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.
Deep Visual Proteomics maps proteotoxicity in a genetic liver disease.
深度可视化蛋白质组学绘制遗传性肝病中的蛋白质毒性图谱
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作者:Rosenberger Florian A, Mädler Sophia C, Thorhauge Katrine Holtz, Steigerwald Sophia, Fromme Malin, Lebedev Mikhail, Weiss Caroline A M, Oeller Marc, Wahle Maria, Metousis Andreas, Zwiebel Maximilian, Schmacke Niklas A, Detlefsen Sönke, Boor Peter, Fabián OndÅej, FraÅková SoÅa, Krag Aleksander, Strnad Pavel, Mann Matthias
| 期刊: | Nature | 影响因子: | 48.500 |
| 时间: | 2025 | 起止号: | 2025 Jun;642(8067):484-491 |
| doi: | 10.1038/s41586-025-08885-4 | 研究方向: | 其它 |
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