Cargando…

Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations

Most neurodegenerative diseases are known to affect several aspects of brain function, including neurotransmitter systems, metabolic and functional connectivity. Diseases are generally characterized by common clinical characteristics across subjects, but there are also significant inter-subject vari...

Descripción completa

Detalles Bibliográficos
Autores principales: Fu, Jessie Fanglu, Klyuzhin, Ivan, McKenzie, Jessamyn, Neilson, Nicole, Shahinfard, Elham, Dinelle, Katie, McKeown, Martin J., Stoessl, A. Jon, Sossi, Vesna
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6517523/
https://www.ncbi.nlm.nih.gov/pubmed/31091502
http://dx.doi.org/10.1016/j.nicl.2019.101856
_version_ 1783418294280126464
author Fu, Jessie Fanglu
Klyuzhin, Ivan
McKenzie, Jessamyn
Neilson, Nicole
Shahinfard, Elham
Dinelle, Katie
McKeown, Martin J.
Stoessl, A. Jon
Sossi, Vesna
author_facet Fu, Jessie Fanglu
Klyuzhin, Ivan
McKenzie, Jessamyn
Neilson, Nicole
Shahinfard, Elham
Dinelle, Katie
McKeown, Martin J.
Stoessl, A. Jon
Sossi, Vesna
author_sort Fu, Jessie Fanglu
collection PubMed
description Most neurodegenerative diseases are known to affect several aspects of brain function, including neurotransmitter systems, metabolic and functional connectivity. Diseases are generally characterized by common clinical characteristics across subjects, but there are also significant inter-subject variations. It is thus reasonable to expect that in terms of brain function, such clinical behaviors will be related to a general overall multi-system pattern of disease-induced alterations and additional brain system-specific abnormalities; these additional abnormalities would be indicative of a possible unique system response to disease or subject-specific propensity to a specific clinical progression. Based on the above considerations we introduce and validate the use of a joint pattern analysis approach, canonical correlation analysis and orthogonal signal correction, to analyze multi-tracer PET data to identify common (reflecting functional similarities) and unique (reflecting functional differences) information provided by each tracer/target. We apply the method to [(11)C]-DTBZ (VMAT2 marker) and [(11)C]-MP (DAT marker) data from 15 early Parkinson's disease (PD) subjects; the behavior of these two tracers/targets is well characterized providing robust reference information for the method's outcome. Highly significant common subject profiles were identified that decomposed the characteristic dopaminergic changes into three distinct orthogonal spatial patterns: 1) disease-induced asymmetry between the less and more affected dorsal striatum; 2) disease-induced gradient with caudate and ventral striatum being relatively spared compared to putamen; 3) progressive loss in the less affected striatum, which correlated significantly with disease duration (p < 0.01 for DTBZ, p < 0.05 for MP). These common spatial patterns reproduce all known aspects of these two targets/tracers. In addition, orthogonality of the patterns may indicate different mechanisms underlying disease initiation or progression. Information unique to each tracer revealed a residual striatal asymmetry when targeting VMAT2, consistent with the notion that VMAT2 density is highly related to terminal degeneration; and a residual DAT disease-induced gradient in the striatum with relative DAT preservation in the substantia nigra. This finding may be indicative either of a possible DAT specific early disease compensation and/or related to disease origin. These results demonstrate the applicability and relevance of the joint pattern analysis approach to datasets obtained with two PET tracers; this data driven method, while recapitulating known aspects of the PD-induced tracer/target behaviour, was found to be statistically more robust and provided additional information on (i) correlated behaviors of the two systems, identified as orthogonal patterns, possibly reflecting different disease-induced alterations and (ii) system specific effects of disease. It is thus expected that this approach will be very well suited to the analysis of multi-tracer and/or multi-modality data and to relating the outcomes to different aspects of disease.
format Online
Article
Text
id pubmed-6517523
