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IceQream: Quantitative chromosome accessibility analysis using physical TF models

Author

Listed:
  • Akhiad Bercovich

    (Department of Computer Science and Applied Mathematics
    Department of Molecular Cell Biology)

  • Aviezer Lifshitz

    (Department of Computer Science and Applied Mathematics
    Department of Molecular Cell Biology)

  • Michal Eldar

    (Department of Computer Science and Applied Mathematics
    Department of Molecular Cell Biology)

  • Saifeng Cheng

    (Department of Molecular Cell Biology)

  • Roni Stok Ranen

    (Department of Computer Science and Applied Mathematics
    Department of Molecular Cell Biology)

  • Yonatan Stelzer

    (Department of Molecular Cell Biology)

  • Amos Tanay

    (Department of Computer Science and Applied Mathematics
    Department of Molecular Cell Biology)

Abstract

Single-cell mapping of chromosomal accessibility patterns has recently led to improved predictive modelling of epigenomic activity from sequence. However, quantitative models explaining the epigenome using directly interpretable components are still lacking. Here we develop IceQream (IQ), a modelling strategy and inference algorithm for regressing accessibility from sequences using physical models of transcription factor (TF) binding. IQ uses spatial integration of sequences over a range of TF-DNA affinities and localization relative to the target locus. It infers TF effective concentrations as latent variables that activate or repress regulatory elements in a non-linear fashion. These are supplemented with synergistic and antagonistic pairwise interactions between TFs. Analysis of both human and mouse data shows that IQ derives similar, and in some cases, better performance compared to state-of-the-art deep neural network models. IQ provides an essential mechanistic and explicable baseline for further developments toward understanding gene and genome regulation from sequence.

Suggested Citation

  • Akhiad Bercovich & Aviezer Lifshitz & Michal Eldar & Saifeng Cheng & Roni Stok Ranen & Yonatan Stelzer & Amos Tanay, 2025. "IceQream: Quantitative chromosome accessibility analysis using physical TF models," Nature Communications, Nature, vol. 16(1), pages 1-17, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-63925-x
    DOI: 10.1038/s41467-025-63925-x
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    References listed on IDEAS

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    1. Michael Levine & Robert Tjian, 2003. "Transcription regulation and animal diversity," Nature, Nature, vol. 424(6945), pages 147-151, July.
    2. Simon N. Wood, 2011. "Fast stable restricted maximum likelihood and marginal likelihood estimation of semiparametric generalized linear models," Journal of the Royal Statistical Society Series B, Royal Statistical Society, vol. 73(1), pages 3-36, January.
    3. Zhiyuan Xie & Ilya Sokolov & Maria Osmala & Xue Yue & Grace Bower & J. Patrick Pett & Yinan Chen & Kai Wang & Ayse Derya Cavga & Alexander Popov & Sarah A. Teichmann & Ekaterina Morgunova & Evgeny Z. , 2025. "DNA-guided transcription factor interactions extend human gene regulatory code," Nature, Nature, vol. 641(8065), pages 1329-1338, May.
    4. Friedman, Jerome H. & Hastie, Trevor & Tibshirani, Rob, 2010. "Regularization Paths for Generalized Linear Models via Coordinate Descent," Journal of Statistical Software, Foundation for Open Access Statistics, vol. 33(i01).
    5. Jason D. Buenrostro & Beijing Wu & Ulrike M. Litzenburger & Dave Ruff & Michael L. Gonzales & Michael P. Snyder & Howard Y. Chang & William J. Greenleaf, 2015. "Single-cell chromatin accessibility reveals principles of regulatory variation," Nature, Nature, vol. 523(7561), pages 486-490, July.
    6. Zhiyuan Xie & Ilya Sokolov & Maria Osmala & Xue Yue & Grace Bower & J. Patrick Pett & Yinan Chen & Kai Wang & Ayse Derya Cavga & Alexander Popov & Sarah A. Teichmann & Ekaterina Morgunova & Evgeny Z. , 2025. "Author Correction: DNA-guided transcription factor interactions extend human gene regulatory code," Nature, Nature, vol. 642(8069), pages 26-26, June.
    7. K. Kim & A. Doi & B. Wen & K. Ng & R. Zhao & P. Cahan & J. Kim & M. J. Aryee & H. Ji & L. I. R. Ehrlich & A. Yabuuchi & A. Takeuchi & K. C. Cunniff & H. Hongguang & S. Mckinney-Freeman & O. Naveiras &, 2010. "Epigenetic memory in induced pluripotent stem cells," Nature, Nature, vol. 467(7313), pages 285-290, September.
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