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Dictyostelium cells migrate similarly on surfaces of varying chemical compositionGeometry-Driven Polarity in Motile Amoeboid CellsCell shape dynamics: from waves to migrationReal-time motion analysis reveals cell directionality as an indicator of breast cancer progressionThe interplay of cell-cell and cell-substrate adhesion in collective cell migration.The effect of network topology on the stability of discrete state models of genetic controlKinetic analysis of GTP hydrolysis catalysed by the Arf1-GTP-ASAP1 complexCell speed, persistence and information transmission during signal relay and collective migration.mTORC2 regulates neutrophil chemotaxis in a cAMP- and RhoA-dependent fashion.Cellular contact guidance through dynamic sensing of nanotopography.Asymmetric nanotopography biases cytoskeletal dynamics and promotes unidirectional cell guidance.Laser tweezer deformation of giant unilamellar vesicles.Introduction: Sixth Annual Gallery of Nonlinear Images (Pittsburgh, Pennsylvania, 2009).Understanding health and disease with multidimensional single-cell methodsSegregation of type I collagen homo- and heterotrimers in fibrilsAdenylyl cyclase mRNA localizes to the posterior of polarized DICTYOSTELIUM cells during chemotaxis.Survey on indirect optical manipulation of cells, nucleic acids, and motor proteins.LTB4 is a signal-relay molecule during neutrophil chemotaxisOptical micromanipulation of active cells with minimal perturbations: direct and indirect pushing.Modeling and measuring signal relay in noisy directed migration of cell groups.From cellular characteristics to disease diagnosis: uncovering phenotypes with supercells.Automated image analysis of nuclear shape: what can we learn from a prematurely aged cell?svclassify: a method to establish benchmark structural variant calls.Spatiotemporal relationships between the cell shape and the actomyosin cortex of periodically protruding cells.Quantifying stretching and rearrangement in epithelial sheet migrationUncovering low-dimensional, miR-based signatures of acute myeloid and lymphoblastic leukemias with a machine-learning-driven network approach.Bias in the gradient-sensing response of chemotactic cellsCell Cycle and Cell Size Dependent Gene Expression Reveals Distinct Subpopulations at Single-Cell Level.Invited Article: Refractive index matched scanning of dense granular materials.Implications of functional similarity for gene regulatory interactions.Particle Tracking Facilitates Real Time Capable Motion Correction in 2D or 3D Two-Photon Imaging of Neuronal Activity.Leishmania infection inhibits macrophage motility by altering F-actin dynamics and the expression of adhesion complex proteins.Characterizing the rheology of fluidized granular matter.Inferring single-cell behaviour from large-scale epithelial sheet migration patterns.Machine learning based methodology to identify cell shape phenotypes associated with microenvironmental cues.Automatic sorting of point pattern sets using Minkowski functionals.Extracting microtentacle dynamics of tumor cells in a non-adherent environment.Lamin A and microtubules collaborate to maintain nuclear morphology.Replication of biocompatible, nanotopographic surfaces.Lysophosphatidic acid regulates the motility of MCF10CA1a breast cancer cell sheets via two opposing signaling pathways.
P50
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P50
description
researcher
@en
name
Wolfgang Losert
@en
Wolfgang Losert
@nl
type
label
Wolfgang Losert
@en
Wolfgang Losert
@nl
altLabel
Losert W
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Losert W.
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Losert
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W Losert
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W. Losert
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prefLabel
Wolfgang Losert
@en
Wolfgang Losert
@nl