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-65175232019-05-21 Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations Fu, Jessie Fanglu Klyuzhin, Ivan McKenzie, Jessamyn Neilson, Nicole Shahinfard, Elham Dinelle, Katie McKeown, Martin J. Stoessl, A. Jon Sossi, Vesna Neuroimage Clin Regular Article Most neurodegenerative diseases are known to affect several aspects of brain function, including neurotransmitter systems, metabolic and functional connectivity. Diseases are generally characterized by common clinical characteristics across subjects, but there are also significant inter-subject variations. It is thus reasonable to expect that in terms of brain function, such clinical behaviors will be related to a general overall multi-system pattern of disease-induced alterations and additional brain system-specific abnormalities; these additional abnormalities would be indicative of a possible unique system response to disease or subject-specific propensity to a specific clinical progression. Based on the above considerations we introduce and validate the use of a joint pattern analysis approach, canonical correlation analysis and orthogonal signal correction, to analyze multi-tracer PET data to identify common (reflecting functional similarities) and unique (reflecting functional differences) information provided by each tracer/target. We apply the method to [(11)C]-DTBZ (VMAT2 marker) and [(11)C]-MP (DAT marker) data from 15 early Parkinson's disease (PD) subjects; the behavior of these two tracers/targets is well characterized providing robust reference information for the method's outcome. Highly significant common subject profiles were identified that decomposed the characteristic dopaminergic changes into three distinct orthogonal spatial patterns: 1) disease-induced asymmetry between the less and more affected dorsal striatum; 2) disease-induced gradient with caudate and ventral striatum being relatively spared compared to putamen; 3) progressive loss in the less affected striatum, which correlated significantly with disease duration (p < 0.01 for DTBZ, p < 0.05 for MP). These common spatial patterns reproduce all known aspects of these two targets/tracers. In addition, orthogonality of the patterns may indicate different mechanisms underlying disease initiation or progression. Information unique to each tracer revealed a residual striatal asymmetry when targeting VMAT2, consistent with the notion that VMAT2 density is highly related to terminal degeneration; and a residual DAT disease-induced gradient in the striatum with relative DAT preservation in the substantia nigra. This finding may be indicative either of a possible DAT specific early disease compensation and/or related to disease origin. These results demonstrate the applicability and relevance of the joint pattern analysis approach to datasets obtained with two PET tracers; this data driven method, while recapitulating known aspects of the PD-induced tracer/target behaviour, was found to be statistically more robust and provided additional information on (i) correlated behaviors of the two systems, identified as orthogonal patterns, possibly reflecting different disease-induced alterations and (ii) system specific effects of disease. It is thus expected that this approach will be very well suited to the analysis of multi-tracer and/or multi-modality data and to relating the outcomes to different aspects of disease. Elsevier 2019-05-08 /pmc/articles/PMC6517523/ /pubmed/31091502 http://dx.doi.org/10.1016/j.nicl.2019.101856 Text en Crown Copyright © 2019 Published by Elsevier Inc. 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
Fu, Jessie Fanglu
Klyuzhin, Ivan
McKenzie, Jessamyn
Neilson, Nicole
Shahinfard, Elham
Dinelle, Katie
McKeown, Martin J.
Stoessl, A. Jon
Sossi, Vesna
Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations
title Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations
title_full Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations
title_fullStr Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations
title_full_unstemmed Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations
title_short Joint pattern analysis applied to PET DAT and VMAT2 imaging reveals new insights into Parkinson's disease induced presynaptic alterations
title_sort joint pattern analysis applied to pet dat and vmat2 imaging reveals new insights into parkinson's disease induced presynaptic alterations
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6517523/
https://www.ncbi.nlm.nih.gov/pubmed/31091502
http://dx.doi.org/10.1016/j.nicl.2019.101856
work_keys_str_mv AT fujessiefanglu jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT klyuzhinivan jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT mckenziejessamyn jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT neilsonnicole jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT shahinfardelham jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT dinellekatie jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT mckeownmartinj jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT stoesslajon jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations
AT sossivesna jointpatternanalysisappliedtopetdatandvmat2imagingrevealsnewinsightsintoparkinsonsdiseaseinducedpresynapticalterations