Frontiers in Molecular Biosciences (Sep 2022)

A circulating miR-19b-based model in diagnosis of human breast cancer

  • Qian Zhao,
  • Lei Shen,
  • Lei Shen,
  • Jinhui Lü,
  • Heying Xie,
  • Heying Xie,
  • Danni Li,
  • Yuanyuan Shang,
  • Yuanyuan Shang,
  • Liqun Huang,
  • Liqun Huang,
  • Lingyu Meng,
  • Xuefeng An,
  • Xuefeng An,
  • Jieru Zhou,
  • Jieru Zhou,
  • Jing Han,
  • Jing Han,
  • Zuoren Yu

DOI
https://doi.org/10.3389/fmolb.2022.980841
Journal volume & issue
Vol. 9

Abstract

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Abstract Objective: Breast cancer (BC) is becoming the leading cause of cancer-related death in women all over the word. Identification of diagnostic biomarkers for early detection of BC is one of the most effective ways to reduce the mortality.Methods: Plasma samples from BC patients (n = 120) and normal controls (n = 50) were collected to determine the differentially expressed circulating miRNAs in BC patients. Binary logistic regression was applied to develop miRNA diagnostic models. Receiver operating characteristic (ROC) curves were applied to calculate the area under the curve (AUC). MMTV-PYMT mammary tumor mice were used to validate the expression change of those circulating miRNAs. Plasma samples from patients with other tumor types were collected to determine the specificity of the model in diagnosis of BC.Results: In the screening phase, 5 circulating miRNAs (miR-16, miR-17, miR-19b, miR-27a, and miR-106a) were identified as the most significantly upregulated miRNAs in plasma of BC patients. In consistence, the 5 miRNAs showed upregulation in the circulation of additional 80 BC patients in a tumor stage-dependent manner. Application of a tumor-burden mice model further confirmed upregulation of the 5 miRNAs in circulation. Based on these data, five models with diagnostic potential of BC were developed. Among the 5 miRNAs, miR-19b ranked at the top position with the highest specificity and the biggest contribution. In combination with miR-16 and miR-106a, a miR-19b-based 3-circulating miRNA model was selected as the best for further validation. Taken the samples together, the model showed 92% of sensitivity and 90% of specificity in diagnosis of BC. In addition, three other tumor types including prostate cancer, thyroid cancer and colorectal cancer further verified the specificity of the BC diagnostic model. Conclusion: The current study developed a miR-19b-based 3-miRNA model holding potential for diagnosis of BC using blood samples.

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