Functionally characterizing obesity-susceptibility genes using CRISPR/Cas9, in vivo imaging and deep learning

Eugenia Mazzaferro, Endrina Mujica, Hanqing Zhang, Anastasia Emmanouilidou, Anne Jenseit, Bade Evcimen, Christoph Metzendorf, Olga Dethlefsen, Ruth Jf Loos, Sara Gry Vienberg, Anders Larsson, Amin Allalou, Marcel den Hoed*

*Corresponding author for this work

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Abstract

Hundreds of loci have been robustly associated with obesity-related traits, but functional characterization of candidate genes remains a bottleneck. Aiming to systematically characterize candidate genes for a role in accumulation of lipids in adipocytes and other cardiometabolic traits, we developed a pipeline using CRISPR/Cas9, non-invasive, semi-automated fluorescence imaging and deep learning-based image analysis in live zebrafish larvae. Results from a dietary intervention show that 5 days of overfeeding is sufficient to increase the odds of lipid accumulation in adipocytes by 10 days post-fertilization (dpf, n = 275). However, subsequent experiments show that across 12 to 16 established obesity genes, 10 dpf is too early to detect an effect of CRISPR/Cas9-induced mutations on lipid accumulation in adipocytes (n = 1014), and effects on food intake at 8 dpf (n = 1127) are inconsistent with earlier results from mammals. Despite this, we observe effects of CRISPR/Cas9-induced mutations on ectopic accumulation of lipids in the vasculature (sh2b1 and sim1b) and liver (bdnf); as well as on body size (pcsk1, pomca, irs1); whole-body LDLc and/or total cholesterol content (irs2b and sh2b1); and pancreatic beta cell traits and/or glucose content (pcsk1, pomca, and sim1a). Taken together, our results illustrate that CRISPR/Cas9- and image-based experiments in zebrafish larvae can highlight direct effects of obesity genes on cardiometabolic traits, unconfounded by their - not yet apparent - effect on excess adiposity.

Original languageEnglish
Article number5408
JournalScientific Reports
Volume15
Issue number1
Number of pages19
ISSN2045-2322
DOIs
Publication statusPublished - 2025

Bibliographical note

© 2025. The Author(s).

Keywords

  • Animals
  • Zebrafish/genetics
  • CRISPR-Cas Systems
  • Obesity/genetics
  • Deep Learning
  • Genetic Predisposition to Disease
  • Lipid Metabolism/genetics
  • Adipocytes/metabolism
  • Mutation

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