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Network biology
Lars Juhl Jensen
three parts
protein networks
localization and diseases
disease networks
protein networks
Szklarczyk, Franceschini et al., Nucleic Acids Research, 2011
computational predictions
Korbel et al., Nature Biotechnology, 2004
experimental data
Jensen & Bork, Science, 2008
curated knowledge
Letunic & Bork, Trends in Biochemical Sciences, 2008
text mining
many databases
different formats
different identifiers
variable quality
not comparable
hard work
quality scores
von Mering et al., Nucleic Acids Research, 2005
calibrate vs. gold standard
von Mering et al., Nucleic Acids Research, 2005
localization and disease
general approach
suite of web resources
curated knowledge
experimental data
text mining
computational predictions
quality scores
proteins
compartments
compartments.jensenlab.org
tissues
tissues.jensenlab.org
diseases
disease networks
electronic health records
Jensen et al., Nature Reviews Genetics, 2012
structured data
Jensen et al., Nature Reviews Genetics, 2012
unstructured data
comorbidity
Jensen et al., Nature Reviews Genetics, 2012
Roque et al., PLoS Computational Biology, 2011
in Danish
multiple testing
confounding factors
age and gender
reporting bias
temporal correlation
diagnosis trajectories
Jensen et al., in preparation, 2013
molecular basis
protein networks
Acknowledgments
STRING
Christian von Mering
Damian Szklarczyk
Michael Kuhn
Manuel Stark
Samuel Chaffron
Chris Creevey
Jean Muller
Tobias Doerks
Philippe Julien
Alexander Roth
Milan Simonovic
Jan Korbel
Berend Snel
Martijn Huynen
Peer Bork
Text mining
Sune Frankild
Evangelos Pafilis
Alberto Santos
Kalliopi Tsafou
Janos Binder
Heiko Horn
Michael Kuhn
Nigel Brown
Reinhardt Schneider
Sean O’Donoghue
EHR mining
Anders Boeck Jensen
Peter Bjødstrup Jensen
Francisco S. Roque
Henriette Schmock
Marlene Dalgaard
Massimo Andreatta
Thomas Hansen
Karen Søeby
Søren Bredkjær
Anders Juul
Tudor Oprea
Pope Moseley
Thomas Werge
Søren Brunak
Network biology

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Network biology