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Machine learning assisted immune profiling of COPD identifies a unique emphysema subtype independent of GOLD stage

  • Natalie Bordag
  • , Katharina Jandl
  • , Ayu Hutami Syarif
  • , Jürgen Gindlhuber
  • , Diana Schnoegl
  • , Ayse Ceren Mutgan
  • , Vasile Foris
  • , Konrad Hoetzenecker
  • , Panja Maria Boehm
  • , Robab Breyer-Kohansal
  • , Katarina Zeder
  • , Gregor Gorkiewicz
  • , Francesca Polverino
  • , Slaven Crnkovic
  • , Grazyna Kwapiszewska
  • , Leigh Matthew Marsh

Research output: Contribution to journalArticlepeer-review

Abstract

Chronic obstructive pulmonary disease (COPD) is a severe, progressive, and heterogeneous disease with a poor outcome. Inflammation plays a central role in disease pathogenesis; however, the interplay between immune changes and disease heterogeneity has been difficult to unravel. We performed a multilevel immunoinflammatory characterization of patients with COPD using flow cytometry, cytokine profiling, single-cell, or spatial transcriptomics in combination with machine learning algorithms. Our cross-cohort analysis demonstrated shared skewing of immune profiles in COPD lungs toward adaptive immune cells. We furthermore identified a subgroup of patients with COPD with a distinct immune profile, characterized by increased antigen-presenting cells, mast cells, and CD8+ cells, and circulating IL-1β, IFN-β, and GM-CSF, that were associated with increased emphysema severity and decreased gas exchange parameters independent of their GOLD-stage. Our findings suggest that unbiased immune profiling can refine disease classification and reveal inflammation-driven disease subtypes with potential relevance for prognosis and treatment strategies.

Original languageEnglish (US)
Article number112966
JournaliScience
Volume28
Issue number7
DOIs
StatePublished - Jul 18 2025
Externally publishedYes

Keywords

  • machine learning
  • respiratory medicine

ASJC Scopus subject areas

  • General

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