STAR Protocols (Dec 2023)

A user-driven machine learning approach for RNA-based sample discrimination and hierarchical classification

  • Tashifa Imtiaz,
  • Jina Nanayakkara,
  • Alexis Fang,
  • Danny Jomaa,
  • Harrison Mayotte,
  • Simona Damiani,
  • Fiza Javed,
  • Tristan Jones,
  • Emily Kaczmarek,
  • Flourish Omolara Adebayo,
  • Uroosa Imtiaz,
  • Yiheng Li,
  • Richard Zhang,
  • Parvin Mousavi,
  • Neil Renwick,
  • Kathrin Tyryshkin

Journal volume & issue
Vol. 4, no. 4
p. 102661

Abstract

Read online

Summary: RNA-based sample discrimination and classification can be used to provide biological insights and/or distinguish between clinical groups. However, finding informative differences between sample groups can be challenging due to the multidimensional and noisy nature of sequencing data. Here, we apply a machine learning approach for hierarchical discrimination and classification of samples with high-dimensional miRNA expression data. Our protocol comprises data preprocessing, unsupervised learning, feature selection, and machine-learning-based hierarchical classification, alongside open-source MATLAB code. : Publisher’s note: Undertaking any experimental protocol requires adherence to local institutional guidelines for laboratory safety and ethics.

Keywords