Deep learning imputes DNA methylation states in single cells and enhances the detection of epigenetic alterations in schizophrenia.

IF 11.1 Q1 CELL BIOLOGY
Jiyun Zhou, Chongyuan Luo, Hanqing Liu, Matthew G Heffel, Richard E Straub, Joel E Kleinman, Thomas M Hyde, Joseph R Ecker, Daniel R Weinberger, Shizhong Han
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Abstract

DNA methylation (DNAm) is a key epigenetic mark with essential roles in gene regulation, mammalian development, and human diseases. Single-cell technologies enable profiling DNAm at cytosines in individual cells, but they often suffer from low coverage for CpG sites. We introduce scMeFormer, a transformer-based deep learning model for imputing DNAm states at each CpG site in single cells. Comprehensive evaluations across five single-nucleus DNAm datasets from human and mouse demonstrate scMeFormer's superior performance over alternative models, achieving high-fidelity imputation even with coverage reduced to 10% of original CpG sites. Applying scMeFormer to a single-nucleus DNAm dataset from the prefrontal cortex of patients with schizophrenia and controls identified thousands of schizophrenia-associated differentially methylated regions that would have remained undetectable without imputation and added granularity to our understanding of epigenetic alterations in schizophrenia. We anticipate that scMeFormer will be a valuable tool for advancing single-cell DNAm studies.

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