SlideShare ist ein Scribd-Unternehmen logo
1 von 2
Downloaden Sie, um offline zu lesen
Full manuscript:
https://www.liebertpub.com/doi/10.1089/omi.2018.0097
Figure 1. Multi-omic data integration utilizes empirical,
functional and other techniques to combine information from
multiple omic domains. This systems approach enables robust
characterization of biochemical signatures reflective of
organismal phenotypes.
Figure 2. DL architectures may provide unique
opportunities to encode locally optimal predictors in a
variety of organisms (cellular, mouse, primate and
human) and then integrate their representations of
omic layers. Through transfer learning, researchers
may leverage larger expert derived models to improve
DL performance for their smaller datasets.
Figure 3. Deep learning model architectures and training
techniques share many similarities with biological message
passing systems. DL models contain a minimum of three layers:
input, hidden and output. This could mimic representation of
relationships between gene transcription, protein expression
and metabolite concentrations, but can also extend other omic
layers. Interesting parallels between computational and
biological optimizations such as backward propagation in DL
and signal inhibition in omics have also emerged.
Figure 4. Personalized medicine is a quickly growing
area of research that requires complex data encoding
and integration tasks which are well suited for deep
learning.

Weitere ähnliche Inhalte

Was ist angesagt?

Prediction of transcription factor binding to DNA using rule induction methods
Prediction of transcription factor binding to DNA using rule induction methodsPrediction of transcription factor binding to DNA using rule induction methods
Prediction of transcription factor binding to DNA using rule induction methodsziggurat
 
Protein Structure, Databases and Structural Alignment
Protein Structure, Databases and Structural AlignmentProtein Structure, Databases and Structural Alignment
Protein Structure, Databases and Structural AlignmentSaramita De Chakravarti
 
Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...
Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...
Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...journal ijrtem
 
Poster genome engineering & Synthetic Biology 2016
Poster genome engineering & Synthetic Biology 2016Poster genome engineering & Synthetic Biology 2016
Poster genome engineering & Synthetic Biology 2016Michiel Stock
 
NatashaBME1450.doc
NatashaBME1450.docNatashaBME1450.doc
NatashaBME1450.docbutest
 
The Relational Database - Chapter 1
The Relational Database - Chapter 1The Relational Database - Chapter 1
The Relational Database - Chapter 1Munazza-Mah-Jabeen
 
Phylogenetic prediction - maximum parsimony method
Phylogenetic prediction - maximum parsimony methodPhylogenetic prediction - maximum parsimony method
Phylogenetic prediction - maximum parsimony methodAfnan Zuiter
 
Annotation of SBML Models Through Rule-Based Semantic Integration
Annotation of SBML Models Through Rule-Based Semantic IntegrationAnnotation of SBML Models Through Rule-Based Semantic Integration
Annotation of SBML Models Through Rule-Based Semantic IntegrationAllyson Lister
 
Propagation of data fusion
Propagation of data fusionPropagation of data fusion
Propagation of data fusionieeepondy
 
Bioinformatics data mining
Bioinformatics data miningBioinformatics data mining
Bioinformatics data miningSangeeta Das
 
Molecular Evolution and Phylogenetics (2009)
Molecular Evolution and Phylogenetics (2009)Molecular Evolution and Phylogenetics (2009)
Molecular Evolution and Phylogenetics (2009)Hernán Dopazo
 
From systems biology
From systems biologyFrom systems biology
From systems biologybrnbarcelona
 

Was ist angesagt? (20)

Molecular phylogenetics
Molecular phylogeneticsMolecular phylogenetics
Molecular phylogenetics
 
Automatic Parallelization for Parallel Architectures Using Smith Waterman Alg...
Automatic Parallelization for Parallel Architectures Using Smith Waterman Alg...Automatic Parallelization for Parallel Architectures Using Smith Waterman Alg...
Automatic Parallelization for Parallel Architectures Using Smith Waterman Alg...
 
Prediction of transcription factor binding to DNA using rule induction methods
Prediction of transcription factor binding to DNA using rule induction methodsPrediction of transcription factor binding to DNA using rule induction methods
Prediction of transcription factor binding to DNA using rule induction methods
 
Protein Structure, Databases and Structural Alignment
Protein Structure, Databases and Structural AlignmentProtein Structure, Databases and Structural Alignment
Protein Structure, Databases and Structural Alignment
 
Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...
Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...
Performance Improvement of BLAST with Use of MSA Techniques to Search Ancesto...
 
