ChromBERT: A foundation model for learning interpretable representations for context-specific transcriptional regulatory networks

Model description

ChromBERT is a pre-trained deep learning model designed to capture the genome-wide co-association patterns of approximately one thousand transcription regulators, thereby enabling accurate representations of context-specific transcriptional regulatory networks (TRNs). As a foundational model, ChromBERT can be fine-tuned to adapt to various biological contexts through transfer learning. This significantly enhances our understanding of transcription regulation and offers a powerful tool for a broad range of research and clinical applications in different biological settings. This model is human and 1kb resolution

This version of the model is trained for mouse data at 1 kb resolution.

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Dataset used to train TongjiZhanglab/chrombert-mouse-1kb

Collection including TongjiZhanglab/chrombert-mouse-1kb