RGivisiez/Blood-Vessel-Segmentation
Blood vessel segmentation for retina and eggs.
This project helps researchers and scientists studying cancer drug effects to accurately and efficiently segment blood vessels in retinal scans and chicken embryo images. It takes raw medical or biological images and outputs precise, automatically segmented blood vessel maps, significantly reducing the manual effort and errors associated with traditional methods like ImageJ. This tool is for biologists, medical researchers, and lab technicians working with image-based vascular analysis.
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Use this if you need to precisely measure blood vessel changes, such as growth or shrinkage, from medical or biological images for research or diagnostic purposes.
Not ideal if you require segmentation of structures other than blood vessels, or if you don't have access to a machine with GPU capabilities.
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Last pushed
Oct 13, 2023
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