SEQUENCE ANALYSIS
SEQUENCE ANALYSISSEQUENCE ANALYSIS
SEQUENCE ANALYSIS
 
Homology modeling
Homology modelingHomology modeling
Homology modeling
 
Poster genome engineering & Synthetic Biology 2016
Poster genome engineering & Synthetic Biology 2016Poster genome engineering & Synthetic Biology 2016
Poster genome engineering & Synthetic Biology 2016
 
Bioinformatics
BioinformaticsBioinformatics
Bioinformatics
 
NatashaBME1450.doc
NatashaBME1450.docNatashaBME1450.doc
NatashaBME1450.doc
 
The Relational Database - Chapter 1
The Relational Database - Chapter 1The Relational Database - Chapter 1
The Relational Database - Chapter 1
 
Phylogenetic prediction - maximum parsimony method
Phylogenetic prediction - maximum parsimony methodPhylogenetic prediction - maximum parsimony method
Phylogenetic prediction - maximum parsimony method
 
The tree of life
The tree of lifeThe tree of life
The tree of life
 
Annotation of SBML Models Through Rule-Based Semantic Integration
Annotation of SBML Models Through Rule-Based Semantic IntegrationAnnotation of SBML Models Through Rule-Based Semantic Integration
Annotation of SBML Models Through Rule-Based Semantic Integration
 
Propagation of data fusion
Propagation of data fusionPropagation of data fusion
Propagation of data fusion
 
FAIR data management in biomedicine
FAIR data management  in biomedicineFAIR data management  in biomedicine
FAIR data management in biomedicine
 
Bioinformatics data mining
Bioinformatics data miningBioinformatics data mining
Bioinformatics data mining
 
Molecular Evolution and Phylogenetics (2009)
Molecular Evolution and Phylogenetics (2009)Molecular Evolution and Phylogenetics (2009)
Molecular Evolution and Phylogenetics (2009)
 
Sir hussain
Sir hussainSir hussain
Sir hussain
 
From systems biology
From systems biologyFrom systems biology
From systems biology
 

Ähnlich wie Rise of Deep Learning for Genomic, Proteomic, and Metabolomic Data Integration in Precision Medicine

TWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLS
TWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLSTWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLS
TWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLSIJDKP
 
Technology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network RepresentationsTechnology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network RepresentationsAlexander Pico
 
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...IJNSA Journal
 
Towards a Query Rewriting Algorithm Over Proteomics XML Resources
Towards a Query Rewriting Algorithm Over Proteomics XML ResourcesTowards a Query Rewriting Algorithm Over Proteomics XML Resources
Towards a Query Rewriting Algorithm Over Proteomics XML ResourcesCSCJournals
 
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...IJNSA Journal
 
Machine Learning and Reasoning for Drug Discovery
Machine Learning and Reasoning for Drug DiscoveryMachine Learning and Reasoning for Drug Discovery
Machine Learning and Reasoning for Drug DiscoveryDeakin University
 
Biomedical-named entity recognition using CUDA accelerated KNN algorithm
Biomedical-named entity recognition using CUDA accelerated KNN algorithmBiomedical-named entity recognition using CUDA accelerated KNN algorithm
Biomedical-named entity recognition using CUDA accelerated KNN algorithmTELKOMNIKA JOURNAL
 
A Critical Survey On Current Literature-Based Discovery Models
A Critical Survey On Current Literature-Based Discovery ModelsA Critical Survey On Current Literature-Based Discovery Models
A Critical Survey On Current Literature-Based Discovery ModelsDon Dooley
 
Technology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential NetworksTechnology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential NetworksAlexander Pico
 
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEYUSING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEYcseij
 
Bioinformatics and the logic of life
Bioinformatics and the logic of lifeBioinformatics and the logic of life
Bioinformatics and the logic of lifeM. Gonzalo Claros
 
(Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery
(Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery (Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery
(Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery Benjamin Good
 
