In Silico Medicine and Omics Data Integration for Advanced Healthcare Solutions

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Explore the innovative collaboration between In Silico Medicine and Omics Data in developing advanced healthcare solutions. Discover the implementation of modeling platforms, Digital Twins, clinical machine learning algorithms, and drug-target studies. Industrial Partners like IRCCS HUMANITAS Research Hospital and ENGINEERING are leading the digital transformation in healthcare. Stay updated on the cutting-edge developments in EHRs, omics data, and radiomics for precision medicine.

  • Healthcare Solutions
  • Digital Transformation
  • Omics Data
  • Precision Medicine
  • Machine Learning

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  1. Spoke 8 In Silico Medicine & Omics Data

  2. In Silico Medicine WP1 Implementation of modelling & simulation platforms (open Source and commercial) through HPC solvers (Francesco Pappalardo) WP2 Digital Twins and In Silico Trials (Marco Viceconti) WP3 Integrated digital data flow between clinics and HPC centres and Easy-to-use GUI for HPC solvers (hiding complexity for ultimate users) (Barbara Martelli) Omics Data WP4 Genome bioinformatics pipelines for GPU-based HPC infrastructures (Chiara Romualdi) WP5 Development of clinical machine learning algorithms for EHRs and omics data (including radiomics) (Luigi Terracciano) WP6 Drug-target studies and drug repurposing (Giorgio Colombo)

  3. Industrial Partners IRCCS HUMANITAS Research Hospital ENGINEERING The Digital Transformation Company

  4. WP5 Development of clinical machine learning algorithms for EHRs and omics data (including radiomics) Task 5.1 Design and development of next generation EHRs for omics data (Eng) Task 5.2. Development of HPC-optimized pipelines and machine learning algorithms for omics data (FBK, Giuseppe Jurman) Task 5.3 Development of machine vision algorithms for radiomics (POLIBA, Filippo Attivissimo) MS5.1 Prototype of next-generation EHRs (Eng) D5.1 Machine learning tools for omics (Month 3) (Giuseppe Jurman) D5.2 Machine vision for radiomics (Month 6) (Filippo Attivissimo) D5.3 Correlations between genomics and omics data (Month 12) (UNIFE, Stefano Volinia) MS5.2 Novel omics data through collaboration with clinics (Luigi Terracciano) D5.4 Novel radiomics data in collaboration with clinics (Month 24) (Luigi Terracciano) D5.5 Advanced version of EHRs (Month 30) (ENG?) D5.6 Bioinformatics pipelines ready for cloud (Month 36) (Francesco Lescai)

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