Skip to main content
Top
Published in: Journal of Neurology 11/2018

01-11-2018 | Neurological Update

Machine learning in neurology: what neurologists can learn from machines and vice versa

Author: Rose Bruffaerts

Published in: Journal of Neurology | Issue 11/2018

Login to get access

Abstract

Artificial intelligence is increasingly becoming a part of everyday life. This raises the question whether clinical neurology can benefit from these novel methods to increase diagnostic accuracy. Several recent studies have used machine learning classifiers to predict whether subjects suffer from a neurological disorder. This article discusses whether these methods are ready to make their entrance into clinical practice. The underlying principles of classification will be explored, as well as the potential pitfalls. Strengths of machine learning methods are that they are unbiased and very sensitive to patterns emerging from small changes spread across a large number of variables. Potential pitfalls are that building reliable classifiers requires large amounts of well-selected data and extensive validation. Currently, machine learning classifiers offer neurologists a new diagnostic tool which can aid in the diagnosis of cases with a high degree of uncertainty.
Literature
6.
go back to reference Duncan J (2010) How intelligence happens. Yale University Press, New Haven Duncan J (2010) How intelligence happens. Yale University Press, New Haven
Metadata
Title
Machine learning in neurology: what neurologists can learn from machines and vice versa
Author
Rose Bruffaerts
Publication date
01-11-2018
Publisher
Springer Berlin Heidelberg
Published in
Journal of Neurology / Issue 11/2018
Print ISSN: 0340-5354
Electronic ISSN: 1432-1459
DOI
https://doi.org/10.1007/s00415-018-8990-9

Other articles of this Issue 11/2018

Journal of Neurology 11/2018 Go to the issue