Department of Chemistry and Molecular Biology, University of Gothenburg, Gothenburg 41390, Sweden.
Wallenberg Centre for Molecular and Translational Medicine, University of Gothenburg, Gothenburg 41390, Sweden.
Chem Rev. 2022 Oct 26;122(20):15971-15988. doi: 10.1021/acs.chemrev.2c00110. Epub 2022 Aug 12.
Artificial intelligence (AI) methods have been and are now being increasingly integrated in prediction software implemented in bioinformatics and its glycoscience branch known as glycoinformatics. AI techniques have evolved in the past decades, and their applications in glycoscience are not yet widespread. This limited use is partly explained by the peculiarities of glyco-data that are notoriously hard to produce and analyze. Nonetheless, as time goes, the accumulation of glycomics, glycoproteomics, and glycan-binding data has reached a point where even the most recent deep learning methods can provide predictors with good performance. We discuss the historical development of the application of various AI methods in the broader field of glycoinformatics. A particular focus is placed on shining a light on challenges in glyco-data handling, contextualized by lessons learnt from related disciplines. Ending on the discussion of state-of-the-art deep learning approaches in glycoinformatics, we also envision the future of glycoinformatics, including development that need to occur in order to truly unleash the capabilities of glycoscience in the systems biology era.
人工智能(AI)方法已经并正在越来越多地集成到生物信息学及其糖科学分支即糖组学中实施的预测软件中。在过去几十年中,AI 技术不断发展,但其在糖科学中的应用尚未普及。这种有限的使用部分归因于糖数据的特殊性,这些数据众所周知难以生成和分析。尽管如此,随着时间的推移,糖组学、糖蛋白质组学和聚糖结合数据的积累已经达到了即使是最新的深度学习方法也可以提供性能良好的预测器的地步。我们讨论了在更广泛的糖组学领域中应用各种 AI 方法的历史发展。特别关注的是,从相关学科中吸取的经验教训,阐明了糖数据处理方面的挑战。最后讨论了糖组学中的最新深度学习方法,我们还展望了糖组学的未来,包括为了在系统生物学时代真正释放糖科学的潜力而需要进行的发展。