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Integration of deep learning-based histopathology and transcriptomics reveals key genes associated with fibrogenesis in patients with advanced NASH

Article

Nonalcoholic steatohepatitis (NASH) is the most common chronic liver disease globally and a leading cause for liver transplantation in the US. Its pathogenesis remains imprecisely defined. We combined two high-resolution modalities to tissue samples from NASH clinical trials, machine learning (ML)-based quantification of histological features and transcriptomics, to identify genes that are associated with disease progression and clinical events. A histopathology-driven 5-gene expression signature predicted disease progression and clinical events in patients with NASH with F3 (pre-cirrhotic) and F4 (cirrhotic) fibrosis. Notably, the Notch signaling pathway and genes implicated in liver-related diseases were enriched in this expression signature. In a validation cohort where pharmacologic intervention improved disease histology, multiple Notch signaling components were suppressed.

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Authors

  • Jake Conway,
  • 1,4 Maryam Pouryahya,
  • 1,4 Yevgeniy Gindin,
  • 2 David Z. Pan,
  • 2 Oscar M. Carrasco-Zevallos,
  • 1 Victoria Mountain,
  • 1 G. Mani Subramanian,
  • 3 Michael C. Montalto,
  • 1 Murray Resnick,
  • 1 Andrew H. Beck,
  • 1 Ryan S. Huss,
  • 3 Robert P. Myers,
  • 3 Amaro Taylor-Weiner,
  • 1 Ilan Wapinski,
  • 1,5,* and Chuhan Chung2