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Sebastian J Schultheiss

Showing results (1-10 of 15) with videos related to

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Methods in Molecular Biology (Clifton, N.J.)|September 10, 2010
Kernel-based identification of regulatory modulesSebastian J Schultheiss
Plos Computational Biology|June 4, 2011
Ten simple rules for providing a scientific Web resourceSebastian J Schultheiss
Plos Computational Biology|May 31, 2014
Learn from the bestVirginie Bernard, Sebastian J Schultheiss, Magali Michaut
Plos One|October 4, 2011
Persistence and availability of Web services in computational biologySebastian J Schultheiss, Marc-Christian Münch, Gergana D Andreeva, et al.
Bioinformatics (Oxford, England)|April 25, 2009
KIRMES: kernel-based identification of regulatory modules in euchromatic sequencesSebastian J Schultheiss, Wolfgang Busch, Jan U Lohmann, et al.
Plant Methods|December 23, 2020
Accurate machine learning-based germination detection, prediction and quality assessment of three grain cropsNikita Genze, Richa Bharti, Michael Grieb, et al.
Environmental Microbiome|May 29, 2024
Interpretable machine learning decodes soil microbiome's response to drought stressMichelle Hagen, Rupashree Dass, Cathy Westhues, et al.
Plos Computational Biology|March 29, 2014
Crossing borders for scienceSebastian J Schultheiss, Joshua SungWoo Yang, Wataru Iwasaki, et al.
Nature|June 26, 2010
Hormonal control of the shoot stem-cell nicheZhong Zhao, Stig U Andersen, Karin Ljung, et al.
Frontiers in Plant Science|November 21, 2022
A comparison of classical and machine learning-based phenotype prediction methods on simulated data and three plant speciesMaura John, Florian Haselbeck, Rupashree Dass, et al.
Pageof 2

Showing results (1-10 of 15) with videos related to

Sort By:
Pageof 2
Methods in Molecular Biology (Clifton, N.J.)|September 10, 2010
Kernel-based identification of regulatory modulesSebastian J Schultheiss
Plos Computational Biology|June 4, 2011
Ten simple rules for providing a scientific Web resourceSebastian J Schultheiss
Plos Computational Biology|May 31, 2014
Learn from the bestVirginie Bernard, Sebastian J Schultheiss, Magali Michaut
Plos One|October 4, 2011
Persistence and availability of Web services in computational biologySebastian J Schultheiss, Marc-Christian Münch, Gergana D Andreeva, et al.
Bioinformatics (Oxford, England)|April 25, 2009
KIRMES: kernel-based identification of regulatory modules in euchromatic sequencesSebastian J Schultheiss, Wolfgang Busch, Jan U Lohmann, et al.
Plant Methods|December 23, 2020
Accurate machine learning-based germination detection, prediction and quality assessment of three grain cropsNikita Genze, Richa Bharti, Michael Grieb, et al.
Environmental Microbiome|May 29, 2024
Interpretable machine learning decodes soil microbiome's response to drought stressMichelle Hagen, Rupashree Dass, Cathy Westhues, et al.
Plos Computational Biology|March 29, 2014
Crossing borders for scienceSebastian J Schultheiss, Joshua SungWoo Yang, Wataru Iwasaki, et al.
Nature|June 26, 2010
Hormonal control of the shoot stem-cell nicheZhong Zhao, Stig U Andersen, Karin Ljung, et al.
Frontiers in Plant Science|November 21, 2022
A comparison of classical and machine learning-based phenotype prediction methods on simulated data and three plant speciesMaura John, Florian Haselbeck, Rupashree Dass, et al.
Pageof 2