A comparison of magnetic resonance imaging and neuropsychological examination in the diagnostic distinction of Alzheimer's Disease and behavioral variant frontotemporal dementia
A comparison of magnetic resonance imaging and neuropsychological examination in the diagnostic distinction of Alzheimer's Disease and behavioral variant frontotemporal dementia
The clinical distinction between Alzheimer's disease (AD) and behavioral variant frontotemporal dementia (bvFTD) remains challenging and largely dependent on the experience of the clinician. This study investigates whether objective machine learning algorithms using supportive neuroimaging and neuropsychological clinical features can aid the distinction between both diseases. Retrospective neuroimaging and neuropsychological data of 166 participants (54 AD; 55 bvFTD; 57 healthy controls) was analyzed via a Naïve Bayes classification model. A subgroup of patients (n = 22) had pathologically-confirmed diagnoses. Results show that a combination of gray matter atrophy and neuropsychological features allowed a correct classification of 61.47% of cases at clinical presentation. More importantly, there was a clear dissociation between imaging and neuropsychological features, with the latter having the greater diagnostic accuracy (respectively 51.38 vs. 62.39%). These findings indicate that, at presentation, machine learning classification of bvFTD and AD is mostly based on cognitive and not imaging features. This clearly highlights the urgent need to develop better biomarkers for both diseases, but also emphasizes the value of machine learning in determining the predictive diagnostic features in neurodegeneration.
Wang, J
bc022bde-d5eb-4027-a1b2-eebf38570cc2
SJ, Redmond
69d7c9c4-a38f-4fd1-818f-4ed742f34995
Bertoux, M
cd351b78-c9bc-4d36-9a29-cc365fe16c34
JR, Hodges
936bf0c6-b9ab-46eb-a3ed-2a6b719019aa
Hornberger, M
a48c1c63-422a-4c11-9a51-c7be0aa3026d
16 June 2016
Wang, J
bc022bde-d5eb-4027-a1b2-eebf38570cc2
SJ, Redmond
69d7c9c4-a38f-4fd1-818f-4ed742f34995
Bertoux, M
cd351b78-c9bc-4d36-9a29-cc365fe16c34
JR, Hodges
936bf0c6-b9ab-46eb-a3ed-2a6b719019aa
Hornberger, M
a48c1c63-422a-4c11-9a51-c7be0aa3026d
Wang, J, SJ, Redmond, Bertoux, M, JR, Hodges and Hornberger, M
(2016)
A comparison of magnetic resonance imaging and neuropsychological examination in the diagnostic distinction of Alzheimer's Disease and behavioral variant frontotemporal dementia.
Frontiers in Aging Neuroscience, 8.
(doi:10.3389/fnagi.2016.00119).
Abstract
The clinical distinction between Alzheimer's disease (AD) and behavioral variant frontotemporal dementia (bvFTD) remains challenging and largely dependent on the experience of the clinician. This study investigates whether objective machine learning algorithms using supportive neuroimaging and neuropsychological clinical features can aid the distinction between both diseases. Retrospective neuroimaging and neuropsychological data of 166 participants (54 AD; 55 bvFTD; 57 healthy controls) was analyzed via a Naïve Bayes classification model. A subgroup of patients (n = 22) had pathologically-confirmed diagnoses. Results show that a combination of gray matter atrophy and neuropsychological features allowed a correct classification of 61.47% of cases at clinical presentation. More importantly, there was a clear dissociation between imaging and neuropsychological features, with the latter having the greater diagnostic accuracy (respectively 51.38 vs. 62.39%). These findings indicate that, at presentation, machine learning classification of bvFTD and AD is mostly based on cognitive and not imaging features. This clearly highlights the urgent need to develop better biomarkers for both diseases, but also emphasizes the value of machine learning in determining the predictive diagnostic features in neurodegeneration.
Text
fnagi-08-00119
- Version of Record
More information
Accepted/In Press date: 9 May 2016
Published date: 16 June 2016
Identifiers
Local EPrints ID: 505098
URI: http://eprints.soton.ac.uk/id/eprint/505098
ISSN: 1663-4365
PURE UUID: 2a1c5225-8e01-4ddd-be78-17123ec2cfcb
Catalogue record
Date deposited: 29 Sep 2025 16:45
Last modified: 30 Sep 2025 02:25
Export record
Altmetrics
Contributors
Author:
J Wang
Author:
Redmond SJ
Author:
M Bertoux
Author:
Hodges JR
Author:
M Hornberger
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics