Deep Visual Proteomics maps proteotoxicity in a genetic liver disease

Florian A. Rosenberger(Max Planck Institute of Biochemistry), Sophia C. Mädler(Max Planck Institute of Biochemistry), Katrine Holtz Thorhauge(University of Southern Denmark), Sophia Steigerwald(Max Planck Institute of Biochemistry), Malin Fromme(RWTH Aachen University), Mikhail Lebedev(Max Planck Institute of Biochemistry), Caroline A M Weiss(Max Planck Institute of Biochemistry), Marc Oeller(Max Planck Institute of Biochemistry), Maria Wahle(Max Planck Institute of Biochemistry), Andreas Metousis(Max Planck Institute of Biochemistry), Maximilian Zwiebel(Max Planck Institute of Biochemistry), Niklas A. Schmacke(Max Planck Institute of Biochemistry), Sönke Detlefsen(University of Southern Denmark), Peter Boor(RWTH Aachen University), Ondřej Fabián(Charles University), Soňa Fraňková(Institute of Clinical and Experimental Medicine), Aleksander Krag(University of Southern Denmark), Pavel Strnad(RWTH Aachen University), Matthias Mann(University of Copenhagen)
Nature
April 16, 2025
Cited by 38Open Access
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Abstract

Abstract Protein misfolding diseases, including α1-antitrypsin deficiency (AATD), pose substantial health challenges, with their cellular progression still poorly understood 1–3 . We use spatial proteomics by mass spectrometry and machine learning to map AATD in human liver tissue. Combining Deep Visual Proteomics (DVP) with single-cell analysis 4,5 , we probe intact patient biopsies to resolve molecular events during hepatocyte stress in pseudotime across fibrosis stages. We achieve proteome depth of up to 4,300 proteins from one-third of a single cell in formalin-fixed, paraffin-embedded tissue. This dataset reveals a potentially clinically actionable peroxisomal upregulation that precedes the canonical unfolded protein response. Our single-cell proteomics data show α1-antitrypsin accumulation is largely cell-intrinsic, with minimal stress propagation between hepatocytes. We integrated proteomic data with artificial intelligence-guided image-based phenotyping across several disease stages, revealing a late-stage hepatocyte phenotype characterized by globular protein aggregates and distinct proteomic signatures, notably including elevated TNFSF10 (also known as TRAIL) amounts. This phenotype may represent a critical disease progression stage. Our study offers new insights into AATD pathogenesis and introduces a powerful methodology for high-resolution, in situ proteomic analysis of complex tissues. This approach holds potential to unravel molecular mechanisms in various protein misfolding disorders, setting a new standard for understanding disease progression at the single-cell level in human tissue.


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