An approach for self creating software code in bionets with artificial embryo...
An approach for self creating software code in bionets with artificial embryo...An approach for self creating software code in bionets with artificial embryo...
An approach for self creating software code in bionets with artificial embryo...eSAT Publishing House
 
Semantic Similarity Measures between Terms in the Biomedical Domain within f...
 Semantic Similarity Measures between Terms in the Biomedical Domain within f... Semantic Similarity Measures between Terms in the Biomedical Domain within f...
Semantic Similarity Measures between Terms in the Biomedical Domain within f...Editor IJCATR
 
Knowledge Driven User Interfaces for Complex Biological Queries
Knowledge Driven User Interfaces for Complex Biological QueriesKnowledge Driven User Interfaces for Complex Biological Queries
Knowledge Driven User Interfaces for Complex Biological Queriesalexander garcia
 
Computer immunology
Computer immunologyComputer immunology
Computer immunologyRohan Ahmed
 
SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS
SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS
SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS cscpconf
 

Ähnlich wie Rise of Deep Learning for Genomic, Proteomic, and Metabolomic Data Integration in Precision Medicine (20)

TWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLS
TWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLSTWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLS
TWO LEVEL SELF-SUPERVISED RELATION EXTRACTION FROM MEDLINE USING UMLS
 
Technology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network RepresentationsTechnology R&D Theme 3: Multi-scale Network Representations
Technology R&D Theme 3: Multi-scale Network Representations
 
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...ONTOLOGY-DRIVEN INFORMATION RETRIEVAL  FOR HEALTHCARE INFORMATION SYSTEM :   ...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : ...
 
evolutionary game theory presentation
evolutionary game theory presentationevolutionary game theory presentation
evolutionary game theory presentation
 
Towards a Query Rewriting Algorithm Over Proteomics XML Resources
Towards a Query Rewriting Algorithm Over Proteomics XML ResourcesTowards a Query Rewriting Algorithm Over Proteomics XML Resources
Towards a Query Rewriting Algorithm Over Proteomics XML Resources
 
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...
ONTOLOGY-DRIVEN INFORMATION RETRIEVAL FOR HEALTHCARE INFORMATION SYSTEM : A C...
 
Machine Learning and Reasoning for Drug Discovery
Machine Learning and Reasoning for Drug DiscoveryMachine Learning and Reasoning for Drug Discovery
Machine Learning and Reasoning for Drug Discovery
 
Poster CBIS 2012
Poster CBIS 2012Poster CBIS 2012
Poster CBIS 2012
 
Biomedical-named entity recognition using CUDA accelerated KNN algorithm
Biomedical-named entity recognition using CUDA accelerated KNN algorithmBiomedical-named entity recognition using CUDA accelerated KNN algorithm
Biomedical-named entity recognition using CUDA accelerated KNN algorithm
 
A Critical Survey On Current Literature-Based Discovery Models
A Critical Survey On Current Literature-Based Discovery ModelsA Critical Survey On Current Literature-Based Discovery Models
A Critical Survey On Current Literature-Based Discovery Models
 
Technology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential NetworksTechnology R&D Theme 1: Differential Networks
Technology R&D Theme 1: Differential Networks
 
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEYUSING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
USING ONTOLOGIES TO OVERCOMING DRAWBACKS OF DATABASES AND VICE VERSA: A SURVEY
 
Bioinformatics and the logic of life
Bioinformatics and the logic of lifeBioinformatics and the logic of life
Bioinformatics and the logic of life
 
(Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery
(Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery (Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery
(Poster) Knowledge.Bio: an Interactive Tool for Literature-based Discovery
 
An approach for self creating software code in bionets with artificial embryo...
An approach for self creating software code in bionets with artificial embryo...An approach for self creating software code in bionets with artificial embryo...
An approach for self creating software code in bionets with artificial embryo...
 
Semantic Similarity Measures between Terms in the Biomedical Domain within f...
 Semantic Similarity Measures between Terms in the Biomedical Domain within f... Semantic Similarity Measures between Terms in the Biomedical Domain within f...
Semantic Similarity Measures between Terms in the Biomedical Domain within f...
 
