Settings Today

Neural network learns how to identify chromatid cohesion defects

Scientists from Tokyo Metropolitan University have used machine learning to automate the identification of defects in sister chromatid cohesion. They trained a convolutional neural network (CNN) with microscopy images of individual stained chromosomes, identified by researchers as having or not having cohesion defects. After training, it was able to successfully classify 73.1% of new images. Automation promises better statistics, and more insight into the wide range of disorders which cause cohesion defects.

Published 620 days ago

Go Back to Reading NewsBack Read News Collect this News Article


For peering opportunity Autonomouse System Number: AS401345 Custom Software Development at ErnesTech Email AddressContact: [email protected]