Cargando…

FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort

BACKGROUND/AIMS: In this multicentre study in clinical settings, we assessed the accuracy of optimized procedures for FDG-PET brain metabolism and CSF classifications in predicting or excluding the conversion to Alzheimer's disease (AD) dementia and non-AD dementias. METHODS: We included 80 MCI...

Descripción completa

Detalles Bibliográficos
Autores principales: Caminiti, Silvia Paola, Ballarini, Tommaso, Sala, Arianna, Cerami, Chiara, Presotto, Luca, Santangelo, Roberto, Fallanca, Federico, Vanoli, Emilia Giovanna, Gianolli, Luigi, Iannaccone, Sandro, Magnani, Giuseppe, Perani, Daniela
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5790816/
https://www.ncbi.nlm.nih.gov/pubmed/29387532
http://dx.doi.org/10.1016/j.nicl.2018.01.019
_version_ 1783296517849743360
author Caminiti, Silvia Paola
Ballarini, Tommaso
Sala, Arianna
Cerami, Chiara
Presotto, Luca
Santangelo, Roberto
Fallanca, Federico
Vanoli, Emilia Giovanna
Gianolli, Luigi
Iannaccone, Sandro
Magnani, Giuseppe
Perani, Daniela
author_facet Caminiti, Silvia Paola
Ballarini, Tommaso
Sala, Arianna
Cerami, Chiara
Presotto, Luca
Santangelo, Roberto
Fallanca, Federico
Vanoli, Emilia Giovanna
Gianolli, Luigi
Iannaccone, Sandro
Magnani, Giuseppe
Perani, Daniela
author_sort Caminiti, Silvia Paola
collection PubMed
description BACKGROUND/AIMS: In this multicentre study in clinical settings, we assessed the accuracy of optimized procedures for FDG-PET brain metabolism and CSF classifications in predicting or excluding the conversion to Alzheimer's disease (AD) dementia and non-AD dementias. METHODS: We included 80 MCI subjects with neurological and neuropsychological assessments, FDG-PET scan and CSF measures at entry, all with clinical follow-up. FDG-PET data were analysed with a validated voxel-based SPM method. Resulting single-subject SPM maps were classified by five imaging experts according to the disease-specific patterns, as “typical-AD”, “atypical-AD” (i.e. posterior cortical atrophy, asymmetric logopenic AD variant, frontal-AD variant), “non-AD” (i.e. behavioural variant FTD, corticobasal degeneration, semantic variant FTD; dementia with Lewy bodies) or “negative” patterns. To perform the statistical analyses, the individual patterns were grouped either as “AD dementia vs. non-AD dementia (all diseases)” or as “FTD vs. non-FTD (all diseases)”. Aβ42, total and phosphorylated Tau CSF-levels were classified dichotomously, and using the Erlangen Score algorithm. Multivariate logistic models tested the prognostic accuracy of FDG-PET-SPM and CSF dichotomous classifications. Accuracy of Erlangen score and Erlangen Score aided by FDG-PET SPM classification was evaluated. RESULTS: The multivariate logistic model identified FDG-PET “AD” SPM classification (Expβ = 19.35, 95% C.I. 4.8–77.8, p < 0.001) and CSF Aβ42 (Expβ = 6.5, 95% C.I. 1.64–25.43, p < 0.05) as the best predictors of conversion from MCI to AD dementia. The “FTD” SPM pattern significantly predicted conversion to FTD dementias at follow-up (Expβ = 14, 95% C.I. 3.1–63, p < 0.001). Overall, FDG-PET-SPM classification was the most accurate biomarker, able to correctly differentiate either the MCI subjects who converted to AD or FTD dementias, and those who remained stable or reverted to normal cognition (Expβ = 17.9, 95% C.I. 4.55–70.46, p < 0.001). CONCLUSIONS: Our results support the relevant role of FDG-PET-SPM classification in predicting progression to different dementia conditions in prodromal MCI phase, and in the exclusion of progression, outperforming CSF biomarkers.
format Online
Article
Text
id pubmed-5790816
