EpiGePT: a Pretrained Transformer model for epigenomics

Author:

Gao ZijingORCID,Liu QiaoORCID,Zeng Wanwen,Wong Wing Hung,Jiang Rui

Abstract

AbstractThe transformer-based models, such as GPT-31and DALL-E2, have achieved unprecedented breakthroughs in the field of natural language processing and computer vision. The inherent similarities between natural language and biological sequences have prompted a new wave of inferring the grammatical rules underneath the biological sequences. In genomic study, it is worth noting that DNA sequences alone cannot explain all the gene activities due to epigenetic mechanism. To investigate this problem, we propose EpiGePT, a new transformer-based language pretrained model in epigenomics, for predicting genome-wide epigenomic signals by considering the mechanistic modeling of transcriptional regulation. Specifically, EpiGePT takes the context-specific activities of transcription factors (TFs) into consideration, which could offer deeper biological insights comparing to models trained on DNA sequence only. In a series of experiments, EpiGePT demonstrates state-of-the-art performance in a diverse epigenomic signals prediction tasks as well as new prediction tasks by fine-tuning. Furthermore, EpiGePT is capable of learning the cell-type-specific long-range interactions through the self-attention mechanism and interpreting the genetic variants that associated with human diseases. We expect that the advances of EpiGePT can shed light on understanding the complex regulatory mechanisms in gene regulation. We provide free online prediction service of EpiGePT throughhttps://health.tsinghua.edu.cn/epigept/.

Publisher

Cold Spring Harbor Laboratory

Reference53 articles.

1. Language models are few-shot learners;Advances in neural information processing systems,2020

2. Ramesh, A. , et al. in International Conference on Machine Learning 8821-8831 (PMLR, 2021).

3. Annotating non-coding regions of the genome

4. Cistrome and Epicistrome Features Shape the Regulatory DNA Landscape

5. Generative Pre-trained Transformer: A Comprehensive Review on Enabling Technologies, Potential Applications, Emerging Challenges, and Future Directions;. arXiv preprint arXiv,2023

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