Artificial intelligence (AI) systems for interpreting complex medical datasets.

R B Altman
Author Information
  1. R B Altman: Stanford University, Stanford, California, USA.

Abstract

Advances in machine intelligence have created powerful capabilities in algorithms that find hidden patterns in data, classify objects based on their measured characteristics, and associate similar patients/diseases/drugs based on common features. However, artificial intelligence (AI) applications in medical data have several technical challenges: complex and heterogeneous datasets, noisy medical datasets, and explaining their output to users. There are also social challenges related to intellectual property, data provenance, regulatory issues, economics, and liability.

MeSH Term

Algorithms
Artificial Intelligence
Data Interpretation, Statistical
Databases, Factual
Humans

Word Cloud

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