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Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning

To better understand the pathological and phenotypic heterogeneity of progressive supranuclear palsy and the links between the two, we applied a novel unsupervised machine learning algorithm (Subtype and Stage Inference) to the largest MRI data set to date of people with clinically diagnosed progres...

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Autores principales: Scotton, William J, Shand, Cameron, Todd, Emily, Bocchetta, Martina, Cash, David M, VandeVrede, Lawren, Heuer, Hilary, Young, Alexandra L, Oxtoby, Neil, Alexander, Daniel C, Rowe, James B, Morris, Huw R, Boxer, Adam L, Rohrer, Jonathan D, Wijeratne, Peter A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10016410/
https://www.ncbi.nlm.nih.gov/pubmed/36938523
http://dx.doi.org/10.1093/braincomms/fcad048
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author Scotton, William J
Shand, Cameron
Todd, Emily
Bocchetta, Martina
Cash, David M
VandeVrede, Lawren
Heuer, Hilary
Young, Alexandra L
Oxtoby, Neil
Alexander, Daniel C
Rowe, James B
Morris, Huw R
Boxer, Adam L
Rohrer, Jonathan D
Wijeratne, Peter A
author_facet Scotton, William J
Shand, Cameron
Todd, Emily
Bocchetta, Martina
Cash, David M
VandeVrede, Lawren
Heuer, Hilary
Young, Alexandra L
Oxtoby, Neil
Alexander, Daniel C
Rowe, James B
Morris, Huw R
Boxer, Adam L
Rohrer, Jonathan D
Wijeratne, Peter A
author_sort Scotton, William J
collection PubMed
description To better understand the pathological and phenotypic heterogeneity of progressive supranuclear palsy and the links between the two, we applied a novel unsupervised machine learning algorithm (Subtype and Stage Inference) to the largest MRI data set to date of people with clinically diagnosed progressive supranuclear palsy (including progressive supranuclear palsy–Richardson and variant progressive supranuclear palsy syndromes). Our cohort is comprised of 426 progressive supranuclear palsy cases, of which 367 had at least one follow-up scan, and 290 controls. Of the progressive supranuclear palsy cases, 357 were clinically diagnosed with progressive supranuclear palsy–Richardson, 52 with a progressive supranuclear palsy–cortical variant (progressive supranuclear palsy–frontal, progressive supranuclear palsy–speech/language, or progressive supranuclear palsy–corticobasal), and 17 with a progressive supranuclear palsy–subcortical variant (progressive supranuclear palsy–parkinsonism or progressive supranuclear palsy–progressive gait freezing). Subtype and Stage Inference was applied to volumetric MRI features extracted from baseline structural (T1-weighted) MRI scans and then used to subtype and stage follow-up scans. The subtypes and stages at follow-up were used to validate the longitudinal consistency of subtype and stage assignments. We further compared the clinical phenotypes of each subtype to gain insight into the relationship between progressive supranuclear palsy pathology, atrophy patterns, and clinical presentation. The data supported two subtypes, each with a distinct progression of atrophy: a ‘subcortical’ subtype, in which early atrophy was most prominent in the brainstem, ventral diencephalon, superior cerebellar peduncles, and the dentate nucleus, and a ‘cortical’ subtype, in which there was early atrophy in the frontal lobes and the insula alongside brainstem atrophy. There was a strong association between clinical diagnosis and the Subtype and Stage Inference subtype with 82% of progressive supranuclear palsy–subcortical cases and 81% of progressive supranuclear palsy–Richardson cases assigned to the subcortical subtype and 82% of progressive supranuclear palsy–cortical cases assigned to the cortical subtype. The increasing stage was associated with worsening clinical scores, whilst the ‘subcortical’ subtype was associated with worse clinical severity scores compared to the ‘cortical subtype’ (progressive supranuclear palsy rating scale and Unified Parkinson’s Disease Rating Scale). Validation experiments showed that subtype assignment was longitudinally stable (95% of scans were assigned to the same subtype at follow-up) and individual staging was longitudinally consistent with 90% remaining at the same stage or progressing to a later stage at follow-up. In summary, we applied Subtype and Stage Inference to structural MRI data and empirically identified two distinct subtypes of spatiotemporal atrophy in progressive supranuclear palsy. These image-based subtypes were differentially enriched for progressive supranuclear palsy clinical syndromes and showed different clinical characteristics. Being able to accurately subtype and stage progressive supranuclear palsy patients at baseline has important implications for screening patients on entry to clinical trials, as well as tracking disease progression.
