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Exploratory study of extracellular matrix biomarkers for non-invasive liver fibrosis staging: A machine learning approach with XGBoost and explainable AI

  • Valeria Carnazzo
  • , Stefano Pignalosa
  • , Marzia Tagliaferro
  • , Laura Gragnani
  • , Anna Linda Zignego
  • , Cosimo Racco
  • , Luigi Di Biase
  • , Valerio Basile
  • , Gian Ludovico Rapaccini
  • , Riccardo Di Santo
  • , Benedetta Niccolini
  • , Mariapaola Marino*
  • , Marco De Spirito
  • , Guido Gigante
  • , Gabriele Ciasca
  • , Umberto Basile
  • *Corresponding author
  • Santa Maria Goretti Hospital
  • University of Pisa
  • University of Florence
  • IRCCS Istituti fisioterapici ospitalieri - Istituto Regina Elena
  • Department of Research
  • Istituto Superiore di Sanita

Research output: Contribution to journalArticle

Abstract

Background: Novel circulating markers for the non-invasive staging of chronic liver disease (CLD) are in high demand. Although underutilized, extracellular matrix (ECM) components offer significant diagnostic potential. This study evaluates ECM-related markers in hepatitis C virus (HCV)-positive patients across varying fibrosis stages. Methods: Sixty-eight patients with mild-to-moderate fibrosis (F1-F2), sixty-six with advanced fibrosis (F3-F4), and thirty healthy donors were recruited. Inclusion criteria were detectable HCV-RNA and no other liver diseases or co-infections. Levels of ECM markers—hyaluronic acid (HA), laminin (LN), collagen-III N-peptide (PIIIP N-P), collagen-IV (C-IV)—along with cholylglycine (CG) and Golgi protein-73 (GP73), were measured in serum using the MAGLUMI 800 CLIA platform. Results: Levels of LN, HA, C-IV, PIIIP N-P (p < 0.001), and GP73 (p < 0.01) increased from controls to F1-F2 and F3-F4. CG levels were higher in pathological subjects compared to controls (p < 0.001), but no significant differences emerged between fibrosis stages. These trends persisted after adjusting for age and sex. A multivariate ordinal regression identified LN, PIIIP N-P, and C-IV as promising markers, with an accuracy of 0.77. An XGBoost model improved accuracy to 0.87 and enhanced other metrics. SHAP analysis confirmed these variables as key contributors to the model's predictions. Conclusion: This study underscores the potential of ECM biomarkers, particularly LN, PIIIP N-P, and C-IV, in non-invasively staging CLD. Furthermore, our preliminary data suggest that a machine learning approach, combined with explainable AI, could further enhance diagnostic accuracy, potentially reducing the need for invasive biopsies.
Original languageEnglish
Pages (from-to)1-10
Number of pages10
JournalClinical Biochemistry
Volume135
Issue numberN/A
DOIs
Publication statusPublished - 2024

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

All Science Journal Classification (ASJC) codes

  • Clinical Biochemistry

Keywords

  • Biomarkers
  • Collagen-III N-peptide
  • Collagen-IV
  • ECM
  • Explainable AI
  • HCV
  • Liver fibrosis
  • Machine learning
  • XGBoost

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