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Генно-сетевой анализ обогащения с использованием машинного обучения×Анализ дифференциальной экспрессии РНК-сек (DE)×
ОбластьБиоинформатикаБиоинформатика
СемействоProcess / pipelineProcess / pipeline
Год появления2005 (GSEA); ML integration from ~2015 onward2008–2010 (RNA-seq DE methodology established)
Автор методаSubramanian et al. (GSEA foundation, 2005); various ML extensions thereafterMultiple groups; foundational methods from Anders & Huber (DESeq, 2010), Robinson, McCarthy & Smyth (edgeR, 2010)
ТипComputational enrichment analysis with machine learningQuantitative genomics pipeline
Основополагающий источникSubramanian, A., Tamayo, P., Mootha, V. K., Mukherjee, S., Ebert, B. L., Gillette, M. A., Paulovich, A., Pomeroy, S. L., Golub, T. R., Lander, E. S., & Mesirov, J. P. (2005). Gene set enrichment analysis: A knowledge-based approach for interpreting genome-wide expression profiles. Proceedings of the National Academy of Sciences, 102(43), 15545–15550. DOI ↗Love, M. I., Huber, W., & Anders, S. (2014). Moderated estimation of fold change and dispersion for RNA-seq data with DESeq2. Genome Biology, 15(12), 550. DOI ↗
Другие названияML-GSEA, deep learning pathway enrichment, neural GSEA, ML-assisted pathway analysisRNA-seq DE analysis, transcriptomic differential expression, bulk RNA-seq DE, DEA
Связанные66
СводкаMachine learning-assisted gene set enrichment analysis (ML-GSEA) extends the classical GSEA framework by incorporating supervised or unsupervised ML models — such as random forests, neural networks, or deep learning architectures — to improve the detection, ranking, and biological interpretation of enriched gene sets from high-throughput expression data. The approach is particularly valuable for complex, non-linear gene-set relationships that classical enrichment statistics may miss.RNA-seq differential expression (DE) analysis identifies genes whose transcript abundance differs significantly between two or more biological conditions — for example, treated versus control, or diseased versus healthy tissue. Starting from raw sequencing reads, the pipeline moves through alignment, count-based normalization, statistical modeling of count dispersion, hypothesis testing, and multiple-testing correction to produce a ranked list of differentially expressed genes accompanied by fold-change estimates and adjusted p-values.
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  2. 2 Источники
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  2. 2 Источники
  3. PUBLISHED

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ScholarGateСравнение методов: Machine learning-assisted gene set enrichment analysis · RNA-seq Differential Expression. Получено 2026-06-19 из https://scholargate.app/ru/compare