Discovery of sparse, reliable omic biomarkers with Stabl
<p>The paper introduces Stabl, a new machine learning method for identifying sparse and reliable biomarker candidates from high-dimensional omics data.</p>
<p>Stabl combines subsampling, noise injection via knockoffs or permutations, and minimization of a false discovery proportion (FDP) surrogate to select features in a data-driven way. Benchmarking on synthetic and real datasets shows Stabl selects fewer features than Lasso, Elastic Net, etc. while maintaining predictive performance. This improves model interpretability. Stabl is flexible and modular, allowing different sparse regression methods and noise injection techniques to be used based on the dataset characteristics.</p>
<p><a href="https://medium.com/@axialxyz/discovery-of-sparse-reliable-omic-biomarkers-with-stabl-75946adf647e"><strong>Website</strong></a></p>