Lung cancer multi-omics digital human avatars for integrating precision medicine into clinical practice: the LANTERN study

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Filippo Lococo - , Catholic University of the Sacred Heart (Author)
  • Luca Boldrini - , Catholic University of the Sacred Heart (Author)
  • Charles-Davies Diepriye - , A. Gemelli University Hospital Foundation IRCCS (Author)
  • Jessica Evangelista - , Catholic University of the Sacred Heart (Author)
  • Camilla Nero - , Catholic University of the Sacred Heart (Author)
  • Sara Flamini - , A. Gemelli University Hospital Foundation IRCCS (Author)
  • Angelo Minucci - , Catholic University of the Sacred Heart (Author)
  • Elisa De Paolis - , A. Gemelli University Hospital Foundation IRCCS (Author)
  • Emanuele Vita - , Catholic University of the Sacred Heart (Author)
  • Alfredo Cesario - , Catholic University of the Sacred Heart (Author)
  • Salvatore Annunziata - , Catholic University of the Sacred Heart (Author)
  • Maria Lucia Calcagni - , Catholic University of the Sacred Heart (Author)
  • Marco Chiappetta - , Catholic University of the Sacred Heart (Author)
  • Alessandra Cancellieri - , Catholic University of the Sacred Heart (Author)
  • Anna Rita Larici - , Catholic University of the Sacred Heart (Author)
  • Giuseppe Cicchetti - , Catholic University of the Sacred Heart (Author)
  • Esther G C Troost - , Department of Radiation Oncology, OncoRay ZIC - National Center for Radiation Research in Oncology (Partners: UKD, HZDR), German Cancer Consortium (Partner: DKTK, DKFZ), National Center for Tumor Diseases (Partners: UKD, MFD, HZDR, DKFZ), University Hospital Carl Gustav Carus Dresden, German Cancer Research Center (DKFZ), Helmholtz-Zentrum Dresden-Rossendorf (Author)
  • Róza Ádány - , University of Debrecen (Author)
  • Núria Farré - , Hospital de la Santa creu i Sant Pau (Author)
  • Ece Öztürk - , Sariyer (Author)
  • Dominique Van Doorne - , University of Turin - Academy of the Expert Patient ADPEE - EUPATI (Author)
  • Fausto Leoncini - , Catholic University of the Sacred Heart (Author)
  • Andrea Urbani - , Catholic University of the Sacred Heart (Author)
  • Rocco Trisolini - , Catholic University of the Sacred Heart (Author)
  • Emilio Bria - , Catholic University of the Sacred Heart (Author)
  • Alessandro Giordano - , Catholic University of the Sacred Heart (Author)
  • Guido Rindi - , Catholic University of the Sacred Heart (Author)
  • Evis Sala - , Catholic University of the Sacred Heart (Author)
  • Giampaolo Tortora - , Catholic University of the Sacred Heart (Author)
  • Vincenzo Valentini - , Catholic University of the Sacred Heart (Author)
  • Stefania Boccia - , Catholic University of the Sacred Heart (Author)
  • Stefano Margaritora - , Catholic University of the Sacred Heart (Author)
  • Giovanni Scambia - , Catholic University of the Sacred Heart (Author)

Abstract

BACKGROUND: The current management of lung cancer patients has reached a high level of complexity. Indeed, besides the traditional clinical variables (e.g., age, sex, TNM stage), new omics data have recently been introduced in clinical practice, thereby making more complex the decision-making process. With the advent of Artificial intelligence (AI) techniques, various omics datasets may be used to create more accurate predictive models paving the way for a better care in lung cancer patients.

METHODS: The LANTERN study is a multi-center observational clinical trial involving a multidisciplinary consortium of five institutions from different European countries. The aim of this trial is to develop accurate several predictive models for lung cancer patients, through the creation of Digital Human Avatars (DHA), defined as digital representations of patients using various omics-based variables and integrating well-established clinical factors with genomic data, quantitative imaging data etc. A total of 600 lung cancer patients will be prospectively enrolled by the recruiting centers and multi-omics data will be collected. Data will then be modelled and parameterized in an experimental context of cutting-edge big data analysis. All data variables will be recorded according to a shared common ontology based on variable-specific domains in order to enhance their direct actionability. An exploratory analysis will then initiate the biomarker identification process. The second phase of the project will focus on creating multiple multivariate models trained though advanced machine learning (ML) and AI techniques for the specific areas of interest. Finally, the developed models will be validated in order to test their robustness, transferability and generalizability, leading to the development of the DHA. All the potential clinical and scientific stakeholders will be involved in the DHA development process. The main goals aim of LANTERN project are: i) To develop predictive models for lung cancer diagnosis and histological characterization; (ii) to set up personalized predictive models for individual-specific treatments; iii) to enable feedback data loops for preventive healthcare strategies and quality of life management.

DISCUSSION: The LANTERN project will develop a predictive platform based on integration of multi-omics data. This will enhance the generation of important and valuable information assets, in order to identify new biomarkers that can be used for early detection, improved tumor diagnosis and personalization of treatment protocols.

ETHICS COMMITTEE APPROVAL NUMBER: 5420 - 0002485/23 from Fondazione Policlinico Universitario Agostino Gemelli IRCCS - Università Cattolica del Sacro Cuore Ethics Committee.

TRIAL REGISTRATION: clinicaltrial.gov - NCT05802771.

Details

Original languageEnglish
Article number540
JournalBMC cancer
Volume23
Issue number1
Publication statusPublished - 13 Jun 2023
Peer-reviewedYes

External IDs

PubMedCentral PMC10262371
Scopus 85161949040

Keywords

Sustainable Development Goals

Keywords

  • Humans, Precision Medicine, Artificial Intelligence, Multiomics, Quality of Life, Lung Neoplasms/diagnosis