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Evaluating the representational power of pre-trained DNA language models for regulatory genomics

Ziqi Tang, Nirali Somia, Yiyang Yu, Peter K. Koo

2025Genome biology27 citationsDOIOpen Access PDF

Abstract

BACKGROUND: The emergence of genomic language models (gLMs) offers an unsupervised approach to learning a wide diversity of cis-regulatory patterns in the non-coding genome without requiring labels of functional activity generated by wet-lab experiments. Previous evaluations have shown that pre-trained gLMs can be leveraged to improve predictive performance across a broad range of regulatory genomics tasks, albeit using relatively simple benchmark datasets and baseline models. Since the gLMs in these studies were tested upon fine-tuning their weights for each downstream task, determining whether gLM representations embody a foundational understanding of cis-regulatory biology remains an open question. RESULTS: Here, we evaluate the representational power of pre-trained gLMs to predict and interpret cell-type-specific functional genomics data that span DNA and RNA regulation for six major functional genomics prediction tasks. Our findings suggest that probing the representations of current pre-trained gLMs do not offer substantial advantages over conventional machine learning approaches that use one-hot encoded sequences. Nevertheless, highly tuned supervised models trained from scratch using one-hot encoded sequences can achieve performance competitive with or better than pre-trained models across the datasets explored in this study. DISCUSSION: This work highlights a major gap with current gLMs, raising potential issues in conventional pre-training strategies for the non-coding genome.

Topics & Concepts

BiologyGenome BiologyHuman geneticsGenomicsComputational genomicsComputational biologyGeneticsFunctional genomicsEvolutionary biologyDNA sequencingDNAGenomeGeneGenomics and Chromatin DynamicsMachine Learning in BioinformaticsRNA and protein synthesis mechanisms
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