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| Analisi dell'espressione differenziale RNA-seq assistita da Machine Learning× | RNA-seq Differential Expression× | |
|---|---|---|
| Campo | Bioinformatica | Bioinformatica |
| Famiglia | Process / pipeline | Process / pipeline |
| Anno di origine≠ | 2015–2019 (rapid development period) | 2008–2010 (RNA-seq DE methodology established) |
| Ideatore≠ | Multiple groups; scVI (Lopez et al., 2018) and DCA (Eraslan et al., 2019) are landmark tools | Multiple groups; foundational methods from Anders & Huber (DESeq, 2010), Robinson, McCarthy & Smyth (edgeR, 2010) |
| Tipo≠ | Computational bioinformatics pipeline | Quantitative genomics pipeline |
| Fonte seminale≠ | Lopez, R., Regier, J., Cole, M. B., Jordan, M. I., & Yosef, N. (2018). Deep generative modeling for single-cell transcriptomics. Nature Methods, 15(12), 1053–1058. link ↗ | 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 ↗ |
| Alias | ML-based DE analysis, deep learning RNA-seq DE, neural network differential expression, ML-augmented transcriptomics | RNA-seq DE analysis, transcriptomic differential expression, bulk RNA-seq DE, DEA |
| Correlati≠ | 5 | 6 |
| Sintesi≠ | Machine learning-assisted RNA-seq differential expression analysis augments classical statistical DE testing (DESeq2, edgeR, limma-voom) with ML models — including neural networks, random forests, and variational autoencoders — to better handle the high dimensionality, zero-inflation, and batch effects inherent in RNA-seq count data. The approach improves feature selection, noise reduction, and detection power, especially in large or complex experimental designs. | 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. |
| ScholarGateInsieme di dati ↗ |
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