Rudge2012
Rudge2012Rudge2012
Rudge2012
 
Knowledge Driven User Interfaces for Complex Biological Queries
Knowledge Driven User Interfaces for Complex Biological QueriesKnowledge Driven User Interfaces for Complex Biological Queries
Knowledge Driven User Interfaces for Complex Biological Queries
 
Computer immunology
Computer immunologyComputer immunology
Computer immunology
 
SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS
SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS
SBML FOR OPTIMIZING DECISION SUPPORT'S TOOLS
 

Mehr von Dmitry Grapov

R programming for Data Science - A Beginner’s Guide
R programming for Data Science - A Beginner’s GuideR programming for Data Science - A Beginner’s Guide
R programming for Data Science - A Beginner’s GuideDmitry Grapov
 
Network mapping 101 course
Network mapping 101 courseNetwork mapping 101 course
Network mapping 101 courseDmitry Grapov
 
Dmitry Grapov Resume and CV
Dmitry Grapov Resume and CVDmitry Grapov Resume and CV
Dmitry Grapov Resume and CVDmitry Grapov
 
Machine Learning Powered Metabolomic Network Analysis
Machine Learning Powered Metabolomic Network AnalysisMachine Learning Powered Metabolomic Network Analysis
Machine Learning Powered Metabolomic Network AnalysisDmitry Grapov
 
Complex Systems Biology Informed Data Analysis and Machine Learning
Complex Systems Biology Informed Data Analysis and Machine LearningComplex Systems Biology Informed Data Analysis and Machine Learning
Complex Systems Biology Informed Data Analysis and Machine LearningDmitry Grapov
 
Data analysis workflows part 1 2015
Data analysis workflows part 1 2015Data analysis workflows part 1 2015
Data analysis workflows part 1 2015Dmitry Grapov
 
Data analysis workflows part 2 2015
Data analysis workflows part 2 2015Data analysis workflows part 2 2015
Data analysis workflows part 2 2015Dmitry Grapov
 
Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses
Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses
Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses Dmitry Grapov
 
Case Study: Overview of Metabolomic Data Normalization Strategies
Case Study: Overview of Metabolomic Data Normalization StrategiesCase Study: Overview of Metabolomic Data Normalization Strategies
Case Study: Overview of Metabolomic Data Normalization StrategiesDmitry Grapov
 
Mapping to the Metabolomic Manifold
Mapping to the Metabolomic ManifoldMapping to the Metabolomic Manifold
Mapping to the Metabolomic ManifoldDmitry Grapov
 
3 data normalization (2014 lab tutorial)
3  data normalization (2014 lab tutorial)3  data normalization (2014 lab tutorial)
3 data normalization (2014 lab tutorial)Dmitry Grapov
 
Metabolomic Data Analysis Workshop and Tutorials (2014)
Metabolomic Data Analysis Workshop and Tutorials (2014)Metabolomic Data Analysis Workshop and Tutorials (2014)
Metabolomic Data Analysis Workshop and Tutorials (2014)Dmitry Grapov
 
Normalization of Large-Scale Metabolomic Studies 2014
Normalization of Large-Scale Metabolomic Studies 2014Normalization of Large-Scale Metabolomic Studies 2014
Normalization of Large-Scale Metabolomic Studies 2014Dmitry Grapov
 
Gene Ontology Enrichment Network Analysis -Tutorial
Gene Ontology Enrichment Network Analysis -TutorialGene Ontology Enrichment Network Analysis -Tutorial
Gene Ontology Enrichment Network Analysis -TutorialDmitry Grapov
 
Prote-OMIC Data Analysis and Visualization
Prote-OMIC Data Analysis and VisualizationProte-OMIC Data Analysis and Visualization
Prote-OMIC Data Analysis and VisualizationDmitry Grapov
 
American Society of Mass Spectrommetry Conference 2014
American Society of Mass Spectrommetry Conference 2014American Society of Mass Spectrommetry Conference 2014
American Society of Mass Spectrommetry Conference 2014Dmitry Grapov
 
Multivarite and network tools for biological data analysis
Multivarite and network tools for biological data analysisMultivarite and network tools for biological data analysis
Multivarite and network tools for biological data analysisDmitry Grapov
 
Data Normalization Approaches for Large-scale Biological Studies
Data Normalization Approaches for Large-scale Biological StudiesData Normalization Approaches for Large-scale Biological Studies
Data Normalization Approaches for Large-scale Biological StudiesDmitry Grapov
 
