Cell Migration Lab Datasets
Welcome to the Cell Migration Lab's datasets repository. Here, you will find a comprehensive list of openly available datasets generated by our lab or by Guillaume Jacquemet before the cell migration lab started.
For any inquiries or further information about these datasets, please get in touch with us!
Our lab has generated and published a series of proteomic datasets focusing on protein interactions and cellular fractionation. Below is a summary of these datasets, providing insights into various proteins and their binding partners in different cellular contexts.
Dataset Name
Description
View Dataset
Reference
MYO10-TurboID in U2-OS and U-87 MG cells
Identification of Myosin-X (MYO10) proximal proteins using TurboID in U2-OS and U-87 MG cells.
View Dataset
Popović et al., 2025
TLNRD1-GFP Pulldown in HEK293T Cells
Pulldown of human TLNRD1-GFP and GFP in HEK cells for mass spectrometry analysis of binding partners.
View Dataset
Ball et al., 2023
Talin1-GFP Pulldown in U2OS Cells
Study of human Talin1-GFP and GFP pulldown from U2OS cells plated on fibronectin, using mass spectrometry.
View Dataset
Gough et al., 2021
Sharpin-GFP Pulldown in HEK293T Cells
Analysis of human Sharpin-GFP and GFP pulldown from HEK293T cells, identifying binding partners through mass spectrometry.
View Dataset
Khan et al., 2017
Plasma Membrane, Endosomal, and Cytoplasmic Fractions in Mouse Embryonic Fibroblast
Cellular fractionation experiments to identify novel endosomal proteins in mouse embryonic fibroblast.
View Dataset
Alanko et al., 2015
Proteomic analysis of filamin-A, IQGAP1, Rac1 and RCC2 binding partners
Analysis of human filamin-A-GFP, IQGAP1-GFP, Rac1 and RCC2-GFP and GFP pulldown from HEK293T cells, identifying binding partners through mass spectrometry.
View Dataset
Jacquemet et al., 2013
Our lab has been actively generating and publishing sequencing datasets.
Dataset Name
Sequencing Type
Description
View Dataset
Reference
MYO10-Filopodia Breast Tumor Xenograft Expression Dataset
RNA-Seq
mRNA sequencing data from subcutaneous breast tumor xenografts of MCF10DCIS.com cell lines expressing non-targeting control shRNA (4 tumors) or Myosin-X targeting shRNA (4 tumors).
View Dataset
Peuhu et al., 2022
This section overviews our publicly available image datasets, encompassing various studies.
Filopodome proteomics identifies CCT8 as a MYO10 interactor critical for filopodia functions
All data and code associated with the manuscript Follain et al., 2026 are available in a dedicated Zenodo community
Dataset Name
Description
Link
Reference
Fast label-free live imaging with FlowVision reveals key principles of cancer cell arrest on endothelial monolayers
This repository contains all the data used to make the figure shown in the paper
View Dataset on Zenodo
Follain et al., 2026
Model Name
Imaging Modality
Performance
Purpose and Associated Figure
Training Dataset Link
Flow chamber dataset
Brightfield
IoU = 0.813 f1 = 0.933
StarDist model to detect cancer cells in BSA-coated channels. Used to measure perfusion speed inside the channels.
Link
StarDist_Fluorescent_cells
Fluorescence
IoU = 0.646 f1 = 0.877
StarDist model to detect cancer cells from fixed samples. Used to count the number of attached cells
Link
StarDist_BF_cancer_cell_dataset_20x
Brightfield
IoU = 0.793 f1 = 0.921
StarDist model capable of segmenting cancer cells on endothelial cells (20x magnification). This model was used to segment cancer cells prior to tracking.
Link
StarDist_BF_Neutrophil_dataset
Brightfield
IoU = 0.914 f1 = 0.969
StarDist model capable of segmenting neutrophils on endothelial cells. This model was used to segment neutrophils prior to tracking.
Link
StarDist_BF_Monocytes_dataset
Brightfield
IoU = 0.831 f1 = 0.941
StarDist model capable of segmenting mononucleated cells on endothelial cells. This model was used to segment mononucleated cells prior to tracking.
