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SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline

BACKGROUND: Recently, tau PET tracers have shown strong associations with clinical outcomes in individuals with cognitive impairment and cognitively unremarkable elderly individuals. flortaucipir PET scans to measure tau deposition in multiple brain areas as the disease progresses. This information...

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Autores principales: Toledo, Jon B., Rashid, Tanweer, Liu, Hangfan, Launer, Lenore, Shaw, Leslie M., Heckbert, Susan R., Weiner, Michael, Seshadri, Sudha, Habes, Mohamad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9632811/
https://www.ncbi.nlm.nih.gov/pubmed/36327215
http://dx.doi.org/10.1371/journal.pone.0276392
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author Toledo, Jon B.
Rashid, Tanweer
Liu, Hangfan
Launer, Lenore
Shaw, Leslie M.
Heckbert, Susan R.
Weiner, Michael
Seshadri, Sudha
Habes, Mohamad
author_facet Toledo, Jon B.
Rashid, Tanweer
Liu, Hangfan
Launer, Lenore
Shaw, Leslie M.
Heckbert, Susan R.
Weiner, Michael
Seshadri, Sudha
Habes, Mohamad
author_sort Toledo, Jon B.
collection PubMed
description BACKGROUND: Recently, tau PET tracers have shown strong associations with clinical outcomes in individuals with cognitive impairment and cognitively unremarkable elderly individuals. flortaucipir PET scans to measure tau deposition in multiple brain areas as the disease progresses. This information needs to be summarized to evaluate disease severity and predict disease progression. We, therefore, sought to develop a machine learning-derived index, SPARE-Tau, which successfully detects pathology in the earliest disease stages and accurately predicts progression compared to a priori-based region of interest approaches (ROI). METHODS: 587 participants of the Alzheimer’s Disease Neuroimaging Initiative (ADNI) cohort had flortaucipir scans, structural MRI scans, and an Aβ biomarker test (CSF or florbetapir PET) performed on the same visit. We derived the SPARE-Tau index in a subset of 367 participants. We evaluated associations with clinical measures for CSF p-tau, SPARE-MRI, and flortaucipir PET indices (SPARE-Tau, meta-temporal, and average Braak ROIs). Bootstrapped multivariate adaptive regression splines linear regression analyzed the association between the biomarkers and baseline ADAS-Cog13 scores. Bootstrapped multivariate linear regression models evaluated associations with clinical diagnosis. Cox-hazards and mixed-effects models investigated clinical progression and longitudinal ADAS-Cog13 changes. The Aβ positive cognitively unremarkable participants, not included in the SPARE-Tau training, served as an independent validation group. RESULTS: Compared to CSF p-tau, meta-temporal, and averaged Braak tau PET ROIs, SPARE-Tau showed the strongest association with baseline ADAS-cog13 scores and diagnosis. SPARE-Tau also presented the strongest association with clinical progression in cognitively unremarkable participants and longitudinal ADAS-Cog13 changes. Results were confirmed in the Aβ+ cognitively unremarkable hold-out sample participants. CSF p-tau showed the weakest cross-sectional associations and longitudinal prediction. DISCUSSION: Flortaucipir indices showed the strongest clinical association among the studied biomarkers (flortaucipir, florbetapir, structural MRI, and CSF p-tau) and were predictive in the preclinical disease stages. Among the flortaucipir indices, the machine-learning derived SPARE-Tau index was the most sensitive clinical progression biomarker. The combination of different biomarker modalities better predicted cognitive performance.
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spelling pubmed-96328112022-11-04 SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline Toledo, Jon B. Rashid, Tanweer Liu, Hangfan Launer, Lenore Shaw, Leslie M. Heckbert, Susan R. Weiner, Michael Seshadri, Sudha Habes, Mohamad PLoS One Research Article BACKGROUND: Recently, tau PET tracers have shown strong associations with clinical outcomes in individuals with cognitive impairment and cognitively unremarkable elderly individuals. flortaucipir PET scans to measure tau deposition in multiple brain areas as the disease progresses. This information needs to be summarized to evaluate disease severity and predict disease progression. We, therefore, sought to develop a machine learning-derived index, SPARE-Tau, which successfully detects pathology in the earliest disease stages and accurately predicts progression compared to a priori-based region of interest approaches (ROI). METHODS: 587 participants of the Alzheimer’s Disease Neuroimaging Initiative (ADNI) cohort had flortaucipir scans, structural MRI scans, and an Aβ biomarker test (CSF or florbetapir PET) performed on the same visit. We derived the SPARE-Tau index in a subset of 367 participants. We evaluated associations with clinical measures for CSF p-tau, SPARE-MRI, and flortaucipir PET indices (SPARE-Tau, meta-temporal, and average Braak ROIs). Bootstrapped multivariate adaptive regression splines linear regression analyzed the association between the biomarkers and baseline ADAS-Cog13 scores. Bootstrapped multivariate linear regression models evaluated associations with clinical diagnosis. Cox-hazards and mixed-effects models investigated clinical progression and longitudinal ADAS-Cog13 changes. The Aβ positive cognitively unremarkable participants, not included in the SPARE-Tau training, served as an independent validation group. RESULTS: Compared to CSF p-tau, meta-temporal, and averaged Braak tau PET ROIs, SPARE-Tau showed the strongest association with baseline ADAS-cog13 scores and diagnosis. SPARE-Tau also presented the strongest association with clinical progression in cognitively unremarkable participants and longitudinal ADAS-Cog13 changes. Results were confirmed in the Aβ+ cognitively unremarkable hold-out sample participants. CSF p-tau showed the weakest cross-sectional associations and longitudinal prediction. DISCUSSION: Flortaucipir indices showed the strongest clinical association among the studied biomarkers (flortaucipir, florbetapir, structural MRI, and CSF p-tau) and were predictive in the preclinical disease stages. Among the flortaucipir indices, the machine-learning derived SPARE-Tau index was the most sensitive clinical progression biomarker. The combination of different biomarker modalities better predicted cognitive performance. Public Library of Science 2022-11-03 /pmc/articles/PMC9632811/ /pubmed/36327215 http://dx.doi.org/10.1371/journal.pone.0276392 Text en © 2022 Toledo et al 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 use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Toledo, Jon B.
Rashid, Tanweer
Liu, Hangfan
Launer, Lenore
Shaw, Leslie M.
Heckbert, Susan R.
Weiner, Michael
Seshadri, Sudha
Habes, Mohamad
SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline
title SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline
title_full SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline
title_fullStr SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline
title_full_unstemmed SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline
title_short SPARE-Tau: A flortaucipir machine-learning derived early predictor of cognitive decline
title_sort spare-tau: a flortaucipir machine-learning derived early predictor of cognitive decline
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9632811/
https://www.ncbi.nlm.nih.gov/pubmed/36327215
http://dx.doi.org/10.1371/journal.pone.0276392
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