Go to The Journal of Clinical Investigation
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Transfers
  • Advertising
  • Job board
  • Contact
  • Physician-Scientist Development
  • Current issue
  • Past issues
  • By specialty
    • COVID-19
    • Cardiology
    • Immunology
    • Metabolism
    • Nephrology
    • Oncology
    • Pulmonology
    • All ...
  • Videos
  • Collections
    • In-Press Preview
    • Resource and Technical Advances
    • Clinical Research and Public Health
    • Research Letters
    • Editorials
    • Perspectives
    • Physician-Scientist Development
    • Reviews
    • Top read articles

  • Current issue
  • Past issues
  • Specialties
  • In-Press Preview
  • Resource and Technical Advances
  • Clinical Research and Public Health
  • Research Letters
  • Editorials
  • Perspectives
  • Physician-Scientist Development
  • Reviews
  • Top read articles
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Transfers
  • Advertising
  • Job board
  • Contact
Key driver genes as potential therapeutic targets in renal allograft rejection
Zhengzi Yi, Karen L. Keung, Li Li, Min Hu, Bo Lu, Leigh Nicholson, Elvira Jimenez-Vera, Madhav C. Menon, Chengguo Wei, Stephen Alexander, Barbara Murphy, Philip J. O’Connell, Weijia Zhang
Zhengzi Yi, Karen L. Keung, Li Li, Min Hu, Bo Lu, Leigh Nicholson, Elvira Jimenez-Vera, Madhav C. Menon, Chengguo Wei, Stephen Alexander, Barbara Murphy, Philip J. O’Connell, Weijia Zhang
View: Text | PDF
Research Article Transplantation

Key driver genes as potential therapeutic targets in renal allograft rejection

  • Text
  • PDF
Abstract

Acute rejection (AR) in renal transplantation is an established risk factor for reduced allograft survival. Molecules with regulatory control among immune pathways of AR that are inadequately suppressed, despite standard-of-care immunosuppression, could serve as important targets for therapeutic manipulation to prevent rejection. Here, an integrative, network-based computational strategy incorporating gene expression and genotype data of human renal allograft biopsy tissue was applied, to identify the master regulators — the key driver genes (KDGs) — within dysregulated AR pathways. A 982–meta-gene signature with differential expression in AR versus non-AR was identified from a meta-analysis of microarray data from 735 human kidney allograft biopsy samples across 7 data sets. Fourteen KDGs were derived from this signature. Interrogation of 2 publicly available databases identified compounds with predicted efficacy against individual KDGs or a key driver–based gene set, respectively, which could be repurposed for AR prevention. Minocycline, a tetracycline antibiotic, was chosen for experimental validation in a murine cardiac allograft model of AR. Minocycline attenuated the inflammatory profile of AR compared with controls and when coadministered with immunosuppression prolonged graft survival. This study demonstrates that a network-based strategy, using expression and genotype data to predict KDGs, assists target prioritization for therapeutics in renal allograft rejection.

Authors

Zhengzi Yi, Karen L. Keung, Li Li, Min Hu, Bo Lu, Leigh Nicholson, Elvira Jimenez-Vera, Madhav C. Menon, Chengguo Wei, Stephen Alexander, Barbara Murphy, Philip J. O’Connell, Weijia Zhang

×

Figure 3

Coexpression modules based on meta-genes and differential modules between AR versus non-AR patients.

Options: View larger image (or click on image) Download as PowerPoint
Coexpression modules based on meta-genes and differential modules betwee...
(A) Top 10 modules (M1–M10) and their primary GO biological processes. Six of the 10 modules were able to differentiate between AR from non-AR patients, as highlighted with an asterisk (permutation test P < 0.05). The largest modules comprising the greatest number of DEGs were 1, 3, and 4. Each node represents a gene, with the color denoting the degree of upregulation (red) or downregulation (green). (B) Bar plot in lower panel shows connectivity distance between AR patients and non-AR patients. Differential modules are marked with asterisks.

Copyright © 2026 American Society for Clinical Investigation
ISSN 2379-3708

Sign up for email alerts