I3LUNG

Research Area:
Research Lines:
Research Lines:
Responsible:
Horizon Europe
DEIB Role: Partner
Start date: 2022-05-30
Length: 60 months
Project abstract
Submitted as an answer to a call for new projects with the goal to ensure access to innovative, sustainable, and high-quality health care, I3LUNG is a research initiative that aims to create a cutting-edge decision-making tool to aid both clinicians and patients in selecting the best lung cancer treatment plan, tailored to the specific needs and situation of each individual patient. To accomplish this, the project, funded by the Horizon Europe programme for research & innovation, will use artificial intelligence (AI), in particular deep and machine learning methodologies (DL and ML) to analyze a wide range of information such as baseline clinical features, radiomics, and available biological characteristics of the tumor. All these data will come from the retrospective analysis of 2,000 patients from multiple centers, along with the enrolment of 200 new patients in a prospective study for the generation of new biological multiomic data, such as: tumor mutational burden, immune circulating profiling, digital pathology, gut microbiome, radiomics and other multi-omics approaches. In parallel, a psychological study will also be conducted and will integrate the aspect of the patients’ experiences and preferences as an input in the development of a co-decision aid tool. Six outstanding clinical cancer centers located from all over the world (Italy, Germany, Greece, Spain, Israel, USA) are involved in these data collection processes.
The consortium has thought out and developed this project to address the primary unmet clinical need in the field of non-small cell lung cancer (NSCLC), which is the lack of biomarkers predicting the response of affected patients to immunotherapy (IO)-based treatments. Lung cancer was the leading cause for cancer deaths in men and the second for women in 2020, with 370000 deaths in Europe alone. Thanks to the advent of IO, the way of treating these patients has been revolutionized, positioning it as the first-line therapy for metastatic NSCLC (mNSCLC) tumors lacking a targetable driver mutation, and is used either as monotherapy or in combination with standard chemotherapy. However, only 30 to 50% of patients experience a long-lasting response. Indeed, to this day, programmed Death-Ligand 1 (PD-L1) still remains the only biomarker with a satisfactory level of prediction of a patient’s outcome to IO. The fact that its predicative performance is less than ideal, however, highlights the desperate need for more comprehensive and more precise and effective molecular analyses in this setting of patients. The latter are what this project aims at discovering and implementing.
In recent years, the explosion of AI, ML, DL and the new AI subfield of explainable Trustworthy AI has created the highly exciting opportunity to use a brand new set of tools to assess the vast amounts of data generated from clinical trials and translational researches. The I3LUNG project plans to develop a European - and beyond - platform which will capitalize on these new tools to cope with the complexity of available data on lung cancer biomarkers. By synthesizing and correlating the information from multiple sources of biological and clinical information, it will thereby help in developing a set of methods that will in turn enable the project’s technical partners to construct a novel AI tool which can provide individualized predictions for the efficacy of IO in specific patients, and offer suggestions for care pathways, in coordination with all involved actors (patients, oncologists, researchers) and their human intelligence. This individualized patient selection plan will help reduce the economic burden for patients and, in the longer term, for healthcare systems, and first and foremost it will improve the outcomes of therapy for patients by better matching them and their specific situation to different available treatments.
This challenging objective will be a collaborative effort, which will include 16 partners in the I3LUNG consortium. Some among the best European and International organizations will join forces for this ambitious project: Fondazione IRCCS Istituto Nazionale dei Tumori (INT, Milan, Italy) is the coordinator of the Consortium with its PI Dr. Arsela Prelaj, Politecnico di Milano (POLIMI, Milan, Italy), Istituto di Ricerche Farmacologiche Mario Negri (IRFMN, Milan, Italy), Istituto Europeo di Oncologia (IEO; Milan, Italy), ML Cube (Milan, Italy), LungenClinic Grosshansdorf GmbH (GHD, Grosshansdorf, Germany), Universitaetsklinikum Hamburg-Eppendorf (UKE, Hamburg, Germany), Vall d’Hebron Institute of Oncology (VHIO, Barcelona, Spain), Medica Scientia Innovation Research (MEDSIR, Barcelona, Spain & New Jersey, USA), Metropolitan Hospital (MH, Pireas, Greece), Shaare Zedek Medical Center (SZMC, Jerusalem, Israel), Katholieke Universiteit Leuven (KUL, Leuven, Belgium), The Swedish Institute for Health Economics (IHE, Lund, Sweden), The University of Chicago (UOC, Chicago, USA), Aalborg Universitet (AAU, Aalborg, Denmark), Lung Cancer Europe (LUCE, Bern, Switzerland).
