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BioDiscViz: A visualization support and consensus signature selector for BioDiscML results

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  • Sophiane Bouirdene
  • Mickael Leclercq
  • Léopold Quitté
  • Steve Bilodeau
  • Arnaud Droit

Abstract

Machine learning (ML) algorithms are powerful tools to find complex patterns and biomarker signatures when conventional statistical methods fail to identify them. While the ML field made significant progress, state of the art methodologies to build efficient and non-overfitting models are not always applied in the literature. To this purpose, automatic programs, such as BioDiscML, were designed to identify biomarker signatures and correlated features while escaping overfitting using multiple evaluation strategies, such as cross validation, bootstrapping and repeated holdout. To further improve BioDiscML and reach a broader audience, better visualization support and flexibility in choosing the best models and signatures are needed. Thus, to provide researchers with an easily accessible and usable tool for in depth investigation of the results from BioDiscML outputs, we developed a visual interaction tool called BioDiscViz. This tool provides summaries, tables and graphics, in the form of Principal Component Analysis (PCA) plots, UMAP, t-SNE, heatmaps and boxplots for the best model and the correlated features. Furthermore, this tool also provides visual support to extract a consensus signature from BioDiscML models using a combination of filters. BioDiscViz will be a great visual support for research using ML, hence new opportunities in this field by opening it to a broader community.

Suggested Citation

  • Sophiane Bouirdene & Mickael Leclercq & Léopold Quitté & Steve Bilodeau & Arnaud Droit, 2023. "BioDiscViz: A visualization support and consensus signature selector for BioDiscML results," PLOS ONE, Public Library of Science, vol. 18(11), pages 1-8, November.
  • Handle: RePEc:plo:pone00:0294750
    DOI: 10.1371/journal.pone.0294750
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    References listed on IDEAS

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    1. Ying Hong Li & Jing Yu Xu & Lin Tao & Xiao Feng Li & Shuang Li & Xian Zeng & Shang Ying Chen & Peng Zhang & Chu Qin & Cheng Zhang & Zhe Chen & Feng Zhu & Yu Zong Chen, 2016. "SVM-Prot 2016: A Web-Server for Machine Learning Prediction of Protein Functional Families from Sequence Irrespective of Similarity," PLOS ONE, Public Library of Science, vol. 11(8), pages 1-14, August.
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