MISE

Collaborative platform for precision medicine, federated learning, and integrated clinical diagnostics.

MISE

Industrial Research

MISE

Collaborative platform for precision medicine, federated learning, and integrated clinical diagnostics.

Precision Medicine Federated Learning Clinical Data Integration

Overview

MISE develops a collaborative technological platform for precision medicine and integrated clinical diagnostics. The project focuses on distributed clinical data aggregation, standardised information sharing, and AI methods that can learn from multiple clinical sources while preserving data locality.

ArCo's contribution is centred on the integration of AI algorithms and clinical applications, with emphasis on federated learning, model-parameter sharing, and consensus models for clinical research.

Research Directions

  • Federated learning methods for distributed clinical research across multiple data holders.
  • Consensus models that can be trained without centralising sensitive clinical data.
  • Integration of AI algorithms with clinical applications for precision medicine workflows.

Related Publications

  1. Texture-Aware StarGAN for CT data harmonization
    Francesco Di Feola, Pompilio, Ludovica, Cecilia Assolito, Valerio Guarrasi, and Paolo Soda
    2025
    generative AI medical imaging
  2. Multi-scale texture loss for CT denoising with GANs
    Francesco Di Feola, Lorenzo Tronchin, Valerio Guarrasi, and Paolo Soda
    2025
    generative AI radiomics
  3. Multimodal explainability via latent shift applied to COVID-19 stratification
    Valerio Guarrasi, Lorenzo Tronchin, Domenico Albano, Eliodoro Faiella, Deborah Fazzini, Domiziana Santucci, and Paolo Soda
    2024
    explainability multimodal learning COVID-19
    MISE FAIR cebmi
  4. Cross-Modality Calibration in Multi-Input Network for Axillary Lymph Node Metastasis Evaluation
    Michela Gravina, Domiziana Santucci, Ermanno Cordelli, Paolo Soda, and Carlo Sansone
    2024
    radiomics oncology multimodal learning
  5. Early Experiences on using Triplet Networks for Histological Subtype Classification in Non-Small Cell Lung Cancer
    Fatih Aksu, Fabrizia Gelardi, Arturo Chiti, and Paolo Soda
    2023
    radiomics oncology medical imaging