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Systems Analytics and Integration of Big Omics Data



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Autore: Hardiman Gary Visualizza persona
Titolo: Systems Analytics and Integration of Big Omics Data Visualizza cluster
Pubblicazione: MDPI - Multidisciplinary Digital Publishing Institute, 2020
Descrizione fisica: 1 online resource (202 p.)
Soggetto topico: Medicine
Soggetto non controllato: algorithm development for network integration
Alzheimer's disease
amyloid-beta
annotation
artificial intelligence
biocuration
bioinformatics pipelines
candidate genes
causal inference
cell lines
challenges
chromatin modification
class imbalance
clinical data
cognitive impairment
curse of dimensionality
data integration
database
deep phenotype
dementia
direct effect
disease variants
distance correlation
drug sensitivity
enrichment analysis
epidemiological data
epigenetics
feature selection
Gene Ontology
gene-environment interactions
genomics
genotype
heterogeneous data
indirect effect
integrative analytics
joint modeling
KEGG pathways
logic forest
machine learning
microtubule-associated protein tau
miRNA-gene expression networks
missing data
multi-omics
multiomics integration
multivariate analysis
multivariate causal mediation
n/a
network topology analysis
neurodegeneration
non-omics data
omics data
pharmacogenomics
phenomics
phenotype
plot visualization
precision medicine informatics
proteomic analysis
regulatory genomics
RNA expression
scalability
sequencing
support vector machine
systemic lupus erythematosus
tissue classification
tissue-specific expressed genes
transcriptome
Sommario/riassunto: A "genotype"" is essentially an organism's full hereditary information which is obtained from its parents. A ""phenotype"" is an organism's actual observed physical and behavioral properties. These may include traits such as morphology, size, height, eye color, metabolism, etc. One of the pressing challenges in computational and systems biology is genotype-to-phenotype prediction. This is challenging given the amount of data generated by modern Omics technologies. This "Big Data" is so large and complex that traditional data processing applications are not up to the task. Challenges arise in collection, analysis, mining, sharing, transfer, visualization, archiving, and integration of these data. In this Special Issue, there is a focus on the systems-level analysis of Omics data, recent developments in gene ontology annotation, and advances in biological pathways and network biology. The integration of Omics data with clinical and biomedical data using machine learning is explored. This Special Issue covers new methodologies in the context of gene-environment interactions, tissue-specific gene expression, and how external factors or host genetics impact the microbiome.
Titolo autorizzato: Systems Analytics and Integration of Big Omics Data  Visualizza cluster
ISBN: 3-03928-745-1
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910404089603321
Lo trovi qui: Univ. Federico II
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