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Marcel H Schulz

Showing results (11-20 of 125) with videos related to

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Bioinformatics (Oxford, England)|November 20, 2019
Improved linking of motifs to their TFs using domain informationNina Baumgarten, Florian Schmidt, Marcel H Schulz
Nucleic Acids Research|August 31, 2023
Widespread effects of DNA methylation and intra-motif dependencies revealed by novel transcription factor binding modelsJan Grau, Florian Schmidt, Marcel H Schulz
Epigenetics & Chromatin|February 8, 2020
Integrative prediction of gene expression with chromatin accessibility and conformation dataFlorian Schmidt, Fabian Kern, Marcel H Schulz
Peerj|April 18, 2019
Automated analysis of small RNA datasets with RAPIDSivarajan Karunanithi, Martin Simon, Marcel H Schulz
F1000Research|November 19, 2019
Predicting transcription factor binding using ensemble random forest modelsFatemeh Behjati Ardakani, Florian Schmidt, Marcel H Schulz
International Journal of Bioinformatics Research and Applications|February 20, 2008
The generalised k-Truncated Suffix Tree for time-and space-efficient searches in multiple DNA or protein sequencesMarcel H Schulz, Sebastian Bauer, Peter N Robinson
Bioinformatics (Oxford, England)|April 17, 2018
JAMI: fast computation of conditional mutual information for ceRNA network analysisAndrea Hornakova, Markus List, Jilles Vreeken, et al.
Iscience|May 13, 2024
A statistical approach for identifying single nucleotide variants that affect transcription factor bindingNina Baumgarten, Laura Rumpf, Thorsten Kessler, et al.
RNA Biology|September 11, 2024
A systematic analysis of circRNAs in subnuclear compartmentsAndre Brezski, Justin Murtagh, Marcel H Schulz, et al.
Biological Chemistry|July 4, 2021
Machine learning based disease prediction from genotype dataNikoletta Katsaouni, Araek Tashkandi, Lena Wiese, et al.
Pageof 13

Showing results (11-20 of 125) with videos related to

Sort By:
Pageof 13
Bioinformatics (Oxford, England)|November 20, 2019
Improved linking of motifs to their TFs using domain informationNina Baumgarten, Florian Schmidt, Marcel H Schulz
Nucleic Acids Research|August 31, 2023
Widespread effects of DNA methylation and intra-motif dependencies revealed by novel transcription factor binding modelsJan Grau, Florian Schmidt, Marcel H Schulz
Epigenetics & Chromatin|February 8, 2020
Integrative prediction of gene expression with chromatin accessibility and conformation dataFlorian Schmidt, Fabian Kern, Marcel H Schulz
Peerj|April 18, 2019
Automated analysis of small RNA datasets with RAPIDSivarajan Karunanithi, Martin Simon, Marcel H Schulz
F1000Research|November 19, 2019
Predicting transcription factor binding using ensemble random forest modelsFatemeh Behjati Ardakani, Florian Schmidt, Marcel H Schulz
International Journal of Bioinformatics Research and Applications|February 20, 2008
The generalised k-Truncated Suffix Tree for time-and space-efficient searches in multiple DNA or protein sequencesMarcel H Schulz, Sebastian Bauer, Peter N Robinson
Bioinformatics (Oxford, England)|April 17, 2018
JAMI: fast computation of conditional mutual information for ceRNA network analysisAndrea Hornakova, Markus List, Jilles Vreeken, et al.
Iscience|May 13, 2024
A statistical approach for identifying single nucleotide variants that affect transcription factor bindingNina Baumgarten, Laura Rumpf, Thorsten Kessler, et al.
RNA Biology|September 11, 2024
A systematic analysis of circRNAs in subnuclear compartmentsAndre Brezski, Justin Murtagh, Marcel H Schulz, et al.
Biological Chemistry|July 4, 2021
Machine learning based disease prediction from genotype dataNikoletta Katsaouni, Araek Tashkandi, Lena Wiese, et al.
Pageof 13