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Armaghan W Naik

Showing results (1-10 of 7) with videos related to

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BMC Bioinformatics|June 3, 2014
Efficient discovery of responses of proteins to compounds using active learningJoshua D Kangas, Armaghan W Naik, Robert F Murphy
BMC Bioinformatics|July 9, 2015
Deciding when to stop: efficient experimentation to learn to predict drug-target interactionsMaja Temerinac-Ott, Armaghan W Naik, Robert F Murphy
Plos One|December 21, 2013
Efficient modeling and active learning discovery of biological responsesArmaghan W Naik, Joshua D Kangas, Christopher J Langmead, et al.
Elife|February 4, 2016
Active machine learning-driven experimentation to determine compound effects on protein patternsArmaghan W Naik, Joshua D Kangas, Devin P Sullivan, et al.
Cytometry. Part a : the Journal of the International Society for Analytical Cytology|June 22, 2016
Point process models for localization and interdependence of punctate cellular structuresYing Li, Timothy D Majarian, Armaghan W Naik, et al.
Genome Research|December 20, 2017
Conserved non-AUG uORFs revealed by a novel regression analysis of ribosome profiling dataPieter Spealman, Armaghan W Naik, Gemma E May, et al.
Bioinformatics (Oxford, England)|July 10, 2013
Determining the subcellular location of new proteins from microscope images using local featuresLuis Pedro Coelho, Joshua D Kangas, Armaghan W Naik, et al.
Pageof 1

Showing results (1-10 of 7) with videos related to

Sort By:
Pageof 1
BMC Bioinformatics|June 3, 2014
Efficient discovery of responses of proteins to compounds using active learningJoshua D Kangas, Armaghan W Naik, Robert F Murphy
BMC Bioinformatics|July 9, 2015
Deciding when to stop: efficient experimentation to learn to predict drug-target interactionsMaja Temerinac-Ott, Armaghan W Naik, Robert F Murphy
Plos One|December 21, 2013
Efficient modeling and active learning discovery of biological responsesArmaghan W Naik, Joshua D Kangas, Christopher J Langmead, et al.
Elife|February 4, 2016
Active machine learning-driven experimentation to determine compound effects on protein patternsArmaghan W Naik, Joshua D Kangas, Devin P Sullivan, et al.
Cytometry. Part a : the Journal of the International Society for Analytical Cytology|June 22, 2016
Point process models for localization and interdependence of punctate cellular structuresYing Li, Timothy D Majarian, Armaghan W Naik, et al.
Genome Research|December 20, 2017
Conserved non-AUG uORFs revealed by a novel regression analysis of ribosome profiling dataPieter Spealman, Armaghan W Naik, Gemma E May, et al.
Bioinformatics (Oxford, England)|July 10, 2013
Determining the subcellular location of new proteins from microscope images using local featuresLuis Pedro Coelho, Joshua D Kangas, Armaghan W Naik, et al.
Pageof 1