HCA Data Explorer

Integrative analysis of cell state changes in lung fibrosis with peripheral protein biomarkers

Updated November 7, 2023

The correspondence of cell state changes in diseased organs to peripheral protein signatures is currently unknown. Here, we generated and integrated single‐cell transcriptomic and proteomic data from multiple large pulmonary fibrosis patient cohorts. Integration of 233,638 single‐cell transcriptomes (n = 61) across three independent cohorts enabled us to derive shifts in cell type proportions and a robust core set of genes altered in lung fibrosis for 45 cell types. Mass spectrometry analysis of lung lavage fluid (n = 124) and plasma (n = 141) proteomes identified distinct protein signatures correlated with diagnosis, lung function, and injury status. A novel SSTR2+ pericyte state correlated with disease severity and was reflected in lavage fluid by increased levels of the complement regulatory factor CFHR1. We further discovered CRTAC1 as a biomarker of alveolar type‐2 epithelial cell health status in lavage fluid and plasma. Using cross‐modal analysis and machine learning, we identified the cellular source of biomarkers and demonstrated that information transfer between modalities correctly predicts disease status, suggesting feasibility of clinical cell state monitoring through longitudinal sampling of body fluid proteomes.

Fabian TheisHelmholtz Zentrum München, Institute of Computational Biologyfabian.theis@helmholtz-muenchen.de
Herbert SchillerHelmholtz Zentrum München, Institute of Lung Biology and Diseaseherbert.schiller@helmholtz-muenchen.de
Christoph Mayr1
Lukas Simon2
Gabriela Leuschner1
Meshal Ansari1
Philipp Geyer3
Ilias Angelidis1
Maximilian Strunz1
Pawandeep Singh1
Nikolaus Kneidinger4
Frank Reichenberger5
Edith Silbernagel5
Stephan Böhm6
Heiko Adler7
Anne Hilgendorff8
Michael Lindner5
Antje Prasse9
Jürgen Behr4
Matthias Mann3
Oliver Eickelberg9
Fabian Theis2
Herbert Schiller1
1Helmholtz Zentrum München, Institute of Lung Biology and Disease
2Helmholtz Zentrum München, Institute of Computational Biology
3Max Planck Institute of Biochemistry, Department of Proteomics and Signal Transduction
4Department of Internal Medicine V, Ludwig-Maximilian University Munich
5Asklepios Fachkliniken Munich-Gauting
6Max von Pettenkofer-Institute, Virology, National Reference Center for Retroviruses
7Helmholtz Zentrum München, Research Unit Lung Repair and Regeneration
8Department of Neonatology, Ludwig-Maximilians University,
9Department of Pneumology, Hannover Medical School
Wei Kheng Teh

To reference this project, please use the following link:

https://explore.data.humancellatlas.org/projects/2f676143-80c2-4bc6-b7b4-2613fe0fadf0

Supplementary links are provided by contributors and represent items such as additional data which can’t be hosted here; code that was used to analyze this data; or tools and visualizations associated with this specific dataset.

1.http://www.ebi.ac.uk/pride/archive/projects/PXD0171452.http://www.ebi.ac.uk/pride/archive/projects/PXD0172103.https://github.com/theislab/2020_Mayr
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Analysis Portals

None

Project Label

lungFibrosisProteinSignatures

Species

Homo sapiens

Sample Type

specimens

Anatomical Entity

lung

Organ Part

lung parenchyma

Selected Cell Types

Unspecified

Disease Status (Specimen)

3 disease statuses

Disease Status (Donor)

3 disease statuses

Development Stage

human adult stage

Library Construction Method

Drop-seq

Nucleic Acid Source

single cell

Paired End

true

Analysis Protocol

matrix_analysis, processed_matrix_generation, raw_matrix_generation

File Format

2 file formats

Cell Count Estimate

41.9k

Donor Count

15
h5ad1 file(s)xlsx1 file(s)