利用图变换器进行小分子串联质谱预测

IF 18.8 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Nature Machine Intelligence Pub Date : 2024-04-05 DOI:10.1038/s42256-024-00816-8
Adamo Young, Hannes Röst, Bo Wang
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引用次数: 0

摘要

串联质谱捕捉碎片模式,提供分子的关键结构信息。尽管质谱技术应用于许多领域,但绝大多数小分子缺乏实验参考光谱。70 多年来,光谱预测一直是这一领域的关键挑战。现有的深度学习方法无法利用分子中的全局结构,这可能导致在推广新数据时遇到困难。在这项工作中,我们提出了准确预测串联质谱的 MassFormer 模型。MassFormer 使用图转换器架构来模拟分子中原子间的长距离关系。转换器模块使用通过化学预训练任务获得的参数进行初始化,然后根据光谱数据进行微调。在多个数据集的光谱预测方面,MassFormer 的表现优于其他竞争方法,并能准确模拟碰撞能量的影响。基于梯度的归因方法表明,MassFormer 可以识别光谱中峰值之间的成分关系。当应用于光谱识别问题时,MassFormer 的性能普遍超过了现有的基于预测的方法。
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Tandem mass spectrum prediction for small molecules using graph transformers
Tandem mass spectra capture fragmentation patterns that provide key structural information about molecules. Although mass spectrometry is applied in many areas, the vast majority of small molecules lack experimental reference spectra. For over 70 years, spectrum prediction has remained a key challenge in the field. Existing deep learning methods do not leverage global structure in the molecule, potentially resulting in difficulties when generalizing to new data. In this work we propose the MassFormer model for accurately predicting tandem mass spectra. MassFormer uses a graph transformer architecture to model long-distance relationships between atoms in the molecule. The transformer module is initialized with parameters obtained through a chemical pretraining task, then fine-tuned on spectral data. MassFormer outperforms competing approaches for spectrum prediction on multiple datasets and accurately models the effects of collision energy. Gradient-based attribution methods reveal that MassFormer can identify compositional relationships between peaks in the spectrum. When applied to spectrum identification problems, MassFormer generally surpasses the performance of existing prediction-based methods. Identifying compounds in tandem mass spectrometry requires extensive databases of known compounds or computational methods to simulate spectra for samples not found in databases. Simulating tandem mass spectra is still challenging, and long-range connections in particular are difficult to model for graph neural networks. Young and colleagues use a graph transformer model to learn patterns of long-distance relations between atoms and molecules.
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来源期刊
CiteScore
36.90
自引率
2.10%
发文量
127
期刊介绍: Nature Machine Intelligence is a distinguished publication that presents original research and reviews on various topics in machine learning, robotics, and AI. Our focus extends beyond these fields, exploring their profound impact on other scientific disciplines, as well as societal and industrial aspects. We recognize limitless possibilities wherein machine intelligence can augment human capabilities and knowledge in domains like scientific exploration, healthcare, medical diagnostics, and the creation of safe and sustainable cities, transportation, and agriculture. Simultaneously, we acknowledge the emergence of ethical, social, and legal concerns due to the rapid pace of advancements. To foster interdisciplinary discussions on these far-reaching implications, Nature Machine Intelligence serves as a platform for dialogue facilitated through Comments, News Features, News & Views articles, and Correspondence. Our goal is to encourage a comprehensive examination of these subjects. Similar to all Nature-branded journals, Nature Machine Intelligence operates under the guidance of a team of skilled editors. We adhere to a fair and rigorous peer-review process, ensuring high standards of copy-editing and production, swift publication, and editorial independence.
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