2024
DOI: 10.1371/journal.pone.0302045
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An orchestra of machine learning methods reveals landmarks in single-cell data exemplified with aging fibroblasts

Lauritz Rasbach,
Aylin Caliskan,
Fatemeh Saderi
et al.

Abstract: In this work, a Python framework for characteristic feature extraction is developed and applied to gene expression data of human fibroblasts. Unlabeled feature selection objectively determines groups and minimal gene sets separating groups. ML explainability methods transform the features correlating with phenotypic differences into causal reasoning, supported by further pipeline and visualization tools, allowing user knowledge to boost causal reasoning. The purpose of the framework is to identify characterist… Show more

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