4.6 Article

DISA tool: Discriminative and informative subspace assessment with categorical and numerical outcomes

Journal

PLOS ONE
Volume 17, Issue 10, Pages -

Publisher

PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pone.0276253

Keywords

-

Funding

  1. Associate Laboratory for Green Chemistry (LAQV) from FCT/MCTES [UIDB/50006/2020, UIDP/50006/2020, UIDB/50021/2020, CEECIND/01399/2017, 2021.07759.BD]
  2. [DSAIPA/DS/0042/2018]
  3. [DSAIPA/DS/0111/2018]

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Pattern discovery and subspace clustering are crucial in the biological domain. This study proposes DISA, a Python software package, to evaluate patterns in the presence of numerical outcomes. The results confirm the effectiveness of the proposed method and provide critical directions for research in biotechnology and biomedicine.
Pattern discovery and subspace clustering play a central role in the biological domain, supporting for instance putative regulatory module discovery from omics data for both descriptive and predictive ends. In the presence of target variables (e.g. phenotypes), regulatory patterns should further satisfy delineate discriminative power properties, well-established in the presence of categorical outcomes, yet largely disregarded for numerical outcomes, such as risk profiles and quantitative phenotypes. DISA (Discriminative and Informative Subspace Assessment), a Python software package, is proposed to evaluate patterns in the presence of numerical outcomes using well-established measures together with a novel principle able to statistically assess the correlation gain of the subspace against the overall space. Results confirm the possibility to soundly extend discriminative criteria towards numerical outcomes without the drawbacks well-associated with discretization procedures. Results from four case studies confirm the validity and relevance of the proposed methods, further unveiling critical directions for research on biotechnology and biomedicine. Availability: DISA is freely available at https://github.com/JupitersMight/DISA under the MIT license.

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