Link
StarDist_HUVEC_nuclei_dataset
Fluorescence
IoU = 0.927 f1 = 0.976
StarDist model capable of segmenting endothelial nuclei while ignoring cancer cells. Used to segment endothelial nuclei.
Link
StarDist_BF_cancer_cell_dataset_10x
Brightfield
IoU = 0.882 f1 = 0.968
StarDist model capable of segmenting cancer cells on endothelial cells (10x magnification).
Link
StarDist_AsPC1_Lifeact
Fluorescence
IoU = 0.884 f1 = 0.967
StarDist model capable of segmenting AsPC1 cells from AsPC1 channel, in addition to segmenting from background, model also segments individual cells from clusters.
Link
Stardist_MiaPaCa2_from_CD44
Fluorescence
IoU = 0.884 f1 = 0.950
StarDist model capable of segmenting MiaPaCa2 cells from CD44 channel while ignoring endothelial cells.
Link
StarDist_TumorCell_nuclei
Fluorescence
IoU = 0.558 f1 = 0.793
StarDist model capable of segmenting tumor cell nuclei from the nuclei channel while ignoring endothelial nuclei.
Link
Artificial labeling models
Model Name
Performance
Purpose and Associated Figure
Training Dataset Link
pix2pix_HUVEC_nuclei_cancer_cells_dataset
SSIM = 0.755 lpips = 0.120
This model was used to artificially label nulcei from BF images with cancer and endothelial cells.
Link
pix2pix_HUVEC_nuclei_immuno_cells_dataset
SSIM = 0.756 lpips = 0.130
This model was used to artificially label nulcei from BF images with immuno and endothelial cells.
Link
pix2pix_HUVEC_juctions_dataset
SSIM = 0.270 lpips = 0.360
This model was used in to artificially label cell-cell juctions from BF images with immuno or cancer and endothelial cells.
Link
Dataset name
Purpose and Associated Figure
Link to dataset
PDAC cells vs Immune cells perfusion tracking dataset
This dataset was used to analyze the attachment of PDAC and immune cells to the endothelium
Link to dataset
PDAC cells CD44 siRNA perfusion tracking dataset
This dataset was used to analyze the attachment of PDACs to the endothelium
Link to dataset
HUVEC CD44 siRNA perfusion tracking dataset
This dataset was used to analyze the attachment of PDACs to the endothelium
Link to dataset
CD44 Blocking Antibody perfusion tracking dataset
This dataset was used to analyze the attachment of PDACs to the endothelium
Link to dataset
Hyaluronidase treatment perfusion tracking dataset
This dataset was used to analyze the attachment of PDACs to the endothelium
Link to dataset
Immune cells perfusion CD44 Blocking Antibody and Il1b 2h and 16h tracking dataset
This dataset contains tracking results of and immune cells (Mononucleated cells and neutrophils) perfused on endothelial monolayer under physiological flow speeds and with or without IL-1β treatment.
Link to dataset
PhotoFiTT : A Quantitative Framework for Assessing Phototoxicity in Live-Cell Microscopy Experiments
Dataset Name
Description
Link
Reference
PhotoFiTT: A Quantitative Framework for Assessing Phototoxicity in Live-Cell Microscopy Experiments
This repository contains all the data related to the study PhotoFiTT (Phototoxicity Fitness Time Trial) as well as example data for PhotoFiTT computational framework
View Dataset on the BioImage Archive
Del Rosario et al., 2025
CellTracksColab —A platform for compiling, analyzing, and exploring tracking data
NanoPyx : super-fast bioimage analysis powered by adaptive machine learning
TLNRD1 is a CCM complex component and regulates endothelial barrier integrity
Dataset Name
Description
Link
Reference
TLNRD1 figures
Raw microscopy images used to make the figures displayed in the article "TLNRD1 is a CCM complex component and regulates endothelial barrier integrity."
View Dataset on Zenodo
Ball et al., 2024
High-fidelity 3D live-cell nanoscopy through data-driven enhanced super-resolution radial fluctuation
Fast4DReg : Fast registration of 4D microscopy datasets
TrackMate 7 : integrating state-of-the-art segmentation algorithms into tracking pipelines
Dataset Name
Description
Link
Reference
Tracking label images with TrackMate
Dataset used in a tutorial on tracking label images with TrackMate.
