2024
DOI: 10.1101/gad.351800.124
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Decoding biology with massively parallel reporter assays and machine learning

Alyssa La Fleur,
Yongsheng Shi,
Georg Seelig

Abstract: Massively parallel reporter assays (MPRAs) are powerful tools for quantifying the impacts of sequence variation on gene expression. Reading out molecular phenotypes with sequencing enables interrogating the impact of sequence variation beyond genome scale. Machine learning models integrate and codify information learned from MPRAs and enable generalization by predicting sequences outside the training data set. Models can provide a quantitative understanding ofcis-regulatory codes controlling gene expression, e… Show more

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