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Mke-resnet: a lightweight and interpretable deep learning framework for efficient RNA m6A site identification

Xiao Gao et al · BMC · 2026

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Abstract Background N6-methyladenosine ( $$m^{6}A$$ ) plays a crucial role in enriching RNA functional and genetic information. While deep learning has advanced $$m^{6}A$$ site identification, current state-of-the-art methods, particularly those based on large-scale Pre-trained Language Models (PLMs), often suffer from high computational complexity and over-parameterization, limiting their scalability for genome-wide analysis. Results In this work, we propose MKE-ResNet, an ultra-lightweight end-to-end framework designed to balance predictive performance with extreme computational efficiency. MKE-ResNet integrates a deep residual network with an innovative Multi-Kernel Efficient Channel Attention (MKE-ECA) module to adaptively capture multi-scale sequence patterns. Extensive experiments on 22 datasets demonstrate that MKE-ResNet achieves competitive performance against complex SOTA models (including MST-m6A). Notably, our model exhibits exceptional stability against sequence noise perturbation and demonstrates superior generalization capability on independent test sets (leading in 8 out of 11 cases in terms of AUROC). Furthermore, interpretability analysis reveals that MKE-ResNet moves beyond the static central motif to capture dynamic sequence patterns resembling RBP binding motifs (e.g., SRSF1 and PUM2). The source code and datasets are available at https://github.com/Gxttk/MKE-Resnet. Conclusions MKE-ResNet provides a biologically interpretable and computationally efficient solution for $$m^{6}A$$ site identification, offering a pragmatic tool for large-scale epitranscriptome screening.

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APA 7

al, X. G. E. (2026). Mke-resnet: a lightweight and interpretable deep learning framework for efficient RNA m6A site identification. https://doi.org/10.1186/s12859-026-06416-0

MLA

al, Xiao Gao et. "Mke-resnet: a lightweight and interpretable deep learning framework for efficient RNA m6A site identification." 2026. https://doi.org/10.1186/s12859-026-06416-0.

Chicago

al, Xiao Gao et. 2026. "Mke-resnet: a lightweight and interpretable deep learning framework for efficient RNA m6A site identification.". https://doi.org/10.1186/s12859-026-06416-0.

Harvard

al, X. G. E. 2026, Mke-resnet: a lightweight and interpretable deep learning framework for efficient RNA m6A site identification, BMC, available at: https://doi.org/10.1186/s12859-026-06416-0 [Accessed 25 Jun. 2026].

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Título
Mke-resnet: a lightweight and interpretable deep learning framework for efficient RNA m6A site identification
Autor / colaboradores
Xiao Gao et al
Editorial
BMC
Año de publicación
2026
ISSN
1471-2105
ISSN
1471-2105
Idioma
eng

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