Description
This repository contains a StarDist deep learning model and its training and validation datasets designed for segmenting cancer cells perfused over an endothelial cell monolayer captured at 20x magnification. Using computational methods, the initial dataset of 20 manually annotated images was augmented to 160 paired images. The model was trained over 400 epochs and achieved an average F1 Score of 0.921, demonstrating high accuracy in cell segmentation tasks. Specifications Model: StarDist for cancer cell segmentation on endothelial cells (20x magnification) Training Dataset: Number of Original Images: 20 paired brightfield microscopy images and label masks Microscope: Nikon Eclipse Ti2-E, 20x objective Data Type: Brightfield microscopy images with manually segmented masks File Format: TIFF (.tif) Brightfield Images: 16-bit Masks: 8-bit Image Size: 1024 x 1022 pixels (Pixel size: 650 nm) Training Parameters: Epochs: 400 Patch Size: 992 x 992 pixels Batch Size: 2 Performance: Average F1 Score: 0.921 Average IoU: 0.793 Model Training: Conducted using ZeroCostDL4Mic (https://github.com/HenriquesLab/ZeroCostDL4Mic/wiki) Reference Biorxiv paper
Date made available | 26 Jan 2024 |
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Publisher | Zenodo |