From Human Mesenchymal Stromal Cells to Osteosarcoma Cells Classification by Deep Learning
Mario D'Acunto, Massimo Martinelli, Davide Moroni

TL;DR
This paper presents a deep learning method for classifying osteosarcoma cells from human mesenchymal stromal cells using microscopy images, aiming to improve early cancer diagnosis and cell classification accuracy.
Contribution
The study introduces a convolutional neural network approach for discriminating and classifying osteosarcoma and stromal cells from microscopy images, demonstrating its effectiveness for digital pathology.
Findings
High accuracy in cell classification achieved
Effective data augmentation improves model robustness
Potential for application in tissue diagnosis
Abstract
Early diagnosis of cancer often allows for a more vast choice of therapy opportunities. After a cancer diagnosis, staging provides essential information about the extent of disease in the body and the expected response to a particular treatment. The leading importance of classifying cancer patients at the early stage into high or low-risk groups has led many research teams, both from the biomedical and bioinformatics field, to study the application of Deep Learning (DL) methods. The ability of DL to detect critical features from complex datasets is a significant achievement in early diagnosis and cell cancer progression. In this paper, we focus the attention on osteosarcoma. Osteosarcoma is one of the primary malignant bone tumors which usually afflicts people in adolescence. Our contribution to the classification of osteosarcoma cells is made as follows: a DL approach is applied to…
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