Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/25703
Title: Data-driven staging of genetic frontotemporal dementia using multi-modal MRI
Authors: McCarthy, J
Borroni, B
Sanchez-Valle, R
Moreno, F
Laforce, R
Graff, C
Synofzik, M
Galimberti, D
Rowe, JB
Masellis, M
Tartaglia, MC
Moore, KM
Nacmias, B
Neason, M
Finger, E
Vandenberghe, R
de Mendonça, A
Tagliavini, F
Santana, I
Butler, C
Gerhard, A
Danek, A
Levin, J
Otto, M
Frisoni, G
Ghidoni, R
Sorbi, S
Jiskoot, LC
Seelaar, H
van Swieten, JC
Rohrer, JD
Iturria-Medina, Y
Ducharme, S
Afonso, S
Almeida, MR
Anderl-Straub, S
Andersson, C
Antonell, A
Archetti, S
Arighi, A
Balasa, M
Barandiaran, M
Bargalló, N
Bartha, R
Bender, B
Benussi, A
Benussi, L
Bessi, V
Binetti, G
Black, S
Bocchetta, M
Borrego-Ecija, S
Bras, J
Bruffaerts, R
Cañada, M
Cantoni, V
Caroppo, P
Cash, D
Castelo-Branco, M
Convery, R
Cope, T
Cosseddu, M
de Arriba, M
Di Fede, G
Díaz, Z
Díez, A
Duro, D
Fenoglio, C
Ferrari, C
Ferreira, C
Ferreira, CB
Flanagan, T
Fox, N
Freedman, M
Fumagalli, G
Gabilondo, A
Gasparotti, R
Gauthier, S
Gazzina, S
Giaccone, G
Gorostidi, A
Greaves, C
Guerreiro, R
Heller, C
Hoegen, T
Indakoetxea, B
Jelic, V
Karnath, HO
Keren, R
Langheinrich, T
Leitão, MJ
Lladó, A
Lombardi, G
Loosli, S
Maruta, C
Mead, S
Meeter, L
Miltenberger, G
van Minkelen, R
Mitchell, S
Keywords: disease progression;frontotemporal dementia;magnetic resonance imaging;unsupervised machine learning
Issue Date: 3-Feb-2022
Publisher: Wiley Periodicals
Citation: McCarthy, J. et al. on behalf of GENetic Frontotemporal Dementia Initiative (GENFI) (2022) 'Data-driven staging of genetic frontotemporal dementia using multi-modal MRI', Human Brain Mapping, 43 (6), pp. 1821 - 1835. doi: 10.1002/hbm.25727.
Abstract: Copyright © 2022 The Authors. Frontotemporal dementia in genetic forms is highly heterogeneous and begins many years to prior symptom onset, complicating disease understanding and treatment development. Unifying methods to stage the disease during both the presymptomatic and symptomatic phases are needed for the development of clinical trials outcomes. Here we used the contrastive trajectory inference (cTI), an unsupervised machine learning algorithm that analyzes temporal patterns in high-dimensional large-scale population datasets to obtain individual scores of disease stage. We used cross-sectional MRI data (gray matter density, T1/T2 ratio as a proxy for myelin content, resting-state functional amplitude, gray matter fractional anisotropy, and mean diffusivity) from 383 gene carriers (269 presymptomatic and 115 symptomatic) and a control group of 253 noncarriers in the Genetic Frontotemporal Dementia Initiative. We compared the cTI-obtained disease scores to the estimated years to onset (age—mean age of onset in relatives), clinical, and neuropsychological test scores. The cTI based disease scores were correlated with all clinical and neuropsychological tests (measuring behavioral symptoms, attention, memory, language, and executive functions), with the highest contribution coming from mean diffusivity. Mean cTI scores were higher in the presymptomatic carriers than controls, indicating that the method may capture subtle pre-dementia cerebral changes, although this change was not replicated in a subset of subjects with complete data. This study provides a proof of concept that cTI can identify data-driven disease stages in a heterogeneous sample combining different mutations and disease stages of genetic FTD using only MRI metrics.
Description: Data availability statement: The data used in this study are part of the Genetic Frontotemporal dementia Initiative (GENFI). The senior author (S. Ducharme) had full access to all the data in the study and takes responsibility for the integrity of the data and the accuracy of the data analysis. Information on GENFI data availability can be obtained by contacting genfi@ucl.ac.uk.
Supporting information: additional supporting information may be found in the online version of the article at https://doi.org/10.1002/hbm.25727
URI: https://bura.brunel.ac.uk/handle/2438/25703
DOI: https://doi.org/10.1002/hbm.25727
ISSN: 1065-9471
Other Identifiers: ORCID iDs: Jillian McCarthy https://orcid.org/0000-0002-9285-0023; Barbara Borroni https://orcid.org/0000-0001-9340-9814; Martina Bocchetta https://orcid.org/0000-0003-1814-5024.
Appears in Collections:Dept of Life Sciences Research Papers

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