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Predicting Ion Mobility Collision Cross-Sections Using a Deep Neural Network: DeepCCS

机译:使用深层神经网络预测离子迁移碰撞截面:DeepCCS

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摘要

Untargeted metabolomic measurements using mass spectrometry are a powerful tool for uncovering new small molecules with environmental and biological importance. The small molecule identification step, however, still remains an enormous challenge due to fragmentation difficulties or unspecific fragment ion information. Current methods to address this challenge are often dependent on databases or require the use of nuclear magnetic resonance (NMR), which have their own difficulties. The use of the gas-phase collision cross section (CCS) values obtained from ion mobility spectrometry (IMS) measurements were recently demonstrated to reduce the number of false positive metabolite identifications. While promising, the amount of empirical CCS information currently available is limited, thus predictive CCS methods need to be developed. In this article, we expand upon current experimental IMS capabilities by predicting the CCS values using a deep learning algorithm. We successfully developed and trained a prediction model for CCS values requiring only information about a compound’s SMILES notation and ion type. The use of data from five different laboratories using different instruments allowed the algorithm to be trained and tested on more than 2400 molecules. The resulting CCS predictions were found to achieve a coefficient of determination of 0.97 and median relative error of 2.7% for a wide range of molecules. Furthermore, the method requires only a small amount of processing power to predict CCS values. Considering the performance, time, and resources necessary, as well as its applicability to a variety of molecules, this model was able to outperform all currently available CCS prediction algorithms.
机译:使用质谱的非目标代谢组学测量是发现具有环境和生物学重要性的新小分子的强大工具。然而,由于断裂困难或非特异性的碎片离子信息,小分子鉴定步骤仍然是一个巨大的挑战。解决该挑战的当前方法通常取决于数据库或需要使用核磁共振(NMR),这有其自身的困难。最近已证明,使用从离子迁移谱(IMS)测量获得的气相碰撞截面(CCS)值可以减少假阳性代谢物鉴定的数量。尽管前景广阔,但当前可获得的经验性CCS信息数量有限,因此需要开发预测性CCS方法。在本文中,我们通过使用深度学习算法预测CCS值来扩展当前的实验IMS功能。我们成功开发并训练了CCS值预测模型,该模型仅需要有关化合物的SMILES符号和离子类型的信息。来自五个不同实验室,使用不同仪器的数据的使用使该算法可以在2400多个分子上进行训练和测试。对于各种分子,发现所得的CCS预测可实现0.97的确定系数和2.7%的中位相对误差。此外,该方法仅需要少量处理能力即可预测CCS值。考虑到所需的性能,时间和资源,以及其对各种分子的适用性,此模型能够胜过所有当前可用的CCS预测算法。

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