Artificial intelligence-based analysis of small data sets in medicine
DOI:
https://doi.org/10.34767/SIMIS.2023.02.03Keywords:
artificial intelligence, small data sets, clinical applicationsAbstract
AI-based computing of small data sets are a step towards edge computing and further personalization of diagnostics, therapy and predictions in clinical practice. However, this still requires many intermediate steps, both in hardware and software. The aim of the work is to assess to what extent current achievements in the area of AI-based small sets analysis constitute the basis for the development of a new group of clinical and programming solutions.
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