Universal Biological Sequence Reranking for Improved De Novo Peptide Sequencing
Universal Biological Sequence Reranking for Improved De Novo Peptide Sequencing
De novo peptide sequencing is a critical task in proteomics. However, the performance of current deep learning-based methods is limited by the inherent complexity of mass spectrometry data and the heterogeneous distribution of noise signals, leading to data-specific biases. We present RankNovo, the first deep reranking framework that enhances de novo peptide sequencing by leveraging the complementary strengths of multiple sequencing models. RankNovo employs a list-wise reranking approach, modeling candidate peptides as multiple sequence alignments and utilizing axial attention to extract informative features across candidates. Additionally, we introduce two new metrics, PMD (Peptide Mass Deviation) and RMD (residual Mass Deviation), which offer delicate supervision by quantifying mass differences between peptides at both the sequence and residue levels. Extensive experiments demonstrate that RankNovo not only surpasses its base models used to generate training candidates for reranking pre-training, but also sets a new state-of-the-art benchmark. Moreover, RankNovo exhibits strong zero-shot generalization to unseen models whose generations were not exposed during training, highlighting its robustness and potential as a universal reranking framework for peptide sequencing. Our work presents a novel reranking strategy that fundamentally challenges existing single-model paradigms and advances the frontier of accurate de novo sequencing. Our source code is provided on GitHub.
Xiang Zhang、Zijie Qiu、Jiaqi Wei、Nanqing Dong、Siqi Sun、Sheng Xu、Kai Zou、Zhi Jin、Zhiqiang Gao
生物科学研究方法、生物科学研究技术
Xiang Zhang,Zijie Qiu,Jiaqi Wei,Nanqing Dong,Siqi Sun,Sheng Xu,Kai Zou,Zhi Jin,Zhiqiang Gao.Universal Biological Sequence Reranking for Improved De Novo Peptide Sequencing[EB/OL].(2025-05-23)[2025-06-28].https://arxiv.org/abs/2505.17552.点此复制
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