When Performance is not Enough -- A Multidisciplinary View on Clinical
Decision Support
- URL: http://arxiv.org/abs/2204.12810v1
- Date: Wed, 27 Apr 2022 10:05:13 GMT
- Title: When Performance is not Enough -- A Multidisciplinary View on Clinical
Decision Support
- Authors: Roland Roller, Klemens Budde, Aljoscha Burchardt, Peter Dabrock,
Sebastian M\"oller, Bilgin Osmanodja, Simon Ronicke, David Samhammer, Sven
Schmeier
- Abstract summary: This work presents a multidisciplinary view on machine learning in medical decision support systems.
Along with an implemented risk prediction system in nephrology, challenges and lessons learned in a pilot project are presented.
- Score: 1.892787412744942
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Scientific publications about machine learning in healthcare are often about
implementing novel methods and boosting the performance - at least from a
computer science perspective. However, beyond such often short-lived
improvements, much more needs to be taken into consideration if we want to
arrive at a sustainable progress in healthcare. What does it take to actually
implement such a system, make it usable for the domain expert, and possibly
bring it into practical usage? Targeted at Computer Scientists, this work
presents a multidisciplinary view on machine learning in medical decision
support systems and covers information technology, medical, as well as ethical
aspects. Along with an implemented risk prediction system in nephrology,
challenges and lessons learned in a pilot project are presented.
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