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Updated: Nov 25, 2025

Multi-color Localization Microscopy of Single Membrane Proteins in Organelles of Live Mammalian Cells
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MirLocPredictor: A ConvNet-Based Multi-Label MicroRNA Subcellular Localization Predictor by Incorporating k-Mer

Muhammad Nabeel Asim1,2, Muhammad Imran Malik3, Christoph Zehe4

  • 1German Research Center for Artificial Intelligence (DFKI), 67663 Kaiserslautern, Germany.

Genes
|December 15, 2020
PubMed
Summary

We developed kmerPR2vec, a novel method to represent microRNA (miRNA) sequences by integrating positional information. This approach significantly improves the accuracy of predicting miRNA subcellular localization using our MirLocPredictor tool.

Keywords:
convolutional neural networkk-mer positional encodingmicroRNA location predictormicroRNA multi-label classificationmicroRNA subcellular localization

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Area of Science:

  • Bioinformatics
  • Computational Biology
  • Molecular Biology

Background:

  • MicroRNAs (miRNAs) are crucial regulators of gene expression, impacting approximately 60% of mammalian genes.
  • Current methods for visualizing miRNA subcellular localization are limited, hindering research into their function, transport, and biogenesis.
  • Existing tools like MIRLocator use sequence-to-sequence models and k-mer embeddings, but overlook nucleotide positional importance.

Purpose of the Study:

  • To address the limitations in miRNA subcellular localization prediction.
  • To introduce a novel sequence representation that captures nucleotide positional information.
  • To develop an accurate computational tool for predicting miRNA subcellular localization.

Main Methods:

  • Proposed kmerPR2vec, a novel representation fusing k-mer positional information with randomly initialized neural embeddings.
  • Developed MirLocPredictor, an end-to-end system combining kmerPR2vec with Convolutional Neural Networks (CNNs) for miRNA localization prediction.
  • Evaluated kmerPR2vec using deep learning models (CNN, RNN) and nine evaluation metrics.

Main Results:

  • The kmerPR2vec representation demonstrated richer semantic information and greater discriminative power compared to existing methods.
  • MirLocPredictor significantly outperformed state-of-the-art methods in miRNA subcellular localization prediction.
  • Achieved substantial improvements of 18% in precision and 19% in recall.

Conclusions:

  • The kmerPR2vec approach effectively incorporates crucial positional information for RNA sequences.
  • MirLocPredictor offers a powerful and accurate tool for predicting miRNA subcellular localization.
  • This advancement facilitates deeper understanding of miRNA functions and regulatory mechanisms.