Integrative science, Intelligent data platform for Individualized LUNG cancer care with Immunotherapy

HealthHORIZON-RIAID: 101057695
EC Contribution
€99,967
Consortium Size
16 orgs
Start Year
2022
Summary

Immunotherapy (IO) is the new standard of care for many patients with advanced Non-Small Cell Lung Cancer (aNSCLC), yet only around 30-50% of treated patients benefit from IO in the long term. Programmed Death-Ligand 1 (PD-L1) remains the only biomarker used to predict patient outcome to IO, though its efficacy is limited. Other potential biomarkers have been identified, yet not validated in prospective randomized clinical trials, providing only partial evidence. Due to the dynamic complexity of the immune system-tumour microenvironment, its interaction with the host and patient behaviour, it?s unlikely for a single biomarker to accurately predict patient outcome. Artificial Intelligence (AI) and machine learning (ML) frameworks, that synthetize and correlate information from multiple sources, are essential to develop powerful decision-making tools able to deal with this highly complex context and provide individualized predictions to improve patient outcomes reducing the economic burden of health care systems in NSCLC. The aim of the I3LUNG project is to develop such AI-based tools to assist in improving survival and quality of life, preventing undue toxicity, and reducing treatment costs. I3LUNG adopts a two-pronged approach: setting up a transnational platform of available data from 2000 patients in order to validate the AI models, and generating a multi-omics prospective data collection in 200 NSCLC patients integrating diverse -omic information then validate its usefulness in leading IO therapeutic decisions. A psychological study will help in defining the impact of AI-guided decisions on patients, eliciting their preference, and physicians comparing AI with Human Intuition. The final goal is the construction of a novel integrated AI-assisted Data Storage and Elaboration Platform backed up by Trustworthy Explainable AI methodology, ensuring its accessibility and ease of use by healthcare providers and patients alike.

Consortium (16)

Project Results (14)

Source: CORDIS, the EU research results database.

Publications (9)
Cost-effectiveness models of non–small cell lung cancer: A systematic literature review
Journal of Managed Care & Specialty Pharmacy· 2025DOI
Michael Willis, Andreas Nilsson, Zin Min Thet Lwin, Gunnar Brådvik, Arsela Prelaj
The Implementation of Decision Aids During Medical Consultations for Lung Cancer Patients: A Focus Group Within I3LUNG Project
Journal of Cancer Education· 2025DOI
Valeria Sebri, Patrizia Dorangricchia, Dario Monzani, Chiara Marzorati, Roberto Grasso, Lorenzo Conti, Giuseppe Lo Russo, Leonardo Provenzano, Andra Diana Dumitrascu, Gabriella Pravettoni
Budget impact models for lung cancer interventions: A systematic literature review
Journal of Managed Care & Specialty Pharmacy· 2024DOI
Michael Willis, Andreas Nilsson, Klas Kellerborg, Zin Min Thet Lwin, Arsela Prelaj
The impact of decision tools during oncological consultation with lung cancer patients: A systematic review within the I3LUNG project
Cancer Medicine· 2024DOI
Valeria Sebri, Chiara Marzorati, Patrizia Dorangricchia, Dario Monzani, Roberto Grasso, Arsela Prelaj, Leonardo Provenzano, Laura Mazzeo, Andra Diana Dumitrascu, Jana Sonnek, Marlen Szewczyk, Iris Watermann, Francesco Trovò, Nina Dollis, Evangelos Sarris, Marina Chiara Garassino, Christine M. Bestvina, Alessandra Pedrocchi, Emilia Ambrosini, Sokol Kosta, Enriqueta Felip, Mireia Soleda, Aina Arbusà Roca, Jose Rodríguez‐Morató, Alessandro Nuara, Yonah Lourie, Melissa Fernandez‐Pinto, Alfonso Aguaron, Gabriella Pravettoni
Clinical Lung Cancer
Clinical Lung Cancer· 2023DOI
Prelaj A, Ganzinelli M, Trovo' F, Roisman LC, Pedrocchi ALG, Kosta S, Restelli M, Ambrosini E, Broggini M, Pravettoni G, Monzani D, Nuara A, Amat R, Spathas N, Willis M, Pearson A, Dolezal J, Mazzeo L, Sangaletti S, Correa AM, Aguaron A, Watermann I, Popa
MetaLung: Towards a Secure Architecture for Lung Cancer Patient Care on the Metaverse
2023 IEEE International Conference on Metaverse Computing, Networking and Applications (MetaCom)· 2023DOI
Zanitti, Michele; Ferens, Mieszko; Ferrarin, Alberto; Trovo, Francesco; Miskovic, Vanja; Prelaj, Arsela; Shen, Ming; Kosta, Sokol
Radiological artificial intelligence - predicting personalized immunotherapy outcomes in lung cancer
NPJ Precision Oncology· 2023DOI
Roisman, L.C., Kian, W., Anoze, A. et al.
The EU-funded I3LUNG Project: Integrative Science, Intelligent Data Platform for Individualized LUNG Cancer Care With Immunotherapy
Clinical Lung Cancer· 2023DOI
Prelaj, Arsela; Ganzinelli, Monica; Trovo', Francesco; Roisman, Laila C; Pedrocchi, Alessandra Laura Giulia; Kosta, Sokol; Restelli, Marcello; Ambrosini, Emilia; Broggini, Massimo; Pravettoni, Gabriella; Monzani, Dario; Nuara, Alessandro; Amat, Ramon; Spathas, Nikos; Willis, Michael; Pearson, Alexander; Dolezal, James; Mazzeo, Laura; Sangaletti, Sabina; Correa, Ana Maria; Aguaron, Alfonso; Watermann, Iris; Popa, Crina; Raimondi, Giulia; Triulzi, Tiziana; Steurer, Stefan; Lo Russo, Giuseppe; Linardou, Helena; Peled, Nir; Felip, Enriqueta; Reck, Martin; Garassino, Marina Chiara
Uncertainty-informed deep learning models enable high-confidence predictions for digital histopathology
Nature Communications· 2022DOI
Dolezal, J.M., Srisuwananukorn, A., Karpeyev, D. et al.
Deliverables (4)
Other Results (1)
Periodic Reporting for period 2 - I3LUNG (Integrative science, Intelligent data platform for Individualized LUNG cancer care with Immunotherapy)