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USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING

The advent of single-nucleus RNA-sequencing (snRNAseq) has allowed for the exploration of genetic signatures of the numerous cells in the brain. In particular, snRNAseq data can provide new insights into how many neurodegenerative diseases, such as Alzheimer’s Disease, alter cells in the brain. One...

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Autores principales: Paryani, Fahad, Menon, Vilas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6846659/
http://dx.doi.org/10.1093/geroni/igz038.3074
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author Paryani, Fahad
Menon, Vilas
author_facet Paryani, Fahad
Menon, Vilas
author_sort Paryani, Fahad
collection PubMed
description The advent of single-nucleus RNA-sequencing (snRNAseq) has allowed for the exploration of genetic signatures of the numerous cells in the brain. In particular, snRNAseq data can provide new insights into how many neurodegenerative diseases, such as Alzheimer’s Disease, alter cells in the brain. One major challenge with analyzing snRNAseq data is the lack of a systematic way to classify the various cell types across different datasets. To address this challenge, we developed a general classifier (“DeepSeq”) that uses state-of-the-art deep learning approaches. We trained our model on multiple snRNAseq datasets derived from post-mortem brain tissue in individuals with and without clinical diagnosis of Alzheimer’s Disease from the ROSMAP cohorts. The two snRNAseq datasets contained 70,064 nuclei and 170,275 nuclei. The two studies employed different clustering techniques, and identified 44 and 18 putative cell types. To map these disparate cluster identities across datasets, we extracted the most relevant genes and trained two separate networks, one on each dataset. We then validated each classifier separately on the holdout cells. The resulting classifier accuracy were 87% and 94%. To map clusters across datasets, we then applied each classifier to the other dataset. Both classifiers yielded mappings that reflected the overall biology, correctly categorizing the nuclei into broad and fine cell type classes. Although validation on additional datasets would expand the generality of this approach, our results show that DeepSeq is an easily implementable classification tool that can assign identity to nuclei in new snRNAseq datasets without the need for preprocessing or cross-batch alignment.
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spelling pubmed-68466592019-11-21 USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING Paryani, Fahad Menon, Vilas Innov Aging Session Lb935 (Late Breaking Poster) The advent of single-nucleus RNA-sequencing (snRNAseq) has allowed for the exploration of genetic signatures of the numerous cells in the brain. In particular, snRNAseq data can provide new insights into how many neurodegenerative diseases, such as Alzheimer’s Disease, alter cells in the brain. One major challenge with analyzing snRNAseq data is the lack of a systematic way to classify the various cell types across different datasets. To address this challenge, we developed a general classifier (“DeepSeq”) that uses state-of-the-art deep learning approaches. We trained our model on multiple snRNAseq datasets derived from post-mortem brain tissue in individuals with and without clinical diagnosis of Alzheimer’s Disease from the ROSMAP cohorts. The two snRNAseq datasets contained 70,064 nuclei and 170,275 nuclei. The two studies employed different clustering techniques, and identified 44 and 18 putative cell types. To map these disparate cluster identities across datasets, we extracted the most relevant genes and trained two separate networks, one on each dataset. We then validated each classifier separately on the holdout cells. The resulting classifier accuracy were 87% and 94%. To map clusters across datasets, we then applied each classifier to the other dataset. Both classifiers yielded mappings that reflected the overall biology, correctly categorizing the nuclei into broad and fine cell type classes. Although validation on additional datasets would expand the generality of this approach, our results show that DeepSeq is an easily implementable classification tool that can assign identity to nuclei in new snRNAseq datasets without the need for preprocessing or cross-batch alignment. Oxford University Press 2019-11-08 /pmc/articles/PMC6846659/ http://dx.doi.org/10.1093/geroni/igz038.3074 Text en © The Author(s) 2019. Published by Oxford University Press on behalf of The Gerontological Society of America. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Session Lb935 (Late Breaking Poster)
Paryani, Fahad
Menon, Vilas
USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING
title USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING
title_full USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING
title_fullStr USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING
title_full_unstemmed USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING
title_short USING NEURAL NETWORK TO UNCOVER CELL TYPES THROUGH SNRNA SEQUENCING
title_sort using neural network to uncover cell types through snrna sequencing
topic Session Lb935 (Late Breaking Poster)
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6846659/
http://dx.doi.org/10.1093/geroni/igz038.3074
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