Genes (Nov 2020)

Hsa-miR-375/RASD1 Signaling May Predict Local Control in Early Breast Cancer

  • Barbara Zellinger,
  • Ulrich Bodenhofer,
  • Immanuela A. Engländer,
  • Cornelia Kronberger,
  • Peter Strasser,
  • Brane Grambozov,
  • Gerd Fastner,
  • Markus Stana,
  • Roland Reitsamer,
  • Karl Sotlar,
  • Felix Sedlmayer,
  • Franz Zehentmayr

DOI
https://doi.org/10.3390/genes11121404
Journal volume & issue
Vol. 11, no. 12
p. 1404

Abstract

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Background: In order to characterize the various subtypes of breast cancer more precisely and improve patients selection for breast conserving therapy (BCT), molecular profiling has gained importance over the past two decades. MicroRNAs, which are small non-coding RNAs, can potentially regulate numerous downstream target molecules and thereby interfere in carcinogenesis and treatment response via multiple pathways. The aim of the current two-phase study was to investigate whether hsa-miR-375-signaling through RASD1 could predict local control (LC) in early breast cancer. Results: The patient and treatment characteristics of 81 individuals were similarly distributed between relapse (n = 27) and control groups (n = 54). In the pilot phase, the primary tumors of 28 patients were analyzed with microarray technology. Of the more than 70,000 genes on the chip, 104 potential hsa-miR-375 target molecules were found to have a lower expression level in relapse patients compared to controls (p-value p-value of 0.058). In a second phase, this finding could be validated in an independent set of 53 patients using ddPCR. Patients with enhanced levels of hsa-miR-375 compared to RASD1 had a higher probability of local relapse than those with the inverse expression pattern of the two markers (log-rank test, p-value = 0.069). Conclusion: This two-phase study demonstrates that hsa-miR-375/RASD1 signaling is able to predict local control in early breast cancer patients, which—to our knowledge—is the first clinical report on a miR combined with one of its downstream target proteins predicting LC in breast cancer.

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