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spelling pubmed-100164102023-03-16 Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning Scotton, William J Shand, Cameron Todd, Emily Bocchetta, Martina Cash, David M VandeVrede, Lawren Heuer, Hilary Young, Alexandra L Oxtoby, Neil Alexander, Daniel C Rowe, James B Morris, Huw R Boxer, Adam L Rohrer, Jonathan D Wijeratne, Peter A Brain Commun Original Article To better understand the pathological and phenotypic heterogeneity of progressive supranuclear palsy and the links between the two, we applied a novel unsupervised machine learning algorithm (Subtype and Stage Inference) to the largest MRI data set to date of people with clinically diagnosed progressive supranuclear palsy (including progressive supranuclear palsy–Richardson and variant progressive supranuclear palsy syndromes). Our cohort is comprised of 426 progressive supranuclear palsy cases, of which 367 had at least one follow-up scan, and 290 controls. Of the progressive supranuclear palsy cases, 357 were clinically diagnosed with progressive supranuclear palsy–Richardson, 52 with a progressive supranuclear palsy–cortical variant (progressive supranuclear palsy–frontal, progressive supranuclear palsy–speech/language, or progressive supranuclear palsy–corticobasal), and 17 with a progressive supranuclear palsy–subcortical variant (progressive supranuclear palsy–parkinsonism or progressive supranuclear palsy–progressive gait freezing). Subtype and Stage Inference was applied to volumetric MRI features extracted from baseline structural (T1-weighted) MRI scans and then used to subtype and stage follow-up scans. The subtypes and stages at follow-up were used to validate the longitudinal consistency of subtype and stage assignments. We further compared the clinical phenotypes of each subtype to gain insight into the relationship between progressive supranuclear palsy pathology, atrophy patterns, and clinical presentation. The data supported two subtypes, each with a distinct progression of atrophy: a ‘subcortical’ subtype, in which early atrophy was most prominent in the brainstem, ventral diencephalon, superior cerebellar peduncles, and the dentate nucleus, and a ‘cortical’ subtype, in which there was early atrophy in the frontal lobes and the insula alongside brainstem atrophy. There was a strong association between clinical diagnosis and the Subtype and Stage Inference subtype with 82% of progressive supranuclear palsy–subcortical cases and 81% of progressive supranuclear palsy–Richardson cases assigned to the subcortical subtype and 82% of progressive supranuclear palsy–cortical cases assigned to the cortical subtype. The increasing stage was associated with worsening clinical scores, whilst the ‘subcortical’ subtype was associated with worse clinical severity scores compared to the ‘cortical subtype’ (progressive supranuclear palsy rating scale and Unified Parkinson’s Disease Rating Scale). Validation experiments showed that subtype assignment was longitudinally stable (95% of scans were assigned to the same subtype at follow-up) and individual staging was longitudinally consistent with 90% remaining at the same stage or progressing to a later stage at follow-up. In summary, we applied Subtype and Stage Inference to structural MRI data and empirically identified two distinct subtypes of spatiotemporal atrophy in progressive supranuclear palsy. These image-based subtypes were differentially enriched for progressive supranuclear palsy clinical syndromes and showed different clinical characteristics. Being able to accurately subtype and stage progressive supranuclear palsy patients at baseline has important implications for screening patients on entry to clinical trials, as well as tracking disease progression. Oxford University Press 2023-03-02 /pmc/articles/PMC10016410/ /pubmed/36938523 http://dx.doi.org/10.1093/braincomms/fcad048 Text en © The Author(s) 2023. Published by Oxford University Press on behalf of the Guarantors of Brain. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Scotton, William J
Shand, Cameron
Todd, Emily
Bocchetta, Martina
Cash, David M
VandeVrede, Lawren
Heuer, Hilary
Young, Alexandra L
Oxtoby, Neil
Alexander, Daniel C
Rowe, James B
Morris, Huw R
Boxer, Adam L
Rohrer, Jonathan D
Wijeratne, Peter A
Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning
title Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning
title_full Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning
title_fullStr Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning
title_full_unstemmed Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning
title_short Uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning
title_sort uncovering spatiotemporal patterns of atrophy in progressive supranuclear palsy using unsupervised machine learning
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10016410/
https://www.ncbi.nlm.nih.gov/pubmed/36938523
http://dx.doi.org/10.1093/braincomms/fcad048
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