View Dataset on Zenodo
Ershov et al., 2022
Tracking with TrackMate using mask images of cell migration
Dataset used in a tutorial on tracking mask images with TrackMate.
View Dataset on Zenodo
Ershov et al., 2022
Tracking cell migration with the TrackMate threshold detector
Dataset used in a tutorial on using the TrackMate threshold detector.
View Dataset on Zenodo
Ershov et al., 2022
T cells migration followed with TrackMate
Dataset of T cells migrating on ICAM-1, tracked using StarDist in TrackMate.
View Dataset on Zenodo
Ershov et al., 2022
Segmenting cells in a spheroid in 3D using 2D StarDist within TrackMate
Dataset for segmenting cells in a 3D spheroid using 2D StarDist in TrackMate.
View Dataset on Zenodo
Ershov et al., 2022
Tracking focal adhesions with TrackMate and Weka - tutorial dataset 1
Dataset of MDA-mb-231 cells expressing GFP-paxillin for tracking focal adhesions.
View Dataset on Zenodo
Ershov et al., 2022
Tracking focal adhesions with TrackMate and Weka - tutorial dataset 2
Dataset of human dermal microvascular blood endothelial cells for tracking focal adhesions.
View Dataset on Zenodo
Ershov et al., 2022
Tracking breast cancer cells migrating collectively with TrackMate-Cellpose
Dataset for tracking collective migration of breast cancer cells with TrackMate-Cellpose.
View Dataset on Zenodo
Ershov et al., 2022
Cancer cell migration followed with TrackMate
Dataset of migrating breast cancer cells for analysis with TrackMate. tutorial .
View Dataset on Zenodo
Ershov et al., 2022
Tracking Glioblastoma-astrocytoma cells with TrackMate-Cellpose
Dataset of Glioblastoma-astrocytoma U373 cells migrating on a polyacrylamide gel.
View Dataset on Zenodo
Ershov et al., 2022
Cell migration with ERK signalling
Movie following cells expressing ERK and a nuclei staining, tracked with TrackMate and later analyzed with MATLAB.
View Dataset on Zenodo
Ershov et al., 2022
Quantitative comparison of tracking performance using TrackMate-Helper.
we used TrackMate-Helper to assess the performance of TrackMate on four datasets that cover a wide range of biological and imaging situations
View Dataset on Zenodo
Ershov et al., 2022
Cargo-specific recruitment in clathrin- and dynamin-independent endocytosis
Dataset Name
Description
Link
Reference
ZeroCostDL4Mic - Noise2Void (3D) example training and test dataset
A2780 ovarian carcinoma cells, transiently expressing Lifeact-RFP
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - DeepSTORM training and example dataset
Experimental time-series dSTORM acquisition of Glial cells stained with phalloidin for actin
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - Stardist example training and test dataset
Description not provided
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - YoloV2 example training and test dataset
MDA-MB-231 cells migrating on cell-derived matrices generated by fibroblasts
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - Label-free prediction (fnet) example training and test dataset
Hela labeled with TOM20
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - Noise2Void (2D) example training and test dataset
U-251 glioma cells, endogenously expressing paxillin-GFP
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - CycleGAN example training and test dataset
Unpaired microscopy images (fluorescence) of microtubules (Spinning-disk and SRRF reconstructed images)
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - CARE (3D) example training and test dataset
3D paired microscopy images (fluorescence) of low and high signal-to-noise ratio
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - CARE (2D) example training and test dataset
Paired microscopy images (fluorescence) of low and high signal-to-noise ratio
View Dataset on Zenodo
von Chamier et al., 2021
ZeroCostDL4Mic - pix2pix example training and test dataset
Paired microscopy images (fluorescence) of lifeact-RFP and sir-DNA
View Dataset on Zenodo
von Chamier et al., 2021
Mapping the Localization of Proteins Within Filopodia Using FiloMap
Automated cell tracking using StarDist and TrackMate
FiloQuant reveals increased filopodia density during breast cancer progression
RCP-driven α5β1 recycling suppresses Rac and promotes RhoA activity via the RacGAP1–IQGAP1 complex