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Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease

Brain tissue gene expression from donors with and without Alzheimer’s disease has been used to help inform the molecular changes associated with the development and potential treatment of this disorder. Here, we use a deep learning method to analyse RNA-seq data from 1114 brain donors from the Accel...

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Autores principales: Wang, Qi, Chen, Kewei, Su, Yi, Reiman, Eric M., Dudley, Joel T., Readhead, Benjamin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8728025/
https://www.ncbi.nlm.nih.gov/pubmed/34993477
http://dx.doi.org/10.1093/braincomms/fcab293
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author Wang, Qi
Chen, Kewei
Su, Yi
Reiman, Eric M.
Dudley, Joel T.
Readhead, Benjamin
author_facet Wang, Qi
Chen, Kewei
Su, Yi
Reiman, Eric M.
Dudley, Joel T.
Readhead, Benjamin
author_sort Wang, Qi
collection PubMed
description Brain tissue gene expression from donors with and without Alzheimer’s disease has been used to help inform the molecular changes associated with the development and potential treatment of this disorder. Here, we use a deep learning method to analyse RNA-seq data from 1114 brain donors from the Accelerating Medicines Project for Alzheimer’s Disease consortium to characterize post-mortem brain transcriptome signatures associated with amyloid-β plaque, tau neurofibrillary tangles and clinical severity in multiple Alzheimer’s disease dementia populations. Starting from the cross-sectional data in the Religious Orders Study and Memory and Aging Project cohort (n = 634), a deep learning framework was built to obtain a trajectory that mirrors Alzheimer’s disease progression. A severity index was defined to quantitatively measure the progression based on the trajectory. Network analysis was then carried out to identify key gene (index gene) modules present in the model underlying the progression. Within this data set, severity indexes were found to be very closely correlated with all Alzheimer’s disease neuropathology biomarkers (R ∼ 0.5, P < 1e−11) and global cognitive function (R = −0.68, P < 2.2e−16). We then applied the model to additional transcriptomic data sets from different brain regions (MAYO, n = 266; Mount Sinai Brain Bank, n = 214), and observed that the model remained significantly predictive (P < 1e−3) of neuropathology and clinical severity. The index genes that significantly contributed to the model were integrated with Alzheimer’s disease co-expression regulatory networks, resolving four discrete gene modules that are implicated in vascular and metabolic dysfunction in different cell types, respectively. Our work demonstrates the generalizability of this signature to frontal and temporal cortex measurements and additional brain donors with Alzheimer’s disease, other age-related neurological disorders and controls, and revealed that the transcriptomic network modules contribute to neuropathological and clinical disease severity. This study illustrates the promise of using deep learning methods to analyse heterogeneous omics data and discover potentially targetable molecular networks that can inform the development, treatment and prevention of neurodegenerative diseases like Alzheimer’s disease.
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spelling pubmed-87280252022-01-05 Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease Wang, Qi Chen, Kewei Su, Yi Reiman, Eric M. Dudley, Joel T. Readhead, Benjamin Brain Commun Original Article Brain tissue gene expression from donors with and without Alzheimer’s disease has been used to help inform the molecular changes associated with the development and potential treatment of this disorder. Here, we use a deep learning method to analyse RNA-seq data from 1114 brain donors from the Accelerating Medicines Project for Alzheimer’s Disease consortium to characterize post-mortem brain transcriptome signatures associated with amyloid-β plaque, tau neurofibrillary tangles and clinical severity in multiple Alzheimer’s disease dementia populations. Starting from the cross-sectional data in the Religious Orders Study and Memory and Aging Project cohort (n = 634), a deep learning framework was built to obtain a trajectory that mirrors Alzheimer’s disease progression. A severity index was defined to quantitatively measure the progression based on the trajectory. Network analysis was then carried out to identify key gene (index gene) modules present in the model underlying the progression. Within this data set, severity indexes were found to be very closely correlated with all Alzheimer’s disease neuropathology biomarkers (R ∼ 0.5, P < 1e−11) and global cognitive function (R = −0.68, P < 2.2e−16). We then applied the model to additional transcriptomic data sets from different brain regions (MAYO, n = 266; Mount Sinai Brain Bank, n = 214), and observed that the model remained significantly predictive (P < 1e−3) of neuropathology and clinical severity. The index genes that significantly contributed to the model were integrated with Alzheimer’s disease co-expression regulatory networks, resolving four discrete gene modules that are implicated in vascular and metabolic dysfunction in different cell types, respectively. Our work demonstrates the generalizability of this signature to frontal and temporal cortex measurements and additional brain donors with Alzheimer’s disease, other age-related neurological disorders and controls, and revealed that the transcriptomic network modules contribute to neuropathological and clinical disease severity. This study illustrates the promise of using deep learning methods to analyse heterogeneous omics data and discover potentially targetable molecular networks that can inform the development, treatment and prevention of neurodegenerative diseases like Alzheimer’s disease. Oxford University Press 2021-12-14 /pmc/articles/PMC8728025/ /pubmed/34993477 http://dx.doi.org/10.1093/braincomms/fcab293 Text en © The Author(s) 2021. 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
Wang, Qi
Chen, Kewei
Su, Yi
Reiman, Eric M.
Dudley, Joel T.
Readhead, Benjamin
Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease
title Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease
title_full Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease
title_fullStr Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease
title_full_unstemmed Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease
title_short Deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of Alzheimer’s disease
title_sort deep learning-based brain transcriptomic signatures associated with the neuropathological and clinical severity of alzheimer’s disease
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8728025/
https://www.ncbi.nlm.nih.gov/pubmed/34993477
http://dx.doi.org/10.1093/braincomms/fcab293
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