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Michael Jendrusch

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

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Nature Machine Intelligence|December 1, 2025
Efficient protein structure generation with sparse denoising modelsMichael Jendrusch, Jan O Korbel
Electrophoresis|October 31, 2019
Spatially resolved electrical impedance methods for cell and particle characterizationMarvin Schwarz, Michael Jendrusch, Iordania Constantinou
Nature Communications|September 12, 2024
Impact and characterization of serial structural variations across humans and great apesWolfram Höps, Tobias Rausch, Michael Jendrusch, et al.
Micromachines|May 12, 2019
Self-Learning Microfluidic Platform for Single-Cell Imaging and Classification in FlowIordania Constantinou, Michael Jendrusch, Théo Aspert, et al.
Nucleic Acids Research|November 18, 2024
A deep mutational scanning platform to characterize the fitness landscape of anti-CRISPR proteinsTobias Stadelmann, Daniel Heid, Michael Jendrusch, et al.
Nucleic Acids Research|August 12, 2025
A versatile anti-CRISPR platform for opto- and chemogenetic control of CRISPR-Cas9 and Cas12 across a wide range of orthologsLuca Brenker, Sabine Aschenbrenner, Felix Bubeck, et al.
Computers in Biology and Medicine|April 28, 2024
Using histopathology latent diffusion models as privacy-preserving dataset augmenters improves downstream classification performanceJan M Niehues, Gustav Müller-Franzes, Yoni Schirris, et al.
The Journal of Pathology|February 10, 2021
Deep learning detects genetic alterations in cancer histology generated by adversarial networksJeremias Krause, Heike I Grabsch, Matthias Kloor, et al.
HLA|October 17, 2022
A simple approach for detecting HLA-A*02 alleles in archival formalin-fixed paraffin-embedded tissue samples and an application example for studying cancer immunoeditingJohannes Witt, Saskia Haupt, Aysel Ahadova, et al.
Nature Communications|September 22, 2020
The shared frameshift mutation landscape of microsatellite-unstable cancers suggests immunoediting during tumor evolutionAlexej Ballhausen, Moritz Jakob Przybilla, Michael Jendrusch, et al.
Pageof 1

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

Sort By:
Pageof 1
Nature Machine Intelligence|December 1, 2025
Efficient protein structure generation with sparse denoising modelsMichael Jendrusch, Jan O Korbel
Electrophoresis|October 31, 2019
Spatially resolved electrical impedance methods for cell and particle characterizationMarvin Schwarz, Michael Jendrusch, Iordania Constantinou
Nature Communications|September 12, 2024
Impact and characterization of serial structural variations across humans and great apesWolfram Höps, Tobias Rausch, Michael Jendrusch, et al.
Micromachines|May 12, 2019
Self-Learning Microfluidic Platform for Single-Cell Imaging and Classification in FlowIordania Constantinou, Michael Jendrusch, Théo Aspert, et al.
Nucleic Acids Research|November 18, 2024
A deep mutational scanning platform to characterize the fitness landscape of anti-CRISPR proteinsTobias Stadelmann, Daniel Heid, Michael Jendrusch, et al.
Nucleic Acids Research|August 12, 2025
A versatile anti-CRISPR platform for opto- and chemogenetic control of CRISPR-Cas9 and Cas12 across a wide range of orthologsLuca Brenker, Sabine Aschenbrenner, Felix Bubeck, et al.
Computers in Biology and Medicine|April 28, 2024
Using histopathology latent diffusion models as privacy-preserving dataset augmenters improves downstream classification performanceJan M Niehues, Gustav Müller-Franzes, Yoni Schirris, et al.
The Journal of Pathology|February 10, 2021
Deep learning detects genetic alterations in cancer histology generated by adversarial networksJeremias Krause, Heike I Grabsch, Matthias Kloor, et al.
HLA|October 17, 2022
A simple approach for detecting HLA-A*02 alleles in archival formalin-fixed paraffin-embedded tissue samples and an application example for studying cancer immunoeditingJohannes Witt, Saskia Haupt, Aysel Ahadova, et al.
Nature Communications|September 22, 2020
The shared frameshift mutation landscape of microsatellite-unstable cancers suggests immunoediting during tumor evolutionAlexej Ballhausen, Moritz Jakob Przybilla, Michael Jendrusch, et al.
Pageof 1