I3LUNG and its partners will have a timeframe of 5 years and a 10 million euros budget to turn their project’s hypothesis in a tangible tool and a new clinical reality. I3LUNG is the first platform enrolling such an important number of patients in both a retrospective (2,000) and prospective (200) manner including such a diversity of multiomic data, arising as an innovative and promising technology to provide an answer to the unmet clinical need of translational research data integration and AI use. If successful, the approach presented in I3LUNG could in the near future justify an initial pilot study which could expand on the project and attempt to apply the tools and methodologies developed to all the cancer types for which patients are candidate to IO in daily practice.
The consortium has thought out and developed this project to address the primary unmet clinical need in the field of non-small cell lung cancer (NSCLC), which is the lack of biomarkers predicting the response of affected patients to immunotherapy (IO)-based treatments. Lung cancer was the leading cause for cancer deaths in men and the second for women in 2020, with 370000 deaths in Europe alone. Thanks to the advent of IO, the way of treating these patients has been revolutionized, positioning it as the first-line therapy for metastatic NSCLC (mNSCLC) tumors lacking a targetable driver mutation, and is used either as monotherapy or in combination with standard chemotherapy. However, only 30 to 50% of patients experience a long-lasting response. Indeed, to this day, programmed Death-Ligand 1 (PD-L1) still remains the only biomarker with a satisfactory level of prediction of a patient’s outcome to IO. The fact that its predicative performance is less than ideal, however, highlights the desperate need for more comprehensive and more precise and effective molecular analyses in this setting of patients. The latter are what this project aims at discovering and implementing.
In recent years, the explosion of AI, ML, DL and the new AI subfield of explainable Trustworthy AI has created the highly exciting opportunity to use a brand new set of tools to assess the vast amounts of data generated from clinical trials and translational researches. The I3LUNG project plans to develop a European - and beyond - platform which will capitalize on these new tools to cope with the complexity of available data on lung cancer biomarkers. By synthesizing and correlating the information from multiple sources of biological and clinical information, it will thereby help in developing a set of methods that will in turn enable the project’s technical partners to construct a novel AI tool which can provide individualized predictions for the efficacy of IO in specific patients, and offer suggestions for care pathways, in coordination with all involved actors (patients, oncologists, researchers) and their human intelligence. This individualized patient selection plan will help reduce the economic burden for patients and, in the longer term, for healthcare systems, and first and foremost it will improve the outcomes of therapy for patients by better matching them and their specific situation to different available treatments.
This challenging objective will be a collaborative effort, which will include 16 partners in the I3LUNG consortium. Some among the best European and International organizations will join forces for this ambitious project: Fondazione IRCCS Istituto Nazionale dei Tumori (INT, Milan, Italy) is the coordinator of the Consortium with its PI Dr. Arsela Prelaj, Politecnico di Milano (POLIMI, Milan, Italy), Istituto di Ricerche Farmacologiche Mario Negri (IRFMN, Milan, Italy), Istituto Europeo di Oncologia (IEO; Milan, Italy), ML Cube (Milan, Italy), LungenClinic Grosshansdorf GmbH (GHD, Grosshansdorf, Germany), Universitaetsklinikum Hamburg-Eppendorf (UKE, Hamburg, Germany), Vall d’Hebron Institute of Oncology (VHIO, Barcelona, Spain), Medica Scientia Innovation Research (MEDSIR, Barcelona, Spain & New Jersey, USA), Metropolitan Hospital (MH, Pireas, Greece), Shaare Zedek Medical Center (SZMC, Jerusalem, Israel), Katholieke Universiteit Leuven (KUL, Leuven, Belgium), The Swedish Institute for Health Economics (IHE, Lund, Sweden), The University of Chicago (UOC, Chicago, USA), Aalborg Universitet (AAU, Aalborg, Denmark), Lung Cancer Europe (LUCE, Bern, Switzerland).
I3LUNG and its partners will have a timeframe of 5 years and a 10 million euros budget to turn their project’s hypothesis in a tangible tool and a new clinical reality. I3LUNG is the first platform enrolling such an important number of patients in both a retrospective (2,000) and prospective (200) manner including such a diversity of multiomic data, arising as an innovative and promising technology to provide an answer to the unmet clinical need of translational research data integration and AI use. If successful, the approach presented in I3LUNG could in the near future justify an initial pilot study which could expand on the project and attempt to apply the tools and methodologies developed to all the cancer types for which patients are candidate to IO in daily practice.