Transfer learning reveals sequence determinants of regulatory element accessibility

Research output: Working paperPreprintResearch

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Transfer learning reveals sequence determinants of regulatory element accessibility. / Salvatore, Marco; Horlacher, Marc; Winther, Ole; Andersson, Robin.

bioRxiv, 2022.

Research output: Working paperPreprintResearch

Harvard

Salvatore, M, Horlacher, M, Winther, O & Andersson, R 2022 'Transfer learning reveals sequence determinants of regulatory element accessibility' bioRxiv. https://doi.org/10.1101/2022.08.05.502903

APA

Salvatore, M., Horlacher, M., Winther, O., & Andersson, R. (2022). Transfer learning reveals sequence determinants of regulatory element accessibility. bioRxiv. https://doi.org/10.1101/2022.08.05.502903

Vancouver

Salvatore M, Horlacher M, Winther O, Andersson R. Transfer learning reveals sequence determinants of regulatory element accessibility. bioRxiv. 2022. https://doi.org/10.1101/2022.08.05.502903

Author

Salvatore, Marco ; Horlacher, Marc ; Winther, Ole ; Andersson, Robin. / Transfer learning reveals sequence determinants of regulatory element accessibility. bioRxiv, 2022.

Bibtex

@techreport{eb62baf72e344f409142a89c05849d00,
title = "Transfer learning reveals sequence determinants of regulatory element accessibility",
abstract = "Dysfunction of regulatory elements through genetic variants is a central mechanism in the pathogenesis of disease. To better understand disease etiology, there is consequently a need to understand how DNA encodes regulatory activity. Deep learning methods show great promise for modeling of biomolecular data from DNA sequence but are limited to large input data for training. Here, we develop ChromTransfer, a transfer learning method that uses a pre-trained, cell-type agnostic model of open chromatin regions as a basis for fine-tuning on regulatory sequences. We demonstrate superior performances with ChromTransfer for learning cell-type specific chromatin accessibility from sequence compared to models not informed by a pre-trained model. Importantly, ChromTransfer enables fine-tuning on small input data with minimal decrease in accuracy. We show that ChromTransfer uses sequence features matching binding site sequences of key transcription factors for prediction. Together, these results demonstrate ChromTransfer as a promising tool for learning the regulatory code.",
author = "Marco Salvatore and Marc Horlacher and Ole Winther and Robin Andersson",
year = "2022",
doi = "10.1101/2022.08.05.502903",
language = "English",
publisher = "bioRxiv",
type = "WorkingPaper",
institution = "bioRxiv",

}

RIS

TY - UNPB

T1 - Transfer learning reveals sequence determinants of regulatory element accessibility

AU - Salvatore, Marco

AU - Horlacher, Marc

AU - Winther, Ole

AU - Andersson, Robin

PY - 2022

Y1 - 2022

N2 - Dysfunction of regulatory elements through genetic variants is a central mechanism in the pathogenesis of disease. To better understand disease etiology, there is consequently a need to understand how DNA encodes regulatory activity. Deep learning methods show great promise for modeling of biomolecular data from DNA sequence but are limited to large input data for training. Here, we develop ChromTransfer, a transfer learning method that uses a pre-trained, cell-type agnostic model of open chromatin regions as a basis for fine-tuning on regulatory sequences. We demonstrate superior performances with ChromTransfer for learning cell-type specific chromatin accessibility from sequence compared to models not informed by a pre-trained model. Importantly, ChromTransfer enables fine-tuning on small input data with minimal decrease in accuracy. We show that ChromTransfer uses sequence features matching binding site sequences of key transcription factors for prediction. Together, these results demonstrate ChromTransfer as a promising tool for learning the regulatory code.

AB - Dysfunction of regulatory elements through genetic variants is a central mechanism in the pathogenesis of disease. To better understand disease etiology, there is consequently a need to understand how DNA encodes regulatory activity. Deep learning methods show great promise for modeling of biomolecular data from DNA sequence but are limited to large input data for training. Here, we develop ChromTransfer, a transfer learning method that uses a pre-trained, cell-type agnostic model of open chromatin regions as a basis for fine-tuning on regulatory sequences. We demonstrate superior performances with ChromTransfer for learning cell-type specific chromatin accessibility from sequence compared to models not informed by a pre-trained model. Importantly, ChromTransfer enables fine-tuning on small input data with minimal decrease in accuracy. We show that ChromTransfer uses sequence features matching binding site sequences of key transcription factors for prediction. Together, these results demonstrate ChromTransfer as a promising tool for learning the regulatory code.

U2 - 10.1101/2022.08.05.502903

DO - 10.1101/2022.08.05.502903

M3 - Preprint

BT - Transfer learning reveals sequence determinants of regulatory element accessibility

PB - bioRxiv

ER -

ID: 332190678