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Zohaib Salahuddin

on behalf of EUCanImage working group

Robust Multicentre Detection and Classification of Colorectal Liver Metastases on CT: Application of Foundation Models

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Jan 12, 2026
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Radiology Report Conditional 3D CT Generation with Multi Encoder Latent diffusion Model

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Sep 18, 2025
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Explainable Anatomy-Guided AI for Prostate MRI: Foundation Models and In Silico Clinical Trials for Virtual Biopsy-based Risk Assessment

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May 23, 2025
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A Foundation Model Framework for Multi-View MRI Classification of Extramural Vascular Invasion and Mesorectal Fascia Invasion in Rectal Cancer

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May 23, 2025
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Pixels to Prognosis: Harmonized Multi-Region CT-Radiomics and Foundation-Model Signatures Across Multicentre NSCLC Data

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May 23, 2025
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Counterfactuals and Uncertainty-Based Explainable Paradigm for the Automated Detection and Segmentation of Renal Cysts in Computed Tomography Images: A Multi-Center Study

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Aug 07, 2024
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Methodological Explainability Evaluation of an Interpretable Deep Learning Model for Post-Hepatectomy Liver Failure Prediction Incorporating Counterfactual Explanations and Layerwise Relevance Propagation: A Prospective In Silico Trial

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Aug 07, 2024
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Precision-medicine-toolbox: An open-source python package for facilitation of quantitative medical imaging and radiomics analysis

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Feb 28, 2022
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Transparency of Deep Neural Networks for Medical Image Analysis: A Review of Interpretability Methods

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Nov 01, 2021
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FUTURE-AI: Guiding Principles and Consensus Recommendations for Trustworthy Artificial Intelligence in Medical Imaging

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Sep 29, 2021
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