An Overview on the Web of Clinical Data
- URL: http://arxiv.org/abs/2008.07432v1
- Date: Fri, 14 Aug 2020 17:34:05 GMT
- Title: An Overview on the Web of Clinical Data
- Authors: Marco Gori
- Abstract summary: The Web of Clinical Data (WCD) is a universal repository of clinical hyperlinked data.
The WCD will dramatically change the AI approach to medicine and its effectiveness.
- Score: 12.52352583112911
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: In the last few years there has been an impressive growth of connections
between medicine and artificial intelligence (AI) that have been characterized
by the specific focus on single problems along with corresponding clinical
data. This paper proposes a new perspective in which the focus is on the
progressive accumulation of a universal repository of clinical hyperlinked data
in the spirit that gave rise to the birth of the Web. The underlining idea is
that this repository, that is referred to as the Web of Clinical Data (WCD),
will dramatically change the AI approach to medicine and its effectiveness. It
is claimed that research and AI-based applications will undergo an evolution
process that will likely reinforce systematically the solutions implemented in
medical apps made available in the WCD. The distinctive architectural feature
of the WCD is that this universal repository will be under control of clinical
units and hospitals, which is claimed to be the natural context for dealing
with the critical issues of clinical data.
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