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Deep Learning Features Can Improve Radiomics-Based Prostate Cancer Aggressiveness Prediction.

Nuno M RodriguesJosé Guilherme de AlmeidaAna RodriguesLeonardo VanneschiCelso MatosMaria V LisitskayaAycan UysalSara SilvaNickolas Papanikolaou
Published in: JCO clinical cancer informatics (2024)
The study findings reveal that incorporating deep features derived from autoencoder models trained to reconstruct the full prostate gland (both zonal models show worse performance than radiomics only models), combined with radiomic features, often lead to a statistically significant increase in model performance for disease aggressiveness classification. Additionally, the results also demonstrate that the choice of feature selection is key to achieving good performance, with principal component analysis (PCA) and PCA + relief being the best approaches and that there is no clear difference between the three proposed latent representation extraction techniques.
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