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Hamid Behravan and Raju Gudhe.

From the left, Senior Researcher Hamid Behravan and Doctoral Researcher Raju Gudhe from the AI Cancer research group at the University of Eastern Finland.

AI-powered deep learning model can improve cancer diagnostics by accurately counting cell types in whole slide images

A deep learning framework estimating cell types in a whole slide digital pathology image. The segmented nuclei and their corresponding cell types are provided in the legend.
The deep learning framework, named CT-EMT, relies on evidential multi-task learning for predicting various cell types in Hematoxylin & Eosin-stained digital pathology images.
Performance evaluation of CT-EMT compared to the existing cell-type counting frameworks.

Our multi-modal deep learning approach improves the accuracy and efficiency of breast cancer diagnosis and treatment planning.