Manera, AL;
Dadar, M;
Van Swieten, JC;
Borroni, B;
Sanchez-Valle, R;
Moreno, F;
Laforce, R;
... GENFI Consortium, .; + view all
(2021)
MRI data-driven algorithm for the diagnosis of behavioural variant frontotemporal dementia.
Journal of Neurology, Neurosurgery & Psychiatry
, 92
(6)
pp. 608-616.
10.1136/jnnp-2020-324106.
Preview |
Text
Rohrer_MRI data-driven algorithm for the diagnosis of behavioural variant frontotemporal dementia_AAM.pdf - Accepted Version Download (732kB) | Preview |
Abstract
INTRODUCTION: Structural brain imaging is paramount for the diagnosis of behavioural variant of frontotemporal dementia (bvFTD), but it has low sensitivity leading to erroneous or late diagnosis. METHODS: A total of 515 subjects from two different bvFTD cohorts (training and independent validation cohorts) were used to perform voxel-wise morphometric analysis to identify regions with significant differences between bvFTD and controls. A random forest classifier was used to individually predict bvFTD from deformation-based morphometry differences in isolation and together with semantic fluency. Tenfold cross validation was used to assess the performance of the classifier within the training cohort. A second held-out cohort of genetically confirmed bvFTD cases was used for additional validation. RESULTS: Average 10-fold cross-validation accuracy was 89% (82% sensitivity, 93% specificity) using only MRI and 94% (89% sensitivity, 98% specificity) with the addition of semantic fluency. In the separate validation cohort of definite bvFTD, accuracy was 88% (81% sensitivity, 92% specificity) with MRI and 91% (79% sensitivity, 96% specificity) with added semantic fluency scores. CONCLUSION: Our results show that structural MRI and semantic fluency can accurately predict bvFTD at the individual subject level within a completely independent validation cohort coming from a different and independent database.
Archive Staff Only
View Item |