Search Results for author: Michail Mamalakis

Found 4 papers, 1 papers with code

An explainable three dimension framework to uncover learning patterns: A unified look in variable sulci recognition

1 code implementation2 Sep 2023 Michail Mamalakis, Heloise de Vareilles, Atheer AI-Manea, Samantha C. Mitchell, Ingrid Arartz, Lynn Egeland Morch-Johnsen, Jane Garrison, Jon Simons, Pietro Lio, John Suckling, Graham Murray

With respect to this mathematical formulation, we propose a 3D explainability framework aimed at validating the outputs of deep learning networks in detecting the paracingulate sulcus an essential brain anatomical feature.

Anatomy Dimensionality Reduction +1

A novel framework employing deep multi-attention channels network for the autonomous detection of metastasizing cells through fluorescence microscopy

no code implementations2 Sep 2023 Michail Mamalakis, Sarah C. Macfarlane, Scott V. Notley, Annica K. B Gad, George Panoutsos

The method relies on fluorescence microscopy images showing the spatial organization of actin and vimentin filaments in normal and metastasizing single cells, using a combination of multi-attention channels network and global explainable techniques.

Cannot find the paper you are looking for? You can Submit a new open access paper.