Treffer: GeneLens: A Python Package Implementing Monte Carlo Machine Learning and Network Analysis Methods for Biomarker Discovery and Gene Functional Annotation.

Title:
GeneLens: A Python Package Implementing Monte Carlo Machine Learning and Network Analysis Methods for Biomarker Discovery and Gene Functional Annotation.
Authors:
Osmak, G. J.1,2 (AUTHOR) german.osmak@gmail.com, Pisklova, M. V.1,2 (AUTHOR)
Source:
Molecular Biology. Oct2025, Vol. 59 Issue 5, p827-835. 9p.
Database:
Academic Search Index

Weitere Informationen

We present GeneLens, a Python package for comprehensive analysis of differentially expressed genes and biomarker discovery. The package consists of two core modules, FSelector for biomarker identification by utilizing Monte Carlo simulations of L1-regularized models and NetAnalyzer for functional prediction of selected gene sets based on the topology of their protein–protein interaction networks. FSelector includes: (1) automated gene selection through iterative bootstrap sampling, (2) calculation of gene significance weights by taking account of ROC-AUC models and their number in simulations, and (3) adaptive thresholding for feature space reduction. NetAnalyzer performs a pathway enrichment analysis while integrating the significance weights from FSelector. Implemented as a PIP module, GeneLens provides standardized algorithms for applying machine learning and network analysis methods in differential gene expression studies, along with automated model hyperparameter tuning and visualization tools. [ABSTRACT FROM AUTHOR]