Omic Data Integration Strategies
Omic Data Integration StrategiesOmic Data Integration Strategies
Omic Data Integration StrategiesDmitry Grapov
 

Mehr von Dmitry Grapov (20)

R programming for Data Science - A Beginner’s Guide
R programming for Data Science - A Beginner’s GuideR programming for Data Science - A Beginner’s Guide
R programming for Data Science - A Beginner’s Guide
 
Network mapping 101 course
Network mapping 101 courseNetwork mapping 101 course
Network mapping 101 course
 
Dmitry Grapov Resume and CV
Dmitry Grapov Resume and CVDmitry Grapov Resume and CV
Dmitry Grapov Resume and CV
 
Machine Learning Powered Metabolomic Network Analysis
Machine Learning Powered Metabolomic Network AnalysisMachine Learning Powered Metabolomic Network Analysis
Machine Learning Powered Metabolomic Network Analysis
 
Complex Systems Biology Informed Data Analysis and Machine Learning
Complex Systems Biology Informed Data Analysis and Machine LearningComplex Systems Biology Informed Data Analysis and Machine Learning
Complex Systems Biology Informed Data Analysis and Machine Learning
 
Data analysis workflows part 1 2015
Data analysis workflows part 1 2015Data analysis workflows part 1 2015
Data analysis workflows part 1 2015
 
Data analysis workflows part 2 2015
Data analysis workflows part 2 2015Data analysis workflows part 2 2015
Data analysis workflows part 2 2015
 
Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses
Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses
Metabolomics and Beyond Challenges and Strategies for Next-gen Omic Analyses
 
Case Study: Overview of Metabolomic Data Normalization Strategies
Case Study: Overview of Metabolomic Data Normalization StrategiesCase Study: Overview of Metabolomic Data Normalization Strategies
Case Study: Overview of Metabolomic Data Normalization Strategies
 
Modeling poster
Modeling posterModeling poster
Modeling poster
 
Mapping to the Metabolomic Manifold
Mapping to the Metabolomic ManifoldMapping to the Metabolomic Manifold
Mapping to the Metabolomic Manifold
 
3 data normalization (2014 lab tutorial)
3  data normalization (2014 lab tutorial)3  data normalization (2014 lab tutorial)
3 data normalization (2014 lab tutorial)
 
Metabolomic Data Analysis Workshop and Tutorials (2014)
Metabolomic Data Analysis Workshop and Tutorials (2014)Metabolomic Data Analysis Workshop and Tutorials (2014)
Metabolomic Data Analysis Workshop and Tutorials (2014)
 
Normalization of Large-Scale Metabolomic Studies 2014
Normalization of Large-Scale Metabolomic Studies 2014Normalization of Large-Scale Metabolomic Studies 2014
Normalization of Large-Scale Metabolomic Studies 2014
 
Gene Ontology Enrichment Network Analysis -Tutorial
Gene Ontology Enrichment Network Analysis -TutorialGene Ontology Enrichment Network Analysis -Tutorial
Gene Ontology Enrichment Network Analysis -Tutorial
 
Prote-OMIC Data Analysis and Visualization
Prote-OMIC Data Analysis and VisualizationProte-OMIC Data Analysis and Visualization
Prote-OMIC Data Analysis and Visualization
 
American Society of Mass Spectrommetry Conference 2014
American Society of Mass Spectrommetry Conference 2014American Society of Mass Spectrommetry Conference 2014
American Society of Mass Spectrommetry Conference 2014
 
Multivarite and network tools for biological data analysis
Multivarite and network tools for biological data analysisMultivarite and network tools for biological data analysis
Multivarite and network tools for biological data analysis
 
Data Normalization Approaches for Large-scale Biological Studies
Data Normalization Approaches for Large-scale Biological StudiesData Normalization Approaches for Large-scale Biological Studies
Data Normalization Approaches for Large-scale Biological Studies
 
Omic Data Integration Strategies
Omic Data Integration StrategiesOmic Data Integration Strategies
Omic Data Integration Strategies
 

Kürzlich hochgeladen

Factory Acceptance Test( FAT).pptx .
Factory Acceptance Test( FAT).pptx       .Factory Acceptance Test( FAT).pptx       .
Factory Acceptance Test( FAT).pptx .Poonam Aher Patil
 
POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.Silpa
 
development of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virusdevelopment of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virusNazaninKarimi6
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsOrtegaSyrineMay
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY1301aanya
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptxSilpa
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxSuji236384
 
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...Monika Rani
 
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bAsymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bSérgio Sacani
 
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryFAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryAlex Henderson
 
module for grade 9 for distance learning
module for grade 9 for distance learningmodule for grade 9 for distance learning
module for grade 9 for distance learninglevieagacer
 
pumpkin fruit fly, water melon fruit fly, cucumber fruit fly
pumpkin fruit fly, water melon fruit fly, cucumber fruit flypumpkin fruit fly, water melon fruit fly, cucumber fruit fly
pumpkin fruit fly, water melon fruit fly, cucumber fruit flyPRADYUMMAURYA1
 
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate ProfessorThyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate Professormuralinath2
 
Zoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfZoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfSumit Kumar yadav
 
Molecular markers- RFLP, RAPD, AFLP, SNP etc.
Molecular markers- RFLP, RAPD, AFLP, SNP etc.Molecular markers- RFLP, RAPD, AFLP, SNP etc.
Molecular markers- RFLP, RAPD, AFLP, SNP etc.Silpa
 
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsSérgio Sacani
 
GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)Areesha Ahmad
 
Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.Silpa
 

Kürzlich hochgeladen (20)

Factory Acceptance Test( FAT).pptx .
Factory Acceptance Test( FAT).pptx       .Factory Acceptance Test( FAT).pptx       .
Factory Acceptance Test( FAT).pptx .
 
POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.
 
development of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virusdevelopment of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virus
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its Functions
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptx
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
 
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
 
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bAsymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
 
Clean In Place(CIP).pptx .
Clean In Place(CIP).pptx                 .Clean In Place(CIP).pptx                 .
Clean In Place(CIP).pptx .
 
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryFAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
 
module for grade 9 for distance learning
module for grade 9 for distance learningmodule for grade 9 for distance learning
module for grade 9 for distance learning
 
pumpkin fruit fly, water melon fruit fly, cucumber fruit fly
pumpkin fruit fly, water melon fruit fly, cucumber fruit flypumpkin fruit fly, water melon fruit fly, cucumber fruit fly
pumpkin fruit fly, water melon fruit fly, cucumber fruit fly
 
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate ProfessorThyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
 
Zoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfZoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdf
 
Molecular markers- RFLP, RAPD, AFLP, SNP etc.
Molecular markers- RFLP, RAPD, AFLP, SNP etc.Molecular markers- RFLP, RAPD, AFLP, SNP etc.
Molecular markers- RFLP, RAPD, AFLP, SNP etc.
 
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune WaterworldsBiogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
Biogenic Sulfur Gases as Biosignatures on Temperate Sub-Neptune Waterworlds
 
Site Acceptance Test .
Site Acceptance Test                    .Site Acceptance Test                    .
Site Acceptance Test .
 
GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)GBSN - Microbiology (Unit 1)
GBSN - Microbiology (Unit 1)
 
Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.
 

Rise of Deep Learning for Genomic, Proteomic, and Metabolomic Data Integration in Precision Medicine

  • 2. Figure 1. Multi-omic data integration utilizes empirical, functional and other techniques to combine information from multiple omic domains. This systems approach enables robust characterization of biochemical signatures reflective of organismal phenotypes. Figure 2. DL architectures may provide unique opportunities to encode locally optimal predictors in a variety of organisms (cellular, mouse, primate and human) and then integrate their representations of omic layers. Through transfer learning, researchers may leverage larger expert derived models to improve DL performance for their smaller datasets. Figure 3. Deep learning model architectures and training techniques share many similarities with biological message passing systems. DL models contain a minimum of three layers: input, hidden and output. This could mimic representation of relationships between gene transcription, protein expression and metabolite concentrations, but can also extend other omic layers. Interesting parallels between computational and biological optimizations such as backward propagation in DL and signal inhibition in omics have also emerged. Figure 4. Personalized medicine is a quickly growing area of research that requires complex data encoding and integration tasks which are well suited for deep learning.