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-57908162018-01-31 FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort Caminiti, Silvia Paola Ballarini, Tommaso Sala, Arianna Cerami, Chiara Presotto, Luca Santangelo, Roberto Fallanca, Federico Vanoli, Emilia Giovanna Gianolli, Luigi Iannaccone, Sandro Magnani, Giuseppe Perani, Daniela Neuroimage Clin Regular Article BACKGROUND/AIMS: In this multicentre study in clinical settings, we assessed the accuracy of optimized procedures for FDG-PET brain metabolism and CSF classifications in predicting or excluding the conversion to Alzheimer's disease (AD) dementia and non-AD dementias. METHODS: We included 80 MCI subjects with neurological and neuropsychological assessments, FDG-PET scan and CSF measures at entry, all with clinical follow-up. FDG-PET data were analysed with a validated voxel-based SPM method. Resulting single-subject SPM maps were classified by five imaging experts according to the disease-specific patterns, as “typical-AD”, “atypical-AD” (i.e. posterior cortical atrophy, asymmetric logopenic AD variant, frontal-AD variant), “non-AD” (i.e. behavioural variant FTD, corticobasal degeneration, semantic variant FTD; dementia with Lewy bodies) or “negative” patterns. To perform the statistical analyses, the individual patterns were grouped either as “AD dementia vs. non-AD dementia (all diseases)” or as “FTD vs. non-FTD (all diseases)”. Aβ42, total and phosphorylated Tau CSF-levels were classified dichotomously, and using the Erlangen Score algorithm. Multivariate logistic models tested the prognostic accuracy of FDG-PET-SPM and CSF dichotomous classifications. Accuracy of Erlangen score and Erlangen Score aided by FDG-PET SPM classification was evaluated. RESULTS: The multivariate logistic model identified FDG-PET “AD” SPM classification (Expβ = 19.35, 95% C.I. 4.8–77.8, p < 0.001) and CSF Aβ42 (Expβ = 6.5, 95% C.I. 1.64–25.43, p < 0.05) as the best predictors of conversion from MCI to AD dementia. The “FTD” SPM pattern significantly predicted conversion to FTD dementias at follow-up (Expβ = 14, 95% C.I. 3.1–63, p < 0.001). Overall, FDG-PET-SPM classification was the most accurate biomarker, able to correctly differentiate either the MCI subjects who converted to AD or FTD dementias, and those who remained stable or reverted to normal cognition (Expβ = 17.9, 95% C.I. 4.55–70.46, p < 0.001). CONCLUSIONS: Our results support the relevant role of FDG-PET-SPM classification in predicting progression to different dementia conditions in prodromal MCI phase, and in the exclusion of progression, outperforming CSF biomarkers. Elsevier 2018-01-28 /pmc/articles/PMC5790816/ /pubmed/29387532 http://dx.doi.org/10.1016/j.nicl.2018.01.019 Text en © 2018 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Regular Article
Caminiti, Silvia Paola
Ballarini, Tommaso
Sala, Arianna
Cerami, Chiara
Presotto, Luca
Santangelo, Roberto
Fallanca, Federico
Vanoli, Emilia Giovanna
Gianolli, Luigi
Iannaccone, Sandro
Magnani, Giuseppe
Perani, Daniela
FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort
title FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort
title_full FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort
title_fullStr FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort
title_full_unstemmed FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort
title_short FDG-PET and CSF biomarker accuracy in prediction of conversion to different dementias in a large multicentre MCI cohort
title_sort fdg-pet and csf biomarker accuracy in prediction of conversion to different dementias in a large multicentre mci cohort
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5790816/
https://www.ncbi.nlm.nih.gov/pubmed/29387532
http://dx.doi.org/10.1016/j.nicl.2018.01.019
work_keys_str_mv AT caminitisilviapaola fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT ballarinitommaso fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT salaarianna fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT ceramichiara fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT presottoluca fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT santangeloroberto fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT fallancafederico fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT vanoliemiliagiovanna fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT gianolliluigi fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT iannacconesandro fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT magnanigiuseppe fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT peranidaniela fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort
AT fdgpetandcsfbiomarkeraccuracyinpredictionofconversiontodifferentdementiasinalargemulticentremcicohort