Computational and Structural Biotechnology Journal (Jan 2023)

Proteome deconvolution of liver biopsies reveals hepatic cell composition as an important marker of fibrosis

  • Niklas Handin,
  • Di Yuan,
  • Magnus Ölander,
  • Christine Wegler,
  • Cecilia Karlsson,
  • Rasmus Jansson-Löfmark,
  • Jøran Hjelmesæth,
  • Anders Åsberg,
  • Volker M. Lauschke,
  • Per Artursson

Journal volume & issue
Vol. 21
pp. 4361 – 4369

Abstract

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Human liver tissue is composed of heterogeneous mixtures of different cell types and their cellular stoichiometry can provide information on hepatic physiology and disease progression. Deconvolution algorithms for the identification of cell types and their proportions have recently been developed for transcriptomic data. However, no method for the deconvolution of bulk proteomics data has been presented to date. Here, we show that proteomes, which usually contain less data than transcriptomes, can provide useful information for cell type deconvolution using different algorithms. We demonstrate that proteomes from defined mixtures of cell lines, isolated primary liver cells, and human liver biopsies can be deconvoluted with high accuracy. In contrast to transcriptome-based deconvolution, liver tissue proteomes also provided information about extracellular compartments. Using deconvolution of proteomics data from liver biopsies of 56 patients undergoing Roux-en-Y gastric bypass surgery we show that proportions of immune and stellate cells correlate with inflammatory markers and altered composition of extracellular matrix proteins characteristic of early-stage fibrosis. Our results thus demonstrate that proteome deconvolution can be used as a molecular microscope for investigations of the composition of cell types, extracellular compartments, and for exploring cell-type specific pathological events. We anticipate that these findings will allow the refinement of retrospective analyses of the growing number of proteome datasets from various liver disease states and pave the way for AI-supported clinical and preclinical diagnostics.

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