Enviar pesquisa
Carregar
Using side effects for drug target identification
•
Transferir como PPT, PDF
•
0 gostou
•
313 visualizações
Lars Juhl Jensen
Seguir
Saúde e medicina
Tecnologia
Denunciar
Compartilhar
Denunciar
Compartilhar
1 de 65
Baixar agora
Recomendados
Using side effects for drug target identification
Using side effects for drug target identification
Lars Juhl Jensen
Identification of drug targets from side-effect similarity
Identification of drug targets from side-effect similarity
Lars Juhl Jensen
Using side effects for drug target identification
Using side effects for drug target identification
Lars Juhl Jensen
Using side effects for drug target identification
Using side effects for drug target identification
Lars Juhl Jensen
Data integration: The STITCH database of protein-small molecule interactions
Data integration: The STITCH database of protein-small molecule interactions
Lars Juhl Jensen
Text and data mining
Text and data mining
Lars Juhl Jensen
Personalized models for Quantitative Systems Pharmacology
Personalized models for Quantitative Systems Pharmacology
Rutgers University
Nephelometry
Nephelometry
BriannaMcKenna1
Recomendados
Using side effects for drug target identification
Using side effects for drug target identification
Lars Juhl Jensen
Identification of drug targets from side-effect similarity
Identification of drug targets from side-effect similarity
Lars Juhl Jensen
Using side effects for drug target identification
Using side effects for drug target identification
Lars Juhl Jensen
Using side effects for drug target identification
Using side effects for drug target identification
Lars Juhl Jensen
Data integration: The STITCH database of protein-small molecule interactions
Data integration: The STITCH database of protein-small molecule interactions
Lars Juhl Jensen
Text and data mining
Text and data mining
Lars Juhl Jensen
Personalized models for Quantitative Systems Pharmacology
Personalized models for Quantitative Systems Pharmacology
Rutgers University
Nephelometry
Nephelometry
BriannaMcKenna1
Network biology - A basis for large-scale biomedica data mining
Network biology - A basis for large-scale biomedica data mining
Lars Juhl Jensen
Marcus-Yaffee-Flier
Marcus-Yaffee-Flier
Marcus Yaffee
Patient Centered Care | Unit 8a Lecture
Patient Centered Care | Unit 8a Lecture
CMDLMS
Disease Systems Biology
Disease Systems Biology
Lars Juhl Jensen
Disease systems biology
Disease systems biology
Lars Juhl Jensen
Thomas S. Price, Ph.D. Career resume, Jan 2017
Thomas S. Price, Ph.D. Career resume, Jan 2017
Tom Price
Jeopardy ebp
Jeopardy ebp
dmromanik
Juan Lab Summary 2
Juan Lab Summary 2
maldjuan
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Lars Juhl Jensen
Twitter For Business The What, Why And How To Get Started Jonnie Jensen I...
Twitter For Business The What, Why And How To Get Started Jonnie Jensen I...
jonnie jensen
Aplicaciones de herramientas digitales en el aula
Aplicaciones de herramientas digitales en el aula
María Gabriela Galli
Beijing
Beijing
nachaycoka.blogspot.com
Integration of heterogeneous data
Integration of heterogeneous data
Lars Juhl Jensen
Live+Social - Being Remarkable - the key to social business success
Live+Social - Being Remarkable - the key to social business success
jonnie jensen
One tagger, many uses - Illustrating the power of ontologies in named entity ...
One tagger, many uses - Illustrating the power of ontologies in named entity ...
Lars Juhl Jensen
STRING - Protein networks from data and text mining
STRING - Protein networks from data and text mining
Lars Juhl Jensen
Identification of drug targets from side-effect similarity
Identification of drug targets from side-effect similarity
Lars Juhl Jensen
Prediction of protein-small molecule networks through large-scale data integr...
Prediction of protein-small molecule networks through large-scale data integr...
Lars Juhl Jensen
Predicting novel targets for existing drugs using side effect information
Predicting novel targets for existing drugs using side effect information
Lars Juhl Jensen
Data integration: The STITCH database of protein–small molecule interactions
Data integration: The STITCH database of protein–small molecule interactions
Lars Juhl Jensen
Network integration of data and text
Network integration of data and text
Lars Juhl Jensen
Computational Biology - Signaling networks and drug repositioning
Computational Biology - Signaling networks and drug repositioning
Lars Juhl Jensen
Mais conteúdo relacionado
Mais procurados
Network biology - A basis for large-scale biomedica data mining
Network biology - A basis for large-scale biomedica data mining
Lars Juhl Jensen
Marcus-Yaffee-Flier
Marcus-Yaffee-Flier
Marcus Yaffee
Patient Centered Care | Unit 8a Lecture
Patient Centered Care | Unit 8a Lecture
CMDLMS
Disease Systems Biology
Disease Systems Biology
Lars Juhl Jensen
Disease systems biology
Disease systems biology
Lars Juhl Jensen
Thomas S. Price, Ph.D. Career resume, Jan 2017
Thomas S. Price, Ph.D. Career resume, Jan 2017
Tom Price
Jeopardy ebp
Jeopardy ebp
dmromanik
Juan Lab Summary 2
Juan Lab Summary 2
maldjuan
Mais procurados
(8)
Network biology - A basis for large-scale biomedica data mining
Network biology - A basis for large-scale biomedica data mining
Marcus-Yaffee-Flier
Marcus-Yaffee-Flier
Patient Centered Care | Unit 8a Lecture
Patient Centered Care | Unit 8a Lecture
Disease Systems Biology
Disease Systems Biology
Disease systems biology
Disease systems biology
Thomas S. Price, Ph.D. Career resume, Jan 2017
Thomas S. Price, Ph.D. Career resume, Jan 2017
Jeopardy ebp
Jeopardy ebp
Juan Lab Summary 2
Juan Lab Summary 2
Destaque
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Lars Juhl Jensen
Twitter For Business The What, Why And How To Get Started Jonnie Jensen I...
Twitter For Business The What, Why And How To Get Started Jonnie Jensen I...
jonnie jensen
Aplicaciones de herramientas digitales en el aula
Aplicaciones de herramientas digitales en el aula
María Gabriela Galli
Beijing
Beijing
nachaycoka.blogspot.com
Integration of heterogeneous data
Integration of heterogeneous data
Lars Juhl Jensen
Live+Social - Being Remarkable - the key to social business success
Live+Social - Being Remarkable - the key to social business success
jonnie jensen
One tagger, many uses - Illustrating the power of ontologies in named entity ...
One tagger, many uses - Illustrating the power of ontologies in named entity ...
Lars Juhl Jensen
STRING - Protein networks from data and text mining
STRING - Protein networks from data and text mining
Lars Juhl Jensen
Destaque
(8)
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Twitter For Business The What, Why And How To Get Started Jonnie Jensen I...
Twitter For Business The What, Why And How To Get Started Jonnie Jensen I...
Aplicaciones de herramientas digitales en el aula
Aplicaciones de herramientas digitales en el aula
Beijing
Beijing
Integration of heterogeneous data
Integration of heterogeneous data
Live+Social - Being Remarkable - the key to social business success
Live+Social - Being Remarkable - the key to social business success
One tagger, many uses - Illustrating the power of ontologies in named entity ...
One tagger, many uses - Illustrating the power of ontologies in named entity ...
STRING - Protein networks from data and text mining
STRING - Protein networks from data and text mining
Semelhante a Using side effects for drug target identification
Identification of drug targets from side-effect similarity
Identification of drug targets from side-effect similarity
Lars Juhl Jensen
Prediction of protein-small molecule networks through large-scale data integr...
Prediction of protein-small molecule networks through large-scale data integr...
Lars Juhl Jensen
Predicting novel targets for existing drugs using side effect information
Predicting novel targets for existing drugs using side effect information
Lars Juhl Jensen
Data integration: The STITCH database of protein–small molecule interactions
Data integration: The STITCH database of protein–small molecule interactions
Lars Juhl Jensen
Network integration of data and text
Network integration of data and text
Lars Juhl Jensen
Computational Biology - Signaling networks and drug repositioning
Computational Biology - Signaling networks and drug repositioning
Lars Juhl Jensen
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Lars Juhl Jensen
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Lars Juhl Jensen
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Lars Juhl Jensen
Network medicine - Integrating drugs, targets, diseases and side-effects
Network medicine - Integrating drugs, targets, diseases and side-effects
Lars Juhl Jensen
Network biology: Large-scale biomedical data and text mining
Network biology: Large-scale biomedical data and text mining
Lars Juhl Jensen
Large-scale data and text mining
Large-scale data and text mining
Lars Juhl Jensen
Large-scale integration of data and text
Large-scale integration of data and text
Lars Juhl Jensen
Large-scale integration of data and text
Large-scale integration of data and text
Lars Juhl Jensen
Data and Text Mining
Data and Text Mining
Lars Juhl Jensen
Large-scale biomedical data and text integration
Large-scale biomedical data and text integration
Lars Juhl Jensen
STRING & STITCH: Network integration of heterogeneous data
STRING & STITCH: Network integration of heterogeneous data
Lars Juhl Jensen
Making the best of a bad situation: Using side effects to reveal new targets ...
Making the best of a bad situation: Using side effects to reveal new targets ...
Lars Juhl Jensen
A predictive ligand based Bayesian model for human drug induced liver injury
A predictive ligand based Bayesian model for human drug induced liver injury
US Environmental Protection Agency (EPA), Center for Computational Toxicology and Exposure
From In Silco to In Vivo – Modeling and Simulation Technologies, a Tool for O...
From In Silco to In Vivo – Modeling and Simulation Technologies, a Tool for O...
Life Sciences Network marcus evans
Semelhante a Using side effects for drug target identification
(20)
Identification of drug targets from side-effect similarity
Identification of drug targets from side-effect similarity
Prediction of protein-small molecule networks through large-scale data integr...
Prediction of protein-small molecule networks through large-scale data integr...
Predicting novel targets for existing drugs using side effect information
Predicting novel targets for existing drugs using side effect information
Data integration: The STITCH database of protein–small molecule interactions
Data integration: The STITCH database of protein–small molecule interactions
Network integration of data and text
Network integration of data and text
Computational Biology - Signaling networks and drug repositioning
Computational Biology - Signaling networks and drug repositioning
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Network biology: A basis for large-scale biomedical data mining
Network medicine - Integrating drugs, targets, diseases and side-effects
Network medicine - Integrating drugs, targets, diseases and side-effects
Network biology: Large-scale biomedical data and text mining
Network biology: Large-scale biomedical data and text mining
Large-scale data and text mining
Large-scale data and text mining
Large-scale integration of data and text
Large-scale integration of data and text
Large-scale integration of data and text
Large-scale integration of data and text
Data and Text Mining
Data and Text Mining
Large-scale biomedical data and text integration
Large-scale biomedical data and text integration
STRING & STITCH: Network integration of heterogeneous data
STRING & STITCH: Network integration of heterogeneous data
Making the best of a bad situation: Using side effects to reveal new targets ...
Making the best of a bad situation: Using side effects to reveal new targets ...
A predictive ligand based Bayesian model for human drug induced liver injury
A predictive ligand based Bayesian model for human drug induced liver injury
From In Silco to In Vivo – Modeling and Simulation Technologies, a Tool for O...
From In Silco to In Vivo – Modeling and Simulation Technologies, a Tool for O...
Mais de Lars Juhl Jensen
One tagger, many uses: Illustrating the power of dictionary-based named entit...
One tagger, many uses: Illustrating the power of dictionary-based named entit...
Lars Juhl Jensen
One tagger, many uses: Simple text-mining strategies for biomedicine
One tagger, many uses: Simple text-mining strategies for biomedicine
Lars Juhl Jensen
Extract 2.0: Text-mining-assisted interactive annotation
Extract 2.0: Text-mining-assisted interactive annotation
Lars Juhl Jensen
Network visualization: A crash course on using Cytoscape
Network visualization: A crash course on using Cytoscape
Lars Juhl Jensen
Biomedical text mining: Automatic processing of unstructured text
Biomedical text mining: Automatic processing of unstructured text
Lars Juhl Jensen
Medical network analysis: Linking diseases and genes through data and text mi...
Medical network analysis: Linking diseases and genes through data and text mi...
Lars Juhl Jensen
Network Biology: A crash course on STRING and Cytoscape
Network Biology: A crash course on STRING and Cytoscape
Lars Juhl Jensen
Cellular networks
Cellular networks
Lars Juhl Jensen
Cellular Network Biology: Large-scale integration of data and text
Cellular Network Biology: Large-scale integration of data and text
Lars Juhl Jensen
Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...
Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...
Lars Juhl Jensen
STRING & related databases: Large-scale integration of heterogeneous data
STRING & related databases: Large-scale integration of heterogeneous data
Lars Juhl Jensen
Tagger: Rapid dictionary-based named entity recognition
Tagger: Rapid dictionary-based named entity recognition
Lars Juhl Jensen
Network Biology: Large-scale integration of data and text
Network Biology: Large-scale integration of data and text
Lars Juhl Jensen
Medical text mining: Linking diseases, drugs, and adverse reactions
Medical text mining: Linking diseases, drugs, and adverse reactions
Lars Juhl Jensen
Network biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and text
Lars Juhl Jensen
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Lars Juhl Jensen
Cellular Network Biology
Cellular Network Biology
Lars Juhl Jensen
Network biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and text
Lars Juhl Jensen
Biomarker bioinformatics: Network-based candidate prioritization
Biomarker bioinformatics: Network-based candidate prioritization
Lars Juhl Jensen
The Art of Counting: Scoring and ranking co-occurrences in literature
The Art of Counting: Scoring and ranking co-occurrences in literature
Lars Juhl Jensen
Mais de Lars Juhl Jensen
(20)
One tagger, many uses: Illustrating the power of dictionary-based named entit...
One tagger, many uses: Illustrating the power of dictionary-based named entit...
One tagger, many uses: Simple text-mining strategies for biomedicine
One tagger, many uses: Simple text-mining strategies for biomedicine
Extract 2.0: Text-mining-assisted interactive annotation
Extract 2.0: Text-mining-assisted interactive annotation
Network visualization: A crash course on using Cytoscape
Network visualization: A crash course on using Cytoscape
Biomedical text mining: Automatic processing of unstructured text
Biomedical text mining: Automatic processing of unstructured text
Medical network analysis: Linking diseases and genes through data and text mi...
Medical network analysis: Linking diseases and genes through data and text mi...
Network Biology: A crash course on STRING and Cytoscape
Network Biology: A crash course on STRING and Cytoscape
Cellular networks
Cellular networks
Cellular Network Biology: Large-scale integration of data and text
Cellular Network Biology: Large-scale integration of data and text
Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...
Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...
STRING & related databases: Large-scale integration of heterogeneous data
STRING & related databases: Large-scale integration of heterogeneous data
Tagger: Rapid dictionary-based named entity recognition
Tagger: Rapid dictionary-based named entity recognition
Network Biology: Large-scale integration of data and text
Network Biology: Large-scale integration of data and text
Medical text mining: Linking diseases, drugs, and adverse reactions
Medical text mining: Linking diseases, drugs, and adverse reactions
Network biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and text
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Cellular Network Biology
Cellular Network Biology
Network biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and text
Biomarker bioinformatics: Network-based candidate prioritization
Biomarker bioinformatics: Network-based candidate prioritization
The Art of Counting: Scoring and ranking co-occurrences in literature
The Art of Counting: Scoring and ranking co-occurrences in literature
Último
O898O367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad
O898O367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad
GENUINE ESCORT AGENCY
Call Girls Guntur Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Guntur Just Call 8250077686 Top Class Call Girl Service Available
Dipal Arora
Call Girls Cuttack Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Cuttack Just Call 9907093804 Top Class Call Girl Service Available
Dipal Arora
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Dipal Arora
Top Rated Bangalore Call Girls Mg Road ⟟ 9332606886 ⟟ Call Me For Genuine S...
Top Rated Bangalore Call Girls Mg Road ⟟ 9332606886 ⟟ Call Me For Genuine S...
narwatsonia7
Night 7k to 12k Chennai City Center Call Girls 👉👉 7427069034⭐⭐ 100% Genuine E...
Night 7k to 12k Chennai City Center Call Girls 👉👉 7427069034⭐⭐ 100% Genuine E...
hotbabesbook
Call Girls Visakhapatnam Just Call 8250077686 Top Class Call Girl Service Ava...
Call Girls Visakhapatnam Just Call 8250077686 Top Class Call Girl Service Ava...
Dipal Arora
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Dipal Arora
Book Paid Powai Call Girls Mumbai 𖠋 9930245274 𖠋Low Budget Full Independent H...
Book Paid Powai Call Girls Mumbai 𖠋 9930245274 𖠋Low Budget Full Independent H...
Call Girls in Nagpur High Profile
Best Rate (Hyderabad) Call Girls Jahanuma ⟟ 8250192130 ⟟ High Class Call Girl...
Best Rate (Hyderabad) Call Girls Jahanuma ⟟ 8250192130 ⟟ High Class Call Girl...
astropune
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
chandars293
Call Girls Varanasi Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Varanasi Just Call 8250077686 Top Class Call Girl Service Available
Dipal Arora
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
astropune
Call Girls Jabalpur Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Jabalpur Just Call 8250077686 Top Class Call Girl Service Available
Dipal Arora
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
Taniya Sharma
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
GENUINE ESCORT AGENCY
VIP Service Call Girls Sindhi Colony 📳 7877925207 For 18+ VIP Call Girl At Th...
VIP Service Call Girls Sindhi Colony 📳 7877925207 For 18+ VIP Call Girl At Th...
jageshsingh5554
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
aartirawatdelhi
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Call Girls Delhi
Call Girls in Gagan Vihar (delhi) call me [🔝 9953056974 🔝] escort service 24X7
Call Girls in Gagan Vihar (delhi) call me [🔝 9953056974 🔝] escort service 24X7
9953056974 Low Rate Call Girls In Saket, Delhi NCR
Último
(20)
O898O367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad
O898O367676 Call Girls In Ahmedabad Escort Service Available 24×7 In Ahmedabad
Call Girls Guntur Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Guntur Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Cuttack Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Cuttack Just Call 9907093804 Top Class Call Girl Service Available
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Top Rated Bangalore Call Girls Mg Road ⟟ 9332606886 ⟟ Call Me For Genuine S...
Top Rated Bangalore Call Girls Mg Road ⟟ 9332606886 ⟟ Call Me For Genuine S...
Night 7k to 12k Chennai City Center Call Girls 👉👉 7427069034⭐⭐ 100% Genuine E...
Night 7k to 12k Chennai City Center Call Girls 👉👉 7427069034⭐⭐ 100% Genuine E...
Call Girls Visakhapatnam Just Call 8250077686 Top Class Call Girl Service Ava...
Call Girls Visakhapatnam Just Call 8250077686 Top Class Call Girl Service Ava...
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Book Paid Powai Call Girls Mumbai 𖠋 9930245274 𖠋Low Budget Full Independent H...
Book Paid Powai Call Girls Mumbai 𖠋 9930245274 𖠋Low Budget Full Independent H...
Best Rate (Hyderabad) Call Girls Jahanuma ⟟ 8250192130 ⟟ High Class Call Girl...
Best Rate (Hyderabad) Call Girls Jahanuma ⟟ 8250192130 ⟟ High Class Call Girl...
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Call Girls Varanasi Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Varanasi Just Call 8250077686 Top Class Call Girl Service Available
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
Call Girls Jabalpur Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Jabalpur Just Call 8250077686 Top Class Call Girl Service Available
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
VIP Service Call Girls Sindhi Colony 📳 7877925207 For 18+ VIP Call Girl At Th...
VIP Service Call Girls Sindhi Colony 📳 7877925207 For 18+ VIP Call Girl At Th...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Call Girls in Gagan Vihar (delhi) call me [🔝 9953056974 🔝] escort service 24X7
Call Girls in Gagan Vihar (delhi) call me [🔝 9953056974 🔝] escort service 24X7
Using side effects for drug target identification
1.
Using side effects
for drug target identification Lars Juhl Jensen
2.
the problem
3.
new uses for
old drugs
4.
drug–drug network
5.
shared target(s)
6.
chemical similarity
7.
Campillos & Kuhn
et al., Science, 2008
8.
Campillos & Kuhn
et al., Science, 2008
9.
similar drugs share
targets
10.
only trivial predictions
11.
the idea
12.
chemical perturbations
13.
phenotypic readouts
14.
drug treatment
15.
side effects
16.
the hard work
17.
information on side
effects
18.
no database
19.
package inserts
20.
Campillos & Kuhn
et al., Science, 2008
21.
text mining
22.
side-effect ontology
23.
backtracking
24.
Campillos & Kuhn
et al., Science, 2008
25.
manual validation
26.
SIDER Kuhn et al.,
Molecular Systems Biology, 2010
27.
side-effect correlations
28.
Campillos & Kuhn
et al., Science, 2008
29.
GSC weighting
30.
side-effect frequencies
31.
Campillos & Kuhn
et al., Science, 2008
32.
raw similarity score
33.
Campillos & Kuhn
et al., Science, 2008
34.
p-values
35.
Campillos & Kuhn
et al., Science, 2008
36.
side-effect similarity
37.
chemical similarity
38.
Campillos & Kuhn
et al., Science, 2008
39.
confidence scores
40.
reference set
41.
incomplete databases
42.
text mining
43.
manual validation
44.
MATADOR Günther et al.,
Nucleic Acids Research, 2008
45.
Campillos & Kuhn
et al., Science, 2008
46.
text mining
47.
reflect.ws
48.
Pafilis, O’Donoghue, Jensen
et al., Nature Biotechnology, 2009
49.
collaborate with industry
50.
51.
the results
52.
drug–drug network
53.
Campillos & Kuhn
et al., Science, 2008
54.
categorization
55.
Campillos & Kuhn
et al., Science, 2008
56.
20 drug–drug pairs
57.
in vitro binding
assays
58.
Ki<10 µM for
11 of 20
59.
cell assays
60.
9 of 9
showed activity
61.
the future
62.
link side-effects to
targets
63.
direct target prediction
64.
Acknowledgments Side effects – Monica
Campillos – Michael Kuhn – Anne-Claude Gavin – Peer Bork Reflect – Heiko Horn – Sune Frankild – Evangelos Pafilis – Reinhardt Schneider – Sean O’Donoghue
65.
larsjuhljensen
Baixar agora