Asset Details
MbrlCatalogueTitleDetail
Do you wish to reserve the book?
Spatial analysis and high resolution mapping of the human whole-brain transcriptome for integrative analysis in neuroimaging
by
Kasper, Siegfried
, Gryglewski, Gregor
, Unterholzner, Jakob
, Hahn, Andreas
, Wadsak, Wolfgang
, Lanzenberger, Rupert
, Seiger, René
, James, Gregory Miles
, Michenthaler, Paul
, Godbersen, Godber Mathis
, Komorowski, Arkadiusz
, Mitterhauser, Markus
in
Brain imaging
/ Brain mapping
/ Brain research
/ Cerebellum
/ Cortex
/ DNA microarrays
/ Drosophila
/ Gene expression
/ Image processing
/ Insects
/ Kinases
/ Medical imaging
/ mRNA
/ Narcotics
/ Neuroimaging
/ PET
/ Positron emission tomography
/ Potassium
/ Proteins
/ Regression analysis
/ Schizophrenia
/ Sensory integration
/ Spatial analysis
/ Spatial distribution
/ Transcription
/ Transcriptome
2018
Hey, we have placed the reservation for you!
By the way, why not check out events that you can attend while you pick your title.
You are currently in the queue to collect this book. You will be notified once it is your turn to collect the book.
Oops! Something went wrong.
Looks like we were not able to place the reservation. Kindly try again later.
Are you sure you want to remove the book from the shelf?
Spatial analysis and high resolution mapping of the human whole-brain transcriptome for integrative analysis in neuroimaging
by
Kasper, Siegfried
, Gryglewski, Gregor
, Unterholzner, Jakob
, Hahn, Andreas
, Wadsak, Wolfgang
, Lanzenberger, Rupert
, Seiger, René
, James, Gregory Miles
, Michenthaler, Paul
, Godbersen, Godber Mathis
, Komorowski, Arkadiusz
, Mitterhauser, Markus
in
Brain imaging
/ Brain mapping
/ Brain research
/ Cerebellum
/ Cortex
/ DNA microarrays
/ Drosophila
/ Gene expression
/ Image processing
/ Insects
/ Kinases
/ Medical imaging
/ mRNA
/ Narcotics
/ Neuroimaging
/ PET
/ Positron emission tomography
/ Potassium
/ Proteins
/ Regression analysis
/ Schizophrenia
/ Sensory integration
/ Spatial analysis
/ Spatial distribution
/ Transcription
/ Transcriptome
2018
Oops! Something went wrong.
While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Spatial analysis and high resolution mapping of the human whole-brain transcriptome for integrative analysis in neuroimaging
by
Kasper, Siegfried
, Gryglewski, Gregor
, Unterholzner, Jakob
, Hahn, Andreas
, Wadsak, Wolfgang
, Lanzenberger, Rupert
, Seiger, René
, James, Gregory Miles
, Michenthaler, Paul
, Godbersen, Godber Mathis
, Komorowski, Arkadiusz
, Mitterhauser, Markus
in
Brain imaging
/ Brain mapping
/ Brain research
/ Cerebellum
/ Cortex
/ DNA microarrays
/ Drosophila
/ Gene expression
/ Image processing
/ Insects
/ Kinases
/ Medical imaging
/ mRNA
/ Narcotics
/ Neuroimaging
/ PET
/ Positron emission tomography
/ Potassium
/ Proteins
/ Regression analysis
/ Schizophrenia
/ Sensory integration
/ Spatial analysis
/ Spatial distribution
/ Transcription
/ Transcriptome
2018
Please be aware that the book you have requested cannot be checked out. If you would like to checkout this book, you can reserve another copy
We have requested the book for you!
Your request is successful and it will be processed during the Library working hours. Please check the status of your request in My Requests.
Oops! Something went wrong.
Looks like we were not able to place your request. Kindly try again later.
Spatial analysis and high resolution mapping of the human whole-brain transcriptome for integrative analysis in neuroimaging
Journal Article
Spatial analysis and high resolution mapping of the human whole-brain transcriptome for integrative analysis in neuroimaging
2018
Request Book From Autostore
and Choose the Collection Method
Overview
The quantification of big pools of diverse molecules provides important insights on brain function, but is often restricted to a limited number of observations, which impairs integration with other modalities. To resolve this issue, a method allowing for the prediction of mRNA expression in the entire brain based on microarray data provided in the Allen Human Brain Atlas was developed. Microarray data of 3702 samples from 6 brain donors was registered to MNI and cortical surface space using FreeSurfer. For each of 18,686 genes, spatial dependence of transcription was assessed using variogram modelling. Variogram models were employed in Gaussian process regression to calculate best linear unbiased predictions for gene expression at all locations represented in well-established imaging atlases for cortex, subcortical structures and cerebellum. For validation, predicted whole-brain transcription of the HTR1A gene was correlated with [carbonyl-11C]WAY-100635 positron emission tomography data collected from 30 healthy subjects. Prediction results showed minimal bias ranging within ±0.016 (cortical surface), ±0.12 (subcortical regions) and ±0.14 (cerebellum) in units of log2 expression intensity for all genes. Across genes, the correlation of predicted and observed mRNA expression in leave-one-out cross-validation correlated with the strength of spatial dependence (cortical surface: r = 0.91, subcortical regions: r = 0.85, cerebellum: r = 0.84). 816 out of 18,686 genes exhibited a high spatial dependence accounting for more than 50% of variance in the difference of gene expression on the cortical surface. In subcortical regions and cerebellum, different sets of genes were implicated by high spatially structured variability. For the serotonin 1A receptor, correlation between PET binding potentials and predicted comprehensive mRNA expression was markedly higher (Spearman ρ = 0.72 for cortical surface, ρ = 0.84 for subcortical regions) than correlation of PET and discrete samples only (ρ = 0.55 and ρ = 0.63, respectively). Prediction of mRNA expression in the entire human brain allows for intuitive visualization of gene transcription and seamless integration in multimodal analysis without bias arising from non-uniform distribution of available samples. Extension of this methodology promises to facilitate translation of omics research and enable investigation of human brain function at a systems level.
•Comprehensive mRNA expression atlases in MNI and surface space for each gene.•Gaussian process regression corrects bias from non-uniform distribution of samples.•Improved correlation with PET data shown for the serotonin 1A receptor.•Models of spatial dependence vary across brain structures for each gene.•High spatially structured variability indicates relevant topology of transcription.
This website uses cookies to ensure you get the best experience on our website.