren
2020
Jahr
Abstract
The large amount of data thus appears rather as a problem than a solution. What contemporary medicine needs is not more data or more algorithms, but a critical appraisal of the data and of the analysis of the data. Considering the history of epidemiology, we propose three research priorities concerning the use of artificial intelligence